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2607.06565 2026-07-08 cs.CV cs.AI cs.LG 新提交

ELSA3D: Elastic Semantic Anchoring for Unified 3D Understanding and Generation

ELSA3D:用于统一3D理解与生成的弹性语义锚定

Tianjiao Yu, Xinzhuo Li, Yifan Shen, Onkar Susladkar, Yuanzhe Liu, Xiaona Zhou, Ismini Lourentzou

发表机构 * University of Illinois Urbana-Champaign(伊利诺伊大学厄巴纳-香槟分校)

AI总结 研究统一3D基础模型文本-3D交互隐式问题,提出ELSA3D模型,通过弹性语义锚定联合构建语言和几何推理,用尺度感知八叉树令牌化器和锚定令牌表示几何,轻量级路由器使计算和推理弹性化,性能领先且减少计算量和延迟。

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AI中文摘要

统一的3D基础模型期望在单个框架内生成3D资产并进行语言推理,但其文本-3D交互大多是隐式的。现有方法将文本和3D令牌连接成扁平序列并依赖自注意力,将粗略结构线索和精细几何细节合并为无差别的表示。我们引入ELSA3D,一个通过弹性语义锚定解决此问题的统一3D模型,沿着匹配的抽象尺度联合构建语言和几何推理。ELSA3D用尺度感知八叉树令牌化器表示几何,引入锚定令牌,即稀疏跨模态单元,选择语义线索,将其路由到最相关的3D尺度,检索特定尺度的几何证据,并将融合信号写回统一表示,保持交互稀疏而精确。一个轻量级的逐块路由器使计算和推理具有弹性,选择哪些文本令牌在何种几何尺度实例化锚定,使跨模态能力集中在最需要对齐的地方。ELSA3D在图像到3D生成、文本到3D生成和3D字幕方面取得了领先性能,优于最强的统一基线,同时相对于同一模型的非弹性版本,FLOP和推理延迟大致减半。

英文摘要

Unified 3D foundation models aspire to generate 3D assets and reason about them in language within a single backbone, but their text-3D interaction remains largely implicit. Existing methods concatenate text and 3D tokens into a flat sequence and rely on self-attention, collapsing coarse structural cues and fine geometric details into one undifferentiated representation. We introduce ELSA3D, a unified 3D model that addresses this with elastic semantic anchoring, structuring language and geometric reasoning jointly along matched abstraction scales. ELSA3D represents geometry with a scale-aware octree tokenizer and introduces Anchor Tokens, sparse cross-modal units that select semantic cues, route them to the most relevant 3D scale, retrieve scale-specific geometric evidence, and write the fused signal back into the unified representation, keeping interaction sparse yet precise. A lightweight per-block router makes both computation and reasoning elastic, choosing which text tokens instantiate anchors at which geometric scale so that cross-modal capacity concentrates where alignment is most needed. ELSA3D achieves state-of-the-art performance across image-to-3D generation, text-to-3D generation, and 3D captioning, outperforming the strongest unified baseline while roughly halving FLOPs and inference latency relative to the non-elastic version of the same model.

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2607.06564 2026-07-08 cs.RO cs.CV 新提交

Lift3D-VLA: Lifting VLA Models to 3D Geometry and Dynamics-Aware Manipulation

Lift3D-VLA:将VLA模型提升到3D几何和动力学感知操纵

Jiaming Liu, Qingpo Wuwu, Nuowei Han, Hao Chen, Zhuoyang Liu, Fan Fei, Yueru Jia, Chenyang Gu, Yandong Guo, Boxin Shi, Shanghang Zhang

发表机构 * State Key Laboratory of Multimedia Information Processing and National Engineering Research Center of Visual Technology, School of Computer Science, Peking University(北京大学计算机科学学院多媒体信息处理技术国家重点实验室和视觉技术国家工程研究中心) CUHK(香港中文大学) AI 2 Robotics(人工智能与机器人实验室)

AI总结 研究针对VLA模型在物理环境操纵中几何理解和空间推理不足的问题,提出Lift3D-VLA框架。通过增强2D模型提升策略、GC-MAE自监督框架及分层时间动作建模,提升模型3D几何和动力学感知能力,在模拟和现实任务中取得更好效果。

Comments 14 pages, 7 figures. Project website: https://lift3dvla.github.io/

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AI中文摘要

最近,视觉-语言-动作(VLA)模型在各种任务中展现出强大的泛化能力。然而,在物理环境中的有效机器人操纵从根本上需要几何理解和空间推理。一些VLA方法虽尝试纳入3D信息,但受限于当前3D编码管道中有限的数据可用性和几何信息损失,无法在动态环境中联合捕获3D几何和时间结构化动作。为解决这些限制,我们引入Lift3D-VLA,一个统一的VLA框架,为模型配备显式3D点云推理并实现时间连贯动作生成。首先,基于之前的Lift3D工作,提出增强的2D模型提升策略,将3D点与预训练的2D位置嵌入进行几何对齐,使VLA视觉编码器能直接进行点云编码并最小化空间信息损失。基于显式3D输入,提出以几何为中心的掩码自动编码(GC-MAE),一个双目标自监督框架,在预测未来几何演化的同时重建当前点云,让2D视觉编码器内化3D结构和物理动力学。为充分利用3D表示,进一步设计分层时间动作建模,利用LLM的多层协作预测动作块,实现时间一致的预测。在22个模拟任务和8个现实世界操纵任务中,Lift3D-VLA在MetaWorld和RLBench上比最佳先前VLA方法平均成功率分别高10.8%和11.1%,比最强现实世界基线高出4个百分点,且对分布外扰动具有更强的泛化能力。

英文摘要

Recently, Vision-Language-Action (VLA) models have demonstrated strong generalization across diverse tasks. However, effective robotic manipulation in physical environments fundamentally requires geometric understanding and spatial reasoning. While some VLA approaches attempt to incorporate 3D information, they are constrained by limited data availability and geometric information loss in current 3D encoding pipelines, and fail to jointly capture 3D geometry and temporally structured actions in dynamic environments. To address these limitations, we introduce Lift3D-VLA, a unified VLA framework that equips models with explicit 3D point cloud reasoning and enables temporally coherent action generation. First, building upon our previous work Lift3D, an enhanced 2D model-lifting strategy is proposed to geometrically align 3D points with pretrained 2D positional embeddings. This design enables direct point-cloud encoding within the VLA vision encoder while minimizing spatial information loss. Based on explicit 3D inputs, we propose Geometry-Centric Masked Autoencoding (GC-MAE), a dual-objective self-supervised framework that reconstructs the current point cloud while predicting its future geometric evolution. This formulation allows the 2D vision encoder to internalize both 3D structure and physical dynamics. To fully exploit 3D representations, we further design layer-wise temporal action modeling, which leverages multiple layers of the LLM to collaboratively predict action chunks, enabling temporally consistent predictions. Across 22 simulated tasks and 8 real-world manipulation tasks, Lift3D-VLA achieves 10.8% and 11.1% higher mean success rates on MetaWorld and RLBench than the best-performing prior VLA methods, and outperforms the strongest real-world baseline by 4 percentage points, while exhibiting stronger generalization to out-of-distribution perturbations.

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2607.06563 2026-07-08 cs.RO 新提交

Embodied Human-Robot Interaction via Acoustics: A MARL Approach with AcoustoBots for Spatial Data Physicalization

通过声学实现的具身化人机交互:一种用于空间数据物理化的多智能体强化学习方法及声控机器人

Shiqi Liu, Narsimlu Kemsaram, Prateek Mittal, Pengyuan Wei, Sriram Subramanian

发表机构 * University College London(伦敦大学学院) University of Malaya(马来亚大学)

AI总结 研究针对传统数据物理化局限,提出声控机器人平台,采用基于MADDPG算法的MARL策略及GS - PAT声学控制器,实现感知 - 显示 - 动作循环。通过试验评估单双机器人任务,结果显示悬浮稳定、成功率高且碰撞少,支持其用于具身化人机交互。

Comments This paper has been accepted for publication in the Proceedings of the 2026 International Conference on Robotic System and Artificial Intelligence (RSAI 2026), 10-12 July, 2026, Tokyo, Japan

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AI中文摘要

传统数据物理化往往是静态的,且与真实环境脱节,限制了其传达具身空间动态和吸引用户的能力。为解决这一局限,我们提出了声控机器人(AcoustoBots),这是一个移动的声镊数据物理化平台,其中TurtleBot3机器人搭载向上的8×8超声相控阵。每个阵列悬浮一个粒子,其高度(1 - 10厘米)编码一个局部城市标量值,如人口密度、噪音或交通情况。基于多智能体深度确定性策略梯度(MADDPG)算法的多智能体强化学习(MARL)策略,采用集中训练和分散执行,选择可避免碰撞的导航动作,同时一个高速率的格奇伯格 - 萨克斯顿相控换能器阵列(GS - PAT)声学控制器维持陷阱稳定性并更新阵列相位,以在运动中实现指令高度。这创建了一个封闭的感知 - 显示 - 动作循环。我们使用基于相空间的定位在一个4米×3米的英国地图比例模型上评估单机器人城市间穿越和双机器人协作覆盖,以进行可重复的多机器人试验。结果显示运动中悬浮稳定,高度渲染一致且与位置相关,单机器人和双机器人模式下任务成功率分别为90%和80%(每种模式进行10次试验),碰撞次数少。这些发现支持声镊悬浮作为一种简单、直观的机器人介导的通信线索,用于空间分析中的具身化人机交互。

英文摘要

Traditional data physicalization is often static and disconnected from real environments, limiting its ability to convey embodied spatial dynamics and engage users. To address this limitation, we present AcoustoBots, a mobile acoustophoretic data-physicalization platform in which TurtleBot3 robots carry upward-facing 8 x 8 ultrasonic phased arrays. Each array levitates a particle whose height (1-10 cm) encodes a local urban scalar value, such as population density, noise, or traffic. A MARL (Multi-Agent Reinforcement Learning) policy based on the Multi-Agent Deep Deterministic Policy Gradient (MADDPG) algorithm, with centralized training and decentralized execution, selects collision-aware navigation actions, while a high-rate Gerchberg-Saxton-Phased Array of Transducers (GS-PAT) acoustic controller maintains trap stability and updates array phases to achieve the commanded height during motion. This creates a closed perception-display-action loop. We evaluate single-robot city-to-city traversal and dual-robot cooperative coverage on a 4 m x 3 m scaled UK map using PhaseSpace-based localization for repeatable multi-robot trials. Results show stable in-motion levitation and consistent, location-dependent height rendering, with task success rates of 90% and 80% for the single and dual-robot regimes, respectively, over 10 trials per regime, and low collision counts. These findings support acoustophoretic levitation as a simple, glanceable, robot-mediated communication cue for embodied human-robot interaction in spatial analytics.

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2607.06560 2026-07-08 cs.CV 新提交

Vision as Unified Multimodal Generation

视觉作为统一的多模态生成

Xiaoyang Han, Jianhua Li, Kewang Deng, Zukai Chen, Xuanke Shi, Sihan Wang, Boxuan Li, Linyan Wang, Siyi Xie, Xin You, Jinsheng Quan, Zhongang Cai, Haiwen Diao, Ziwei Liu, Lei Yang, Dahua Lin, Quan Wang

发表机构 * SenseTime Research(商汤科技研究公司) Nanyang Technological University(南洋理工大学) The Chinese University of Hong Kong(香港中文大学) Peking University(北京大学) Shanghai Jiao Tong University(上海交通大学) Zhejiang University(浙江大学)

AI总结 该研究将计算机视觉表述为统一多模态生成,SenseNova-Vision用自然语言指令等指定任务并生成多种输出。通过转换注释形成语料库训练模型,其涵盖多种视觉任务,实验显示统一模型能匹配专用系统,为集成视觉能力到通用模型提供可扩展途径。

Comments 48 pages,22 figures

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AI中文摘要

我们将计算机视觉表述为统一的多模态生成,其中异构视觉任务在统一多模态模型的原生文本和图像生成空间中表达,无需特定任务架构。在此框架下,SenseNova-Vision 使用自然语言指令和可选视觉提示来指定任务、目标区域或视图以及解码约定,并生成符号输出的文本、密集空间预测的图像或组合任务的文本与图像混合输出。为支持大规模训练,我们将多种计算机视觉注释转换为与这些生成空间兼容的指令-响应示例,形成SenseNova-Vision语料库。从现成的预训练统一多模态模型开始,SenseNova-Vision主要在此语料库上训练,使用辅助多模态数据作为能力保留混合,无需特定任务预测头或架构修改。所得模型涵盖广泛视觉任务,实验表明单个统一模型可与领先的任务专用系统相匹配,这表明统一多模态生成是将计算机视觉能力集成到通用基础模型的可扩展途径。模型和语料库公开可用。

英文摘要

We formulate computer vision as unified multimodal generation, where heterogeneous visual tasks are expressed in the native text and image generation spaces of a unified multimodal model, without task-specific architectures. Under this formulation, SenseNova-Vision uses natural-language instructions and optional visual prompts to specify tasks, target regions or views, and decoding conventions, and generates responses as text for symbolic outputs, images for dense spatial predictions, or mixed text-and-image outputs for compositional tasks. To support large-scale training, we convert diverse computer vision annotations into instruction-response examples compatible with these generation spaces, resulting in the SenseNova-Vision Corpus, a computer-vision instruction-response corpus spanning text, image, and mixed targets. Starting from an off-the-shelf pretrained unified multimodal model, SenseNova-Vision is trained primarily on this corpus, with auxiliary multimodal data used as a capability-preserving mixture, and requires no task-specific prediction heads or architectural modifications. The resulting model covers a broad range of vision tasks, including detection, OCR, keypoint estimation, segmentation, depth estimation, surface normal prediction, point maps, and camera pose estimation, while supporting language-defined variants that combine category, color, region, and other visual cues. Experiments show that a single unified model can match leading task-specialized systems across structured visual understanding, dense geometric prediction, segmentation, and multi-view visual geometry. These results suggest unified multimodal generation as a scalable route for integrating computer vision capabilities into general-purpose foundation models. The model and corpus are publicly available.

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2607.06559 2026-07-08 cs.RO 新提交

RynnWorld-4D: 4D Embodied World Models for Robotic Manipulation

RynnWorld-4D:用于机器人操作的4D具身世界模型

Haoyu Zhao, Xingyue Zhao, Siteng Huang, Xin Li, Deli Zhao, Zhongyu Li

发表机构 * DAMO Academy, Alibaba Group(达摩院,阿里巴巴集团) Hong Kong Embodied AI Lab(香港具身人工智能实验室) CUHK(香港中文大学) Hupan Lab(湖畔实验室)

AI总结 研究针对开放世界机器人操作,提出RynnWorld-4D生成模型,通过RGB-DF捕捉4D动态,其具三分支架构,还整理数据集并提出RynnWorld-4D-Policy,实验证明该模型在时空预测及实际操作任务中表现出色。

Comments Project Page: https://alibaba-damo-academy.github.io/RynnWorld-4D.github.io, Github: https://github.com/alibaba-damo-academy/RynnWorld-4D

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AI中文摘要

开放世界中的机器人操作不仅需要识别场景外观,还需预测其3D结构在交互中的移动。我们认为同步的RGB、深度和光流(RGB-DF)提供了一种基于物理的表示,能捕捉场景的潜在4D动态。基于此,我们引入RynnWorld-4D,一个在统一扩散过程中从单个RGB-D图像和语言指令共同生成未来RGB帧、深度图和光流的生成模型。它具有三分支架构,集成跨模态注意力和逐帧3D RoPE。我们还整理了Rynn4DDataset 1.0数据集,并提出RynnWorld-4D-Policy。实验表明,RynnWorld-4D能产生时空连贯的4D预测,RynnWorld-4D-Policy在实际灵巧双手操作任务中达到了先进性能。

英文摘要

Robotic manipulation in the open world requires not only recognizing what a scene looks like, but also anticipating how its 3D structure moves under interaction. We argue that synchronized RGB, depth, and optical flow, namely RGB-DF, provide a physically grounded representation that captures the underlying 4D dynamics of a scene. Compared to 2D pixel videos, this multi-modal synergy aligns visual appearance with geometric structure and temporal motion, creating a representation space significantly closer to the low-level end-effector actions demanded by robotic systems, thereby narrowing the gap between world prediction and policy learning. Building on this insight, we introduce RynnWorld-4D, a generative model that co-produces future RGB frames, depth maps, and optical flow from a single RGB-D image and a language instruction within one unified diffusion process. This 4D world model features a tri-branch architecture that integrates cross-modal attention with frame-wise 3D RoPE, ensuring that appearance, geometry, and motion evolve consistently. To supply training data at scale, we curate Rynn4DDataset 1.0, a massive dataset of over 254.4 million frames across egocentric human and robotic manipulation videos with high-quality pseudo-labels for depth and optical flow. We further propose RynnWorld-4D-Policy, an inverse dynamics head that consumes the internal 4D representations of RynnWorld-4D in a single forward pass, bypassing expensive multi-step denoising, to output robot actions in a closed-loop manner. Experiments show that RynnWorld-4D produces temporally and spatially coherent 4D predictions, and that RynnWorld-4D-Policy achieves state-of-the-art performance on real-world dexterous bimanual manipulation tasks, particularly excelling in tasks demanding spatial precision and temporal coordination.

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2607.06558 2026-07-08 cs.RO 新提交

RynnWorld-Teleop: An Action-Conditioned World Model for Digital Teleoperation

RynnWorld-Teleop:用于数字遥操作的动作条件世界模型

Haoyu Zhao, Xingyue Zhao, Hangyu Li, Biao Gong, Kehan Li, Siteng Huang, Xin Li, Deli Zhao, Zhongyu Li

发表机构 * DAMO Academy, Alibaba Group(达摩院,阿里巴巴集团) Hong Kong Embodied AI Lab(香港具身人工智能实验室) CUHK(香港中文大学) Hupan Lab(湖畔实验室) Alibaba Group(阿里巴巴集团) Ant Group(蚂蚁集团)

AI总结 研究针对机器人学习数据收集瓶颈,提出数字遥操作范式,用生成世界模型解耦数据收集与物理约束。以RynnWorld-Teleop系统实现,含多种技术,能实时生成,训练策略可零样本转移,还能增强数据集,是高保真可扩展数据引擎。

Comments Project Page: https://alibaba-damo-academy.github.io/RynnWorld-Teleop.github.io, Github: https://github.com/alibaba-damo-academy/RynnWorld-Teleop

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AI中文摘要

扩展机器人学习需要大量多样的轨迹数据,但目前物理遥操作限制了数据收集,每次演示都将操作员时间与特定硬件和工作空间绑定。我们引入数字遥操作,通过用生成世界模型取代真实机器人,将数据收集与物理约束解耦。在该框架中,操作员的手部姿势流驱动以机器人为中心的生成世界模型,从单个参考图像合成高保真自我中心视频。记录的姿势流可通过标准重定向作为与实体无关的动作标签转移到任何目标机器人,产生用于模仿学习的完整状态动作轨迹,独立于物理硬件。我们在RynnWorld-Teleop中实例化此范式,该系统集成了深度感知骨骼条件、视频扩散变压器上的渐进式人机训练和流式自回归蒸馏。此管道将生成过程压缩为单通道推理,在单个H100 GPU上实现40 + FPS的实时交互生成。仅在RynnWorld-Teleop生成的数据上训练的策略可在各种灵巧的双手任务中实现有效的零样本Sim2Real转移。此外,用我们的数字遥操作数据增强真实世界数据集可持续提高成功率,表明RynnWorld-Teleop是下一代机器人智能体的高保真、可扩展数据引擎。

英文摘要

Scaling robot learning requires massive, diverse trajectory data, yet collection is currently bottlenecked by physical teleoperation, where every demonstration binds operator time to specific hardware and workspaces. We introduce digital teleoperation, a paradigm that decouples data collection from physical constraints by replacing the real robot with a generative world model. In this framework, an operator's hand-pose stream drives a robot-centric generative world model to synthesize high-fidelity egocentric videos from a single reference image. The recorded pose stream serves as an embodiment-agnostic action label transferable to any target robot via standard retargeting, yielding complete state-action trajectories for imitation learning independent of physical hardware. We instantiate this paradigm in RynnWorld-Teleop, a system that integrates depth-aware skeletal conditioning, progressive human-to-robot training on a video Diffusion Transformer, and streaming autoregressive distillation. This pipeline compresses the generative process into a single-pass inference, enabling 40+ FPS, real-time interactive generation on a single H100 GPU. Policies trained exclusively on RynnWorld-Teleop-generated data achieve effective zero-shot Sim2Real transfer across dexterous and diverse bimanual tasks. Moreover, augmenting real-world datasets with our digitally teleoperated data consistently improves success rates, demonstrating that RynnWorld-Teleop serves as a high-fidelity, scalable data engine for the next generation of robotic agents.

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2607.06555 2026-07-08 cs.CV 新提交

ProxyPose: 6-DoF Pose Tracking via Video-to-Video Translation

ProxyPose:通过视频到视频转换进行六自由度姿态跟踪

Ruihang Zhang, Felix Taubner, Pooja Ravi, Kiriakos N. Kutulakos, David B. Lindell

发表机构 * University of Toronto(多伦多大学) Vector Institute(向量研究所)

AI总结 研究旨在解决单目视频中6-DoF姿态跟踪问题,核心方法是将其转化为视频到视频转换,利用视频扩散模型生成代理视频,通过现成求解器恢复姿态。主要贡献是在无额外输入下实现高精度,且可扩展到多种场景。

Comments 23 pages, 6 figures

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AI中文摘要

从单目视频中跟踪物体和表面的六自由度(6-DoF)姿态是计算机视觉中的一个长期问题。现有方法需要视频本身之外的输入,且在处理无纹理、透明、反射或可变形表面时存在困难。本文介绍ProxyPose,它将6-DoF姿态跟踪重新表述为视频到视频的转换。仅需视频和第一帧中的单个标记像素,经微调的视频扩散模型将输入转换为代理视频,其几何形状和外观已知,恢复其完整6-DoF轨迹可简化为用现成求解器进行经典姿态估计。该方法利用大规模视频预训练,在像素级别操作,无需关于物体身份、边界或全局刚性的假设。ProxyPose在仅对合成数据微调视频模型后,无需竞争方法所需的额外输入即可实现6-DoF姿态跟踪的最新精度。还证明其可扩展到面部跟踪、相机姿态估计及现有方法难以处理的野外场景。

英文摘要

Tracking the six-degree-of-freedom (6-DoF) pose of objects and surfaces from monocular video is a long-standing problem in computer vision. To tackle this problem, existing methods require inputs beyond the video itself-such as 3D models, depth maps, object masks, or task-specific learned features-and they struggle with textureless, transparent, reflective, or deformable surfaces. Here, we introduce ProxyPose, which recasts 6-DoF pose tracking as video-to-video translation. Given only a video and a single marked pixel in the first frame, a fine-tuned video diffusion model translates the input into a proxy video-a synthetic video depicting a colored polyhedron undergoing the same local rigid-body motion as the surface region at the marked pixel. Because the proxy's geometry and appearance are known by construction, recovering its full 6-DoF trajectory reduces to classical pose estimation with off-the-shelf solvers. This formulation leverages large-scale video pre-training to absorb the hardest aspects of pose tracking-handling challenging materials, occlusions, and deformations-into the translation step, while operating at the pixel level with no assumptions about object identity, boundaries, or global rigidity. ProxyPose achieves state-of-the-art 6-DoF pose tracking accuracy without the additional inputs required by competing methods and after fine-tuning the video model only on synthetic data. We further demonstrate that ProxyPose extends to face tracking, camera pose estimation, and challenging in-the-wild scenes that are beyond the reach of existing approaches. Project page: https://ruihangzhang97.github.io/proxypose/.

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2607.06553 2026-07-08 cs.CV 新提交

From RGB Generation to Dense Field Readout: Pixel-Space Dense Prediction with Text-to-Image Models

从 RGB 生成到密集场读出:使用文本到图像模型进行像素空间密集预测

Zanyi Wang, Xin Lin, Haodong Li, Dengyang Jiang, Yijiang Li, Pengtao Xie

发表机构 * UCSD(加州大学圣地亚哥分校) HKUST(香港科技大学)

AI总结 研究利用文本到图像模型进行像素空间密集预测,提出ReChannel方法,保留DiT输入分布的VAE编码器,去掉目标侧解码器,用任务LoRA调整,通过线性头映射令牌到像素空间补丁,在多个密集预测任务上表现出色,比对比方法更准确快速。

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AI中文摘要

大规模文本到图像模型是密集预测的有吸引力的主干,因为 RGB 生成预训练学习了丰富的语义、结构和几何先验。现有方法通过将密集预测转换为目标生成来重用这些先验。然而,我们认为这继承了比密集预测所需更多的生成输出接口。我们的关键观察是预训练的 DiT 已经在图像平面上通过补丁到令牌再到补丁的晶格组织 RGB 输入。我们将此实例化为 ReChannel,保留 DiT 输入分布的 VAE 编码器,去掉目标侧解码器,用任务 LoRA 调整冻结的 DiT,并通过共享的令牌局部线性头将每个令牌映射到其 p x p x K_t 像素空间补丁。使用 FLUX-Klein,我们在六个密集预测任务和十几个基准上进行评估。这个最小接口在无trimap抠图、KITTI深度和引用分割方面设置了新的最先进水平,并在法线、显著性和姿态方面保持竞争力。在匹配的4B设置中,它比编辑加潜在解码对应物更准确且快2.48倍。

英文摘要

Large-scale text-to-image models are attractive backbones for dense prediction because RGB generation pretraining learns rich semantic, structural, and geometric priors. Existing generative and editing approaches reuse these priors by casting dense prediction as target generation: annotations such as depth, normals, alpha mattes, masks, and heatmaps are encoded into an RGB-trained VAE latent space and decoded back as image-like targets. We argue this inherits more of the generative output interface than dense prediction requires: unlike RGB synthesis, dense prediction asks for pixel-correct, task-native fields on the same image plane, not new RGB content to be rendered. Our key observation is that a pretrained DiT already organizes RGB inputs through a patch-to-token-to-patch lattice on the image plane, so each token indexes a fixed output patch whose channels can carry task-native quantities instead of RGB appearance. We instantiate this as ReChannel: we keep the VAE encoder for the DiT's input distribution but drop the target-side decoder, adapt the frozen DiT with task LoRA, and map each token to its p x p x K_t pixel-space patch through a shared token-local linear head--about 33K parameters, no spatial mixing. Using FLUX-Klein, we evaluate on six dense prediction tasks and over a dozen benchmarks. This minimal interface sets new state-of-the-art on trimap-free matting, KITTI depth, and referring segmentation, and stays competitive on normals, saliency, and pose. In a matched 4B setting it is more accurate and 2.48x faster than an edit-plus-latent-decode counterpart--dense perception can benefit from generative pretraining without inheriting its output interface.

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2607.06552 2026-07-08 cs.CV 新提交

MonoIR-RS: Infrared Remote Sensing Vision-Language Learning with CLIP and VLM Adaptation

MonoIR-RS:基于CLIP和VLM适配的红外遥感视觉语言学习

Jiaju Han, Ma Yaqi, Yahui Chai, Xuemeng Sun, Xin Li, Qike Zhang, Yingying Zhao, Xiang Chen, Luwei Yang, Chengyin Hu, Jiahuan Long

发表机构 * China University of Petroleum-Beijing at Karamay(中国石油大学(北京)克拉玛依校区) Guizhou University(贵州大学) Shenzhen Research Institute of Big Data(深圳大数据研究院) Shanghai Jiao Tong University(上海交通大学)

AI总结 研究针对红外视觉语言理解未充分探索的问题,提出MonoIR-RS数据集及基准,结合多种方法构建并微调模型,提升红外遥感视觉语言学习性能,为红外与语言对齐提供可控测试平台。

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AI中文摘要

红外遥感图像能捕捉强度结构、物体与背景对比度及光照不变线索,而多数遥感视觉语言资源和模型聚焦于可见光带语义,红外视觉语言理解未被充分探索。本文介绍MonoIR-RS,一个大规模红外遥感视觉语言数据集和基准,它将红外感知数据构建与CLIP风格对比适配及VLM指令调整相结合。实验表明合成红外图像比灰度转换更接近真实热图像,微调多个骨干模型可提升性能,为红外遥感证据与语言对齐提供可控、可重复测试平台。

英文摘要

Infrared remote-sensing imagery captures intensity structure, object-background contrast, and illumination-invariant cues often invisible in RGB imagery. Yet, most remote-sensing vision-language resources and models focus on visible-band semantics, leaving infrared vision-language understanding underexplored. We introduce MonoIR-RS, a large-scale infrared remote-sensing vision-language dataset and benchmark that couples IR-aware data construction with CLIP-style contrastive adaptation and VLM instruction tuning. Built from the same source pool and split as FusionRS, MonoIR-RS retains the infrared image as the model-facing modality, yielding 600,000 synthesized infrared images and 59,032 retained IR-aware caption records. The model experiments use this retained language-supervision subset, whose captions rewrite supervision around grayscale structure and infrared-style contrast instead of RGB appearance. We show that the synthesized infrared imagery is markedly closer to real thermal imagery than a grayscale conversion on the AVIID benchmark. We fine-tune five CLIP backbones and six VLM backbones, and calibrate them against zero-shot behavior: IR-aware adaptation lifts CLIP mean recall by up to 12.8 points and drives VLM captioning IR-cue coverage to 100% while reducing residual RGB-color leakage to near zero. By isolating the infrared modality from RGB-IR dual-modal learning, MonoIR-RS offers a controlled, reproducible testbed for aligning infrared remote-sensing evidence with language.

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2607.06549 2026-07-08 cs.CV 新提交

Unsupervised Domain Adaptation for Calcification Classification in Mammography Across Multi-Site Datasets

跨多站点数据集的乳腺钼靶钙化分类的无监督域适应

Xuan Liu, Derek L. Nguyen, Emily C. Barre, Jennifer Thomas, Thomas Lynch, Jeffrey R. Marks, E. Shelley Hwang, Marc D. Ryser, Joseph Y. Lo, Lars J. Grimm

发表机构 * Duke University(杜克大学) Duke University School of Medicine(杜克大学医学院) Royal Surrey NHS Foundation Trust(皇家萨里郡国民保健服务信托基金)

AI总结 针对跨多站点数据集的乳腺钼靶钙化分类中域转移问题,提出含无监督域适应和监督分类模块的框架,用风格迁移模型生成训练样本,经多数据集验证,提升了跨站点性能,减少域转移,增强分类泛化能力。

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AI中文摘要

基于深度学习的计算机辅助诊断(CAD)系统在乳腺癌诊断中表现出色,尤其在乳腺钼靶分类任务上。然而,跨多站点数据集的域转移仍是挑战。本文提出一个钙化分类框架,由基于风格迁移模型(AdaIN和CycleGAN)的无监督域适应模块(用于生成特定供应商和技术的训练样本且无需额外标注)和以Swin Transformer V2为骨干的监督分类模块组成。在三个数据集上评估该方法,结果显示该框架提升了跨站点性能,表明域适应可减少域转移并提高多站点数据集钙化分类的泛化能力。

英文摘要

Deep learning-based computer-aided diagnosis (CAD) systems have shown strong performance in breast cancer diagnosis, particularly for classification tasks in mammography. However, domain shifts across multi-site datasets remain a challenge, especially when models are applied to unseen domains. In this work, we proposed a calcification classification framework to improve malignant versus benign breast disease classification across multi-site mammography datasets. The framework consisted of two components: (1) an unsupervised domain adaptation module based on style transfer models (AdaIN and CycleGAN) to generate vendor-specific and technique-specific training samples without additional annotations, and (2) a supervised classification module using Swin Transformer V2 as the backbone. We evaluated the proposed method on three datasets: cross-validation on OPTIMAM (National Health Service, United Kingdom; n=2994), followed by external validation on EMBED (Emory University; n=125), and Duke Calcification Dataset v1 (n=788). These datasets cover multiple vendors and include both full-field digital mammography and synthetic 2D images derived from digital breast tomosynthesis. The proposed framework improved cross-site performance for both EMBED (AUC 0.68 to 0.72) and the Duke Calcification Dataset (AUC 0.68 to 0.73). These findings indicate that domain adaptation can reduce domain shifts and improve the generalization for calcification classification across multi-site datasets.

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2607.06546 2026-07-08 cs.LG cs.AI 新提交

Graph Convolutional Attention: A Spectral Perspective on Graph Denoising and Diffusion

图卷积注意力:图去噪与扩散的谱视角

Shervin Khalafi, Igor Krawczuk, Sergio Rozada, Charilaos Kanatsoulis, Antonio G Marques, Alejandro Ribeiro

发表机构 * University of Pennsylvania(宾夕法尼亚大学) King Juan Carlos University(胡安·卡洛斯国王大学) Stanford University(斯坦福大学)

AI总结 研究图去噪问题,提出图卷积注意力(GCA)方法,通过利用输入图谱实现谱去噪,在随机块模型中与理想机制匹配,实验证明其能提升图去噪和扩散性能,在 DiGress 中表现良好且推理更快。

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AI中文摘要

去噪图是图学习中的一个基本问题,也是图扩散模型的核心操作。基于注意力的架构如 图变换器在图去噪方面显示出前景。然而,我们对基于注意力的图去噪的理论理解仍然有限。本文表明,在去噪目标下,线性注意力是次优的,只能学习训练分布上的平均谱去噪滤波器。为克服这一限制,引入谱注意力,它直接利用输入图谱,性能优于线性注意力。进而推导出图卷积注意力(GCA),通过图滤波查询和键实现谱去噪。对于随机块模型,GCA 可证明与理想的谱注意力机制匹配。实验表明,用 GCA 替代线性注意力可提升图去噪和扩散性能,在 DiGress 中,GCA 能匹配标准图变换器性能且推理更快。

英文摘要

Denoising graphs is a fundamental problem in graph learning and the core operation of graph diffusion models. Attention-based architectures like graph transformers have recently shown promise in denoising graphs. However, our principled understanding of attention-based graph denoising remains limited, making it unclear whether standard attention is the right mechanism for this task. Here we show that, under a denoising objective, linear attention is suboptimal and can only learn an average spectral denoising filter over the training distribution. This creates a fundamental limitation as graphs often vary spectrally across the distribution. To overcome this limitation, we introduce Spectral Attention, which directly utilizes the input graph spectrum and provably outperforms linear attention by a margin governed by the spectral diversity of the distribution. We then derive Graph Convolutional Attention (GCA), a practical and permutation-equivariant realization of this idea that implements spectral denoising through graph-filtered queries and keys. For stochastic block models, GCA provably matches the idealized Spectral Attention mechanism. We further show that the softmax operation, that follows the attention, provides additional denoising by approximately projecting noisy eigenvectors onto the clean eigenspace. Empirically, replacing linear attention with GCA consistently improves graph denoising and diffusion on synthetic and real datasets, with gains strongly correlated with spectral diversity. In DiGress, GCA matches standard graph-transformer performance without computing expensive structural features, and when combined with the recently proposed PEARL positional encodings, avoids explicit eigendecomposition computations resulting in faster inference without degrading quality. The code can be found here: github.com/shervinkhalafi/graph_conv_att

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2607.06544 2026-07-08 cs.AI cs.CL 新提交

Rethinking Indic AI from a Lens of Cultural Heritage Preservation

从文化遗产保护视角重新思考印度人工智能

Aparna Madva, Sharath Srivatsa, Srinath Srinivasa, Tulika Saha

发表机构 * International Institute of Information Technology, Bengaluru(班加罗尔国际信息技术学院)

AI总结 本文从文化遗产保护角度探讨人工智能对印度语言文化的影响,通过纵向调查自然语言处理技术演变、分析印度语言特征及基础模型作用,提出‘文化感知’方向,为印度自然语言处理下一阶段研究及基础模型发展提供指引。

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AI中文摘要

随着人工智能进入印度次大陆不同地区,研究其对该文明语言和文化基础的影响备受关注。人工智能是把双刃剑,一方面能让大量人群受益,另一方面会使世界观同质化并排斥未被充分代表的语言和世界观。本文通过探讨印度语言学的广泛特性及其与文化实践和世界观的紧密联系来刻画此问题。对自然语言处理技术在该领域的演变进行纵向调查,追溯印度自然语言处理的历史发展。研究印度语言的结构和社会语言学特征给构建人工智能基础模型带来的独特挑战。讨论印度基础模型的作用并分析其如何解决资源和表示差距。最后提出‘文化感知’研究方向,基于诠释推理重新构想人工智能,旨在解决低资源语言公平性能等问题,产出有文化意义的结果,为印度自然语言处理下一阶段研究提供方向并助力更强大、包容的印度基础模型发展。

英文摘要

As Artificial Intelligence (AI) makes inroads into different parts of the Indian subcontinent, there is significant interest in studying how AI impacts the linguistic and cultural foundations of this civilization. AI is seen as a ''double-edged sword'' where on the one hand, it can enable access and inclusion for a large population, on the other, it can homogenize worldviews and exclude underrepresented languages and worldviews. In this paper, we try to characterize this problem by addressing the extensive characteristic nature of Indian linguistics and the way they closely connect to cultural practices and worldview. We then perform a longitudinal survey of how Natural Language Processing (NLP) techniques have evolved in this space, tracing the historical development of Indic NLP, covering key milestones, methodological shifts, and resource creation efforts. In addition, the paper also examines the structural and sociolinguistic characteristics of Indian languages, such as rich morphology, complex scripts and grammar rules, diglossia, and large dialectal variation, and explains how these create unique challenges for building AI foundation models. We then discuss the growing role of Indic foundation models and analyze how these models address these long-standing resource and representation gaps. Finally, we propose a research direction called 'Culture Sensing', which re-imagines AI based on hermeneutic reasoning. Culture Sensing aims to address open problems such as ensuring equitable performance across low-resource languages and producing outputs that are culturally meaningful. By bringing together past work, current techniques, and emerging trends, this paper outlines research directions that can guide the next phase of Indic NLP and contribute to the development of more robust and inclusive Indic foundation models.

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2607.06542 2026-07-08 cs.CL 新提交

On the feasibility of dependency parsing of non-human sequences without a gold standard. Is evaluation possible in other species?

关于无黄金标准的非人类序列依存句法分析的可行性。在其他物种中是否可以进行评估?

Ramon Ferrer-i-Cancho, Catherine Hobaiter, Thore Bergman, Morgan Gustison

发表机构 * Universitat Politècnica de Catalunya(加泰罗尼亚理工大学) University of St Andrews(圣安德鲁斯大学) University of Michigan(密歇根大学) Western University(韦仕敦大学)

AI总结 探讨无黄金标准下非人类序列依存句法分析的可行性,应用网络科学进展,发现非人类灵长类动物发声或手势序列因序列长度分布快速衰减,解析器检索正确边比例高,可无黄金标准评估,人类语言序列则不然。

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AI中文摘要

依存句法分析是为序列找到树状表示。无监督依存句法分析旨在开发在模型训练期间无需黄金标准的解析方法。在人类语言中,无监督解析器可以被评估,因为通常有可用的或可创建的黄金标准。对于其他物种,黄金标准未知。因此,有人可能会得出结论,无法确定无监督解析器的准确性,进而依存句法分析在其他物种中不可行。然而,我们应用网络科学的最新进展来证明,由于序列长度分布的快速衰减,解析器检索到的正确边的比例对于非人类灵长类动物产生的发声或手势序列一定很高。相比之下,人类语言序列缺乏该属性。因此,在非人类灵长类动物中无黄金标准的评估是可行的,但在人类中是个难题。

英文摘要

Dependency parsing consists of finding a tree representation for a sequence. Unsupervised dependency parsing aims to develop parsing methods without a gold standard during model training. In human languages, an unsupervised parser can be evaluated because some gold standard is usually available or can be created. For other species, a gold standard is unknown. Thus one may conclude that it is impossible to determine the accuracy of an unsupervised parser and, consequently, dependency parsing is unfeasible in other species. However, here we apply recent advances in network science to demonstrate that the proportion of correct edges retrieved by a parser must be high for the sequences of vocalizations or gestures that non-human primates produce due to the fast decay of the sequence length distribution. In contrast, human language sequences lack that property. Therefore, evaluation without a gold standard is feasible in non-human primates but a hard problem in humans.

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2607.06540 2026-07-08 cs.CL 新提交

Hierarchical Acoustic-Semantic Modeling: Modality Separation and Semantic Coherence for Full-Duplex SLMs

分层声学-语义建模:全双工口语语言模型的模态分离与语义连贯

Zhenyu Liu, Yunxin Li, Xuanyu Zhang, Qixun Teng, Shenyuan Jiang, Haolan Chen, Minjun Zhao, Fanbo Meng, Yu Xu, Yancheng He, Baotian Hu, Haizhou Li, Min Zhang

发表机构 * School of Computer Science and Technology, Harbin Institute of Technology, Shenzhen(哈尔滨工业大学(深圳)计算机科学与技术学院) Center for Language, Intelligence and Machines, Shenzhen Loop Area Institute, Shenzhen(深圳环智中语言、智能与机器中心) School of Artificial Intelligence, The Chinese University of Hong Kong, Shenzhen(香港中文大学(深圳)人工智能学院)

AI总结 研究全双工口语语言模型受模态干扰问题,提出Lychee-FD框架及分层参数分离策略,通过实验验证该方法能有效提升模型性能,在语音智能和交互流畅性上取得显著进步,且不影响推理效率。

Comments 22 pages, 9 figures

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AI中文摘要

开发无缝、高性能、原生智能的全双工口语语言模型(SLMs)一直是语音和自然语言处理社区的关键挑战和长期目标。尽管有显著进展,但近期努力受严重模态干扰根本限制,导致知识退化和语义完整性受损。本文通过对模型优化动态的详尽细粒度分析,揭示性能下降根源是声学和语义建模在共享深度参数空间时的固有梯度冲突。基于此,引入Lychee-FD框架,提出分层参数分离策略,在多个全双工基准测试上实验表明该方法显著提升了技术水平,在语音智能和全双工交互流畅性上有大幅改进且不影响推理效率。

英文摘要

Developing seamless, high-performance, native intelligent full-duplex Spoken Language Models (SLMs) remains a critical challenge and long-standing goal for the speech and NLP community. Despite notable progress, recent endeavors are fundamentally constrained by severe modality interference, which causes substantial knowledge degradation and compromises semantic integrity -- ultimately making full-duplex SLMs feel unnatural and unintelligent. In this paper, through an exhaustive fine-grained analysis of model optimization dynamics, we uncover the root cause of such performance degradation, revealing that modality interference arises from inherent gradient conflicts between acoustic and semantic modeling when the two modalities are forced to share a deep parameter space. Guided by this key insight, we introduce Lychee-FD, a native end-to-end full-duplex framework designed to mitigate modality interference. Importantly, we propose a hierarchical parameter separation strategy that decouples conflicting modalities in deep layers while preserving cross-modality coherence via a dedicated semantic alignment channel. Extensive experiments on multiple full-duplex benchmarks demonstrate that our method significantly advances the state of the art, yielding substantial improvements in both speech intelligence (+7.4% on Spoken QA) and full-duplex interaction fluidity (+28.5% on FullDuplexBench 1.5) without compromising inference efficiency. To the best of our knowledge, this work is the first to achieve two key advances: 1) uncovering and elucidating the root cause of modality interference in full-duplex SLMs, and 2) designing an elegant hierarchical model together with a practical solution for seamless, high-performance, native intelligent full-duplex SLMs.

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2607.06537 2026-07-08 cs.RO 新提交

UniLM-Nav: A Unified Framework for Zero-Shot Last-Mile Navigation

UniLM-Nav:零样本最后一英里导航的统一框架

Zhuofan Zhang, Tianxu Wang, Guoxi Zhang, Yixiong Lin, Xilin Wang, Hongming Xu, Qing Li, Song-Chun Zhu, Lifeng Fan

发表机构 * Tsinghua University(清华大学) State Key Laboratory of General Artificial Intelligence, BIGAI(通用人工智能国家重点实验室,字节跳动公司人工智能研究院) Harbin Institute of Technology(哈尔滨工业大学) Peking University(北京大学)

AI总结 研究移动操作中最后一英里导航问题,提出UniLM-Nav统一框架,通过多模态大语言模型后端分解任务为视图选择、功能接地和姿态推理,在OVMM基准上优于现有方法,还验证了在实际机器人上的适用性。

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AI中文摘要

移动操作要求机器人导航到目标物体或容器并执行预期操作。然而,到达目标附近并不保证有可进行操作的基础姿态,即所谓的最后一英里导航问题。先前方法依赖手动姿态标注或特定任务训练,限制了其在具有细粒度空间约束的开放词汇设置中的扩展性。我们提出UniLM-Nav,一个用于零样本开放词汇最后一英里导航的统一框架。它将最后一英里导航分解为视图选择、任务条件下的功能接地和几何感知基础姿态推理,通过共享的多模态大语言模型后端解决。具体步骤包括首先选择最佳捕捉目标的参考视图,然后在所选视图中确定与任务相关的功能点并转换到机器人中心坐标系,最后根据接地功能、任务上下文和机器人几何形状推断出机器人可操作的基础姿态。我们在OVMM基准上评估了UniLM-Nav,它比之前的最先进方法MoTo高出3.13个百分点。分析表明我们方法的组件对最终性能至关重要,大语言模型的选择也有很大影响。我们还将UniLM-Nav部署在带有6自由度Unitree Z1机械手的Unitree B2四足机器人上,验证了其在实际移动操作任务中的适用性。

英文摘要

Mobile manipulation requires a robot to navigate to a target object or receptacle and then perform intended manipulation. However, reaching the vicinity of the target does not guarantee a manipulation-ready base pose, a problem known as last-mile navigation. Prior methods for last-mile navigation either rely on manual pose annotation or task-specific training, limiting their scalability to open-vocabulary settings with fine-grained spatial constraints. We propose UniLM-Nav, a unified framework for zero-shot open-vocabulary last-mile navigation. UniLM-Nav decomposes last-mile navigation into view selection, task-conditioned affordance grounding, and geometry-aware base-pose reasoning, all resolved with a shared multimodal large language model (MLLM) backend. Specifically, UniLM-Nav first selects a reference view that best captures the target object or receptacle from recently collected observations. It then grounds task-relevant affordance point in the selected view and lifts the result into the robot-centric coordinate frame. Finally, conditioned on the grounded affordance, task context, and robot geometry, it infers a manipulation-ready base pose for the robot. We evaluate UniLM-Nav on the OVMM benchmark, where it outperforms the previous state-of-the-art method, MoTo, by 3.13 percentage points. Analyses show that the components of our method are crucial to final performance, and that the choice of MLLM also has a substantial effect. We further deploy UniLM-Nav on a Unitree B2 quadruped robot with a 6-DoF Unitree Z1 manipulator, validating its applicability to real-world mobile manipulation tasks.

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2607.06535 2026-07-08 cs.RO cs.SY eess.SY 新提交

Neural-ESO: A Dual-Pathway Architecture for Provably Robust Learning-Based Control

神经扩展状态观测器:一种用于可证明鲁棒的基于学习控制的双路径架构

Fan Zhang, Richie Suganda, Jinfeng Chen, Wenhua Liu, Hantao Fu, Bin Hu, Qin Lin

发表机构 * University of Houston(休斯顿大学) Rice University(莱斯大学)

AI总结 本文提出基于神经扩展状态观测器(Neural-ESO)的干扰抑制框架,采用双路径架构,预测路径用神经网络加速收敛,校正路径补偿误差。利用李雅普诺夫理论证明其有界性,在四旋翼着陆任务中验证,相比基线有精度-鲁棒性权衡及更高操作可靠性。

Comments Accepted to IEEE RA-L

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AI中文摘要

本文提出了一种基于神经扩展状态观测器(Neural-ESO)的支持学习的干扰抑制框架。与现有主要依赖已部署学习模型的基于学习的控制方法不同,Neural-ESO采用双路径架构:预测路径使用神经网络提供前馈干扰估计以加速收敛,校正路径采用传统ESO补偿预测误差并防止过度依赖神经组件。利用李雅普诺夫理论和小增益分析表明,对学习组件施加利普希茨界可保证闭环误差动态的一致最终有界性。该框架在四旋翼着陆任务中得到验证,展示了与现有基线相比在训练、部署和转移过程中的精度-鲁棒性权衡和更高的操作可靠性。

英文摘要

A learning-enabled disturbance-rejection framework based on a Neural Extended State Observer (Neural-ESO) is presented in this letter. Unlike existing learning-based control methods that largely rely on the learned model once deployed, Neural-ESO adopts a dual-pathway architecture: a predictive pathway uses a neural network to provide a feedforward disturbance estimate that accelerates convergence, while a corrective pathway employs a conventional ESO to compensate prediction errors and prevent over-reliance on the neural component. Using Lyapunov theory and a small-gain analysis, we show that enforcing a Lipschitz bound on the learning component guarantees uniform ultimate boundedness of the closed-loop error dynamics. The proposed framework is validated on a quadrotor landing task subject to strong ground-effect disturbances across normal and out-of-distribution scenarios, demonstrating accuracy-robustness trade-off and greater operational reliability during training, deployment, and transfer compared with state-of-the-art baselines.

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2607.06534 2026-07-08 cs.CV 新提交

CAIRN: Cross-Room 3D Scene Understanding with Topology-Aware Large Multimodal Models

CAIRN:使用拓扑感知大型多模态模型进行跨房间3D场景理解

He Liang, Chenyang Ma, Yiming Zhang, Sangyun Shin, Andrew Markham, Niki Trigoni, Yuhang He

发表机构 * University of Oxford(牛津大学) Microsoft(微软公司) Simon Fraser University(西蒙弗雷泽大学)

AI总结 研究针对现有3D-LLMs不能处理多房间场景问题,提出拓扑感知3D-LLM即CAIRN。其将Transformer注意力与场景层次对齐,通过多种方式增强模型能力。在新基准CAIRN-MR上实验,CAIRN在多房间任务中大幅超越前人,单房间任务也具竞争力。

Comments Project Page: https://oceansdepp.github.io/cairn_web/

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AI中文摘要

现有的3D场景基础大语言模型(3D-LLMs)专注于回答基于简化单房间3D场景的问题,缺乏对包含多个相互连接房间和多样物体类别的现实家庭环境进行推理的能力。我们引入了CAIRN,一种用于多房间3D场景理解的拓扑感知3D-LLM。CAIRN将Transformer注意力与场景层次结构对齐,使模型明确了解对象级关系和房间级连接性。它通过图神经网络用房间局部关系上下文丰富对象令牌,引入用于房间级抽象的学习房间令牌,并应用带有几何偏差的分层注意力掩码根据场景拓扑路由信息。CAIRN是在CAIRN-MR上开发的,CAIRN-MR是我们在HM3D上引入的用于多房间3D场景理解的基准,涵盖基础、字幕和从房间内感知到跨房间推理逐步评估的四个问答任务。实验表明,CAIRN在所有CAIRN-MR任务上大幅优于先前的3D-LLMs,同时在五个单房间基准测试中保持竞争力。

英文摘要

Existing 3D scene-grounded Large Language Models (3D-LLMs) focus on answering questions grounded in simplified single-room 3D scenes, lacking the ability to reason over real-world household environments containing multiple interconnected rooms and diverse object categories. We introduce CAIRN, a topology-aware 3D-LLM for multi-room 3D scene understanding. CAIRN aligns transformer attention with scene hierarchy, giving the model explicit awareness of object-level relations and room-level connectivity. It enriches object tokens with room-local relational context via a graph neural network, introduces learned room tokens for room-level abstraction, and applies a hierarchical attention mask with geometric bias to route information according to scene topology. CAIRN is developed on CAIRN-MR, a benchmark we introduce on HM3D for multi-room 3D scene understanding, covering grounding, captioning, and four question-answering tasks that progressively evaluate from intra-room perception to cross-room reasoning. Experiments show that CAIRN outperforms prior 3D-LLMs by a large margin across all CAIRN-MR tasks while remaining competitive on five single-room benchmarks.

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2607.06531 2026-07-08 cs.AI cs.LG 新提交

The Large Cancer Assistant (LCA): A Model-Agnostic Orchestration Framework for Scalable Clinical Decision Support in Oncology

大型癌症助手(LCA):用于肿瘤学中可扩展临床决策支持的模型无关编排框架

Ghassen Marrakchi, Basarab Matei

发表机构 * Ghassen MARRAKCHI(独立研究者) Basarab MATEI(独立研究者)

AI总结 研究针对肿瘤学多模态深度学习模型设计局限,提出模型无关的LCA编排框架。利用算法不可渗透原则等方法,经概念验证验证其编排逻辑、算法不可渗透性等,为临床决策支持提供高度适应性基础,利于电子病历互操作性。

Comments 22 pages, 6 figures, 8 tables, 9 appendices, 14 references, Elsevier JBI format

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AI中文摘要

**目的**:肿瘤学中的多模态深度学习模型目前受限于整体设计,将数据摄取、临床路径和人工智能(AI)推理紧密耦合。为解决这种不灵活性,我们提出大型癌症助手(LCA),这是一个模型无关的事后编排框架,用于可扩展的临床决策支持。**方法**:LCA在数学上被形式化为一个基于算法不可渗透原则的7元组架构,确保编排逻辑严格独立于底层黑盒AI模型。我们引入入口理论,利用几何深度学习(GDL)沿不同结构和医学轴标准化多模态患者数据。系统通过癌症切换模块动态编排数据,并通过输出标准化中间负载(SIP)有意将核心AI执行与易变的医院IT基础设施隔离。**结果**:概念验证(PoC)在四个技术场景中验证了编排逻辑。该框架以可忽略的编排开销执行标称流程。通过在AI模型交换期间保持不变的路由投影,它从经验上证明了算法不可渗透性,并通过在注入数据异常情况下生成目标补充数据请求(SDR)时实现100%召回率验证了严格的故障安全性。还成功验证了多协议执行能力。**结论**:通过在结构上解耦多模态摄取与特征推理,LCA提供了一个高度适应性和模块化的编排基础。SIP建立了明确的架构边界,自然地为下游电子病历(EMR)互操作性作为独立的未来范式奠定了基础。

英文摘要

- Objective: Multimodal deep learning models in oncology are currently limited by monolithic designs that rigidly couple data ingestion, clinical routing, and artificial intelligence (AI) inference. To address this inflexibility, we propose the Large Cancer Assistant (LCA), a model-agnostic, post-hoc orchestration framework designed for scalable clinical decision support. - Methods: The LCA is mathematically formalized as a 7-tuple architecture grounded in the principle of Algorithmic Impermeability, ensuring the orchestration logic remains strictly independent of underlying black-box AI models. We introduce the Entry Theory, leveraging Geometric Deep Learning (GDL) to standardize multimodal patient data along distinct structural and medical axes. The system dynamically orchestrates data via a Cancer Switching Module and intentionally isolates the core AI execution from volatile hospital IT infrastructures by outputting a Standardized Intermediate Payload (SIP). - Results: A Proof of Concept (PoC) validated the orchestration logic across four technical scenarios. The framework executed a nominal flow with negligible orchestration overhead. It empirically demonstrated algorithmic impermeability by maintaining an invariant routing projection during AI model swaps, and it validated strict failure-safety by achieving a 100\% recall rate in generating targeted Supplementary Data Requests (SDR) under injected data anomalies. Multi-protocol execution capability was also successfully verified. - Conclusion: By structurally decoupling multimodal ingestion from feature inference, the LCA provides a highly adaptable and modular orchestration foundation. The SIP establishes a clear architectural boundary, natively setting the stage for downstream Electronic Medical Record (EMR) interoperability as an independent future paradigm.

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2607.06529 2026-07-08 cs.CL 新提交

Life Style Levels: Neighborhood Delineation using Geospatial Data

生活方式水平:使用地理空间数据进行邻里划分

Srivatsa Kulkarni, Debarag Banerjee

发表机构 * L&T Finance(L&T金融公司)

AI总结 研究针对印度等地区缺乏精细社会经济信息的问题,提出基于开源卫星图像建筑形态学的可扩展框架,划分城市区域并验证结果,还进行相关聚类及贷款拖欠分析,为印度城市富裕程度测绘提供有效方法。

Comments 43 pages, 38 figures

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AI中文摘要

在印度等发展中世界快速城市化地区,往往缺乏精细尺度的社会经济信息,限制了描绘城市内部贫富差异的能力。本研究提出一种基于开源卫星图像衍生的建筑形态学的可扩展、基于网格的城市划分框架。将印度59个城镇的城市区域划分为高分辨率空间网格,用可解释的形态学指标表征,并组合成透明的、基于规则的评分框架来划分不同富裕程度的区域。通过谷歌街景地面观测验证分类结果,发现网格类别间有明显差异。还在孟买对建筑足迹进行基于密度的聚类以识别密集城市住区。最后对不同富裕阶层的消费贷款拖欠情况进行探索性分析。该框架完全依赖公开地理空间数据,为印度城市精细的城市富裕程度测绘提供了可扩展、可解释且经济高效的方法。

英文摘要

Fine-scale socioeconomic information is often unavailable across rapidly ur-banizing regions of the developing world, like India, limiting the ability to delineate intra-urban variations in affluence and deprivation. This study pro-poses a scalable, grid-based urban delineation framework using building morphology derived from open-source satellite imagery. Urban areas across 59 Indian cities and towns are partitioned into high-resolution spatial grids and characterized using interpretable morphological indicators, which are combined into a transparent, rule-based scoring framework to delineate areas with contrasting levels of urban affluence. The resulting classifications are validated through ground-level Google Street View observations, revealing a sharp contrast between the grid classes which are consistent with the ex-pected effects of the lifestyle affluence indicators. We further investigate density-based clustering of building footprints in Mumbai to identify dense urban settlements, demonstrating that the resulting clusters exhibit substan-tial spatial overlap with known informal settlements across the city. Finally, we conduct an exploratory analysis mapping consumer loan delinquency across the derived affluence classes. By relying entirely on publicly available geospatial data, the proposed framework provides a scalable, interpretable, and cost-effective approach for granular urban affluence mapping across In-dian cities.

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2607.06527 2026-07-08 cs.CL cs.AI 新提交

RSF-GLLM: Bridging the Semantic Gap in Multi-Hop Knowledge Graph QA via Recurrent Soft-Flow and Decoupled LLM Generation

RSF-GLLM:通过循环软流和去耦语言模型生成弥合多跳知识图谱问答中的语义鸿沟

Sambaran Bandyopadhyay, Ananth Muppidi

发表机构 * Adobe Research(Adobe研究院) Adobe Systems(Adobe系统公司)

AI总结 研究多跳知识图谱问答中传统方法的语义鸿沟问题,提出RSF-GLLM框架,通过循环软流模块传播分数、引入正则化保证收敛,提取路径微调LLM,实验证明该方法性能优且推理效率高。

Comments Accepted for publication in ICML 2026 as a full research paper; 21 pages

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AI中文摘要

多跳知识图谱问答面临关键挑战:传统的先检索后读取管道破坏了可微性,使检索器难以弥合中间节点与查询缺乏词汇重叠的语义鸿沟。为解决此问题,我们提出了RSF-GLLM,一个将可微图推理与答案生成解耦的框架。我们的循环软流(RSF)模块采用GRU引导的查询更新器来传播连续相关分数,利用动态门控机制通过结构线索遍历语义不同的桥梁节点。我们引入流稀疏正则化从理论上保证从软概率到离散推理路径的收敛。这些路径被提取并文本化以微调大型语言模型(LLM),确保生成基于事实拓扑。在WebQSP和CWQ上的实验表明,与基于LLM的计算昂贵方法相比,RSF-GLLM实现了具有竞争力的性能和更高的推理效率。

英文摘要

Multi-hop Question Answering over Knowledge Graphs faces a critical challenge: traditional retrieve-then-read pipelines break differentiability, preventing the retriever from learning to bridge the semantic gap where intermediate nodes lack lexical overlap with the query. To address this, we propose RSF-GLLM, a framework decoupling differentiable graph reasoning from answer generation. Our Recurrent Soft-Flow (RSF) module employs a GRU-guided query updater to propagate continuous relevance scores, utilizing a dynamic gating mechanism to traverse semantically dissimilar bridge nodes via structural cues. We introduce flow sparsity regularization to theoretically guarantee convergence from soft probabilities to discrete reasoning paths. These paths are extracted and textualized to fine-tune a Large Language Model (LLM), ensuring generation is grounded in factual topology. Experiments on WebQSP and CWQ demonstrate that RSF-GLLM achieves competitive performance with superior inference efficiency compared to LLM based computationally expensive approaches.

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2607.06522 2026-07-08 cs.AI cs.CV 新提交

Bridging Physical Reasoning and Task Generalization via Visual Action Outcome Reasoning Alignment

通过视觉动作结果推理对齐实现物理推理与任务泛化的桥梁

Han-Jun Ko, Jr-Jen Chen, Haobo Yuan, Hsin-Ying Lee, Tiancheng Shen, Ming-Hsuan Yang, Yu-Chiang Frank Wang

发表机构 * National Taiwan University(国立台湾大学) The University of California, Merced(加州大学默塞德分校)

AI总结 研究针对视觉语言模型在物理推理中难以泛化的问题,提出VAORA奖励设计,包括视觉对齐奖励和视觉-动作对齐奖励,通过预训练专家估计概率实现平滑密集奖励,经实验验证可有效提升模型在新任务和未见环境中的物理推理性能。

Comments ICML'26 Workshop RLxF: Reinforcement Learning from World Feedback

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AI中文摘要

视觉语言模型(VLMs)在交互式物理推理中难以泛化,尤其是在未见任务和环境下。有两种关键失败模式:与物理现实矛盾的幻觉思维链(CoT)推理,以及模型推理与动作之间的不一致。我们提出了VAORA(视觉动作结果推理对齐),一种直接解决这两个问题的新颖奖励设计。VAORA引入了两种互补奖励:视觉对齐奖励,将VLM推理锚定到独立于智能体动作本身的视觉上下文;视觉-动作对齐奖励,将推理基于模型动作诱导的视觉结果。这些奖励抑制了幻觉CoT并减少了推理与行为之间的差距。为提高训练稳定性,我们通过使用预训练的领域内专家智能体估计成功概率来采用平滑、密集奖励。在PHYRE和虚拟工具上的实验证实了VAORA在新任务和未见环境设置中的性能,表明可以通过VAORA诱导出有基础且可泛化的物理智能。

英文摘要

Vision-language models (VLMs) struggle to generalize in interactive physical reasoning, particularly under unseen tasks and environments. Two key failure modes are prominent: hallucinated chain-of-thought (CoT) reasoning that contradicts physical reality, and misalignment between the model's reasoning and actions. We present VAORA (Visual Action Outcome Reasoning Alignment), a novel reward design that directly addresses both issues. VAORA introduces two complementary rewards: Visual Alignment Reward, which anchors VLM reasoning to the visual context independent of the agent action itself, and Visual-Action Alignment Reward, which grounds reasoning in the visual outcome induced by the model's action. Together, these rewards suppress hallucinated CoT and reduce the gap between reasoning and behavior. To improve training stability, we further employ smooth, dense rewards by estimating success probabilities using a pre-trained in-domain expert agent. Experiments on PHYRE and Virtual Tool support our performances across novel-task and unseen-environment settings, confirming that grounded and generalizable physical intelligence can be induced through VAORA.

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2607.06519 2026-07-08 cs.AI 新提交

FreqDepthKV: Frequency-Guided Depth Sharing for Robust KV Cache Compression in Long-Context LLM Inference

FreqDepthKV:用于长上下文语言模型推理中稳健的键值缓存压缩的频率引导深度共享

Anna Córdoba, Adam Puente Tercero, Nerea Angulo Hijo, Mar Linares Tercero, Julia Barrientos, Ainhoa Miranda, Jesús Olivera

发表机构 * Instituto de Investigación en Visión Artificial(人工视觉研究所)

AI总结 研究针对长上下文语言模型推理中键值缓存成本问题,提出FreqDepthKV方法,将相邻层键值状态分解,通过在线探测器分配缓存模式,在多基准测试中保持任务准确性,提升解码吞吐量并降低内存,实现高效压缩。

Comments 11 pages, 2 figures

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AI中文摘要

长上下文语言模型推理越来越受到键值缓存的内存和带宽成本的限制,然而激进的压缩会消除检索和多步推理所需的特定层证据。我们引入了FreqDepthKV,一种推理时缓存压缩方法,它将相邻层的键值状态分解为共享的低频深度分量和稀疏的高频残差。一个轻量级的在线探测器根据注意力头对重建敏感的注意力逻辑的贡献,将其分配到共享深度、残差深度或精确缓存模式,使压缩策略能够适应提示结构而无需重新训练。在长上下文问答、针检索、摘要和代码生成基准测试中,FreqDepthKV在显著更小的缓存预算下保持任务准确性。在32k令牌预填充窗口下,FreqDepthKV达到了58.3的精确匹配、63.0的F1、32.5的ROUGE-L和48.1的pass@1,与完整的键值缓存紧密匹配,同时优于先前的压缩缓存方法。它还将解码吞吐量提高到70.4令牌/秒,将TTFT降低到2.06秒,并将峰值键值内存降低到6.2GB,实现了3.9倍的有效压缩率。

英文摘要

Long-context LLM inference is increasingly limited by the memory and bandwidth cost of KV caches, yet aggressive compression can remove the layer-specific evidence needed for retrieval and multi-step reasoning. We introduce FreqDepthKV, an inference-time cache compression method that factorizes adjacent-layer KV states into shared low-frequency depth components and sparse high-frequency residuals. A lightweight online probe assigns attention heads to shared-depth, residual-depth, or exact cache modes according to their contribution to reconstruction-sensitive attention logits, allowing the compression policy to adapt to prompt structure without retraining. Across long-context question answering, needle retrieval, summarization, and code generation benchmarks, FreqDepthKV preserves task accuracy under substantially smaller cache budgets. With a 32k-token prefill window, FreqDepthKV reaches 58.3 Exact Match, 63.0 F1, 32.5 ROUGE-L, and 48.1 pass@1, closely matching full KV while outperforming prior compressed-cache methods. It also improves decoding throughput to 70.4 tokens/s, reduces TTFT to 2.06 seconds, and lowers peak KV memory to 6.2 GB, achieving a 3.9x effective compression ratio.

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2607.06516 2026-07-08 cs.CV 新提交

Point as Skeleton: Accumulated Point Cloud Enhanced Autoregressive Generation for Closed-Loop Autonomous Driving Simulation

点作为骨架:累积点云增强自回归生成用于闭环自动驾驶模拟

Songbur Wong, Xiaosong Jia, Junqi You, Bo Zhang, Pei Xu, Renqiu Xia, Yuping Qiu, Shaofeng Zhang, Zelin Zhao, Xuechao Yan, Yuchen Zhou, Yurui Chen, Wen Guo, Hang Xu, Junchi Yan

发表机构 * Shanghai Jiao Tong University(上海交通大学) Yinwang Intelligent Technology Co., Ltd.(银望智能科技有限公司) Fudan University(复旦大学) Shanghai Artificial Intelligence Laboratory(上海人工智能实验室) University of Science and Technology of China(中国科学技术大学) Georgia Institute of Technology(佐治亚理工学院)

AI总结 针对自动驾驶模拟难题,提出“点作为骨架”框架,通过自回归生成器结合多种条件合成视频,引入Reset-and-Roll支持闭环,用点云骨架稳定误差,实现基于nuPlan的闭环生成接口,实验证明其提升了闭环自回归生成质量。

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AI中文摘要

评估端到端自动驾驶仍具有挑战性,现有驾驶模拟方法常需在闭环交互性(如CARLA)和真实世界视觉逼真度(如nuScenes)间权衡。我们提出“点作为骨架”,一种用于状态更新自回归驾驶视频生成的生成式传感器模拟框架,其中自回归生成器根据逐步更新的自我状态、actor状态、场景地图和点云骨架条件合成视觉观测。为支持闭环展开,引入Reset-and-Roll,防止未来条件潜在状态在模拟步骤间传递。为稳定逐步自回归展开中的误差累积,引入点云骨架解耦前景和背景资产并投影到相机视图绘制点和模板深度条件。还实现基于nuPlan的渲染器级闭环生成接口。在nuScenes和nuPlan上的实验表明,“点作为骨架”提高了闭环展开期间的自回归生成质量,展示了其在视觉逼真闭环驾驶模拟中的潜力。

英文摘要

Evaluating end-to-end autonomous driving (E2E-AD) remains challenging, as existing driving simulation methods often trade off closed-loop interactivity (e.g., CARLA) and real-world visual fidelity (e.g., nuScenes). We present \textbf{\emph{Point as Skeleton}}, a generative sensor simulation framework for state-updated autoregressive driving video generation, in which an autoregressive generator synthesizes visual observations from step-wise updated ego states, actor states, scene maps, and point-cloud skeleton conditions. To support closed-loop rollout, we introduce Reset-and-Roll, which adapts rolling diffusion inference to simulation by preventing future-conditioned latent states from being committed across simulation steps. To stabilize error accumulation during step-wise autoregressive rollout, we introduce point-cloud skeletons that decouple foreground and background assets and project them into camera-view painted-point and template-depth conditions, providing appearance and geometric cues. We further implement a nuPlan-based renderer-level closed-loop generative interface for evaluating generation under ego deviations from the original log. Experiments on nuScenes and nuPlan show that \textit{Point as Skeleton} improves autoregressive generation quality during closed-loop rollout, demonstrating its potential for visually faithful closed-loop driving simulation. The code is available at https://github.com/krauwu/point-as-skeleton.

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2607.06514 2026-07-08 cs.AI cs.GT 新提交

FootsiesGym: A Fighting Game Benchmark for Two-Player Zero-Sum Imperfect-Information Games

FootsiesGym:用于两人零和不完全信息博弈的格斗游戏基准测试

Chase McDonald, Nathan Tsang, Wesley N. Kerr

发表机构 * Como Research(Como研究机构) Riot Games(Riot游戏公司)

AI总结 介绍用于两人零和不完全信息博弈的FootsiesGym开源环境,基于Footsies构建,提供矢量化模拟器,可高通量训练,描述其设计并对强化学习算法进行基准测试,还探讨了相关研究方向。

Comments Accepted to the RLC 2026 Reinforcement Learning & Video Games Workshop; 14 pages, 9 figures

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AI中文摘要

我们展示了FootsiesGym,一个用于在非平凡的两人零和不完全信息博弈中学习的开源环境。它基于HiFight的极简二维格斗游戏Footsies构建,隔离了格斗游戏中立玩法的循环、非传递性战略互动,同时足够简单以便进行有效分析。我们提供了一个矢量化模拟器,可在标准硬件上进行高通量训练,使环境可访问且可重现。我们描述了环境设计,对几种强化学习算法进行了基准测试,并讨论了由此开启的开放研究方向。代码可通过此https网址获取。

英文摘要

We present FootsiesGym, an open-source environment for learning in a non-trivial two-player, zero-sum, imperfect-information game. Built on HiFight's minimalist 2D fighting game Footsies, it isolates the cyclic, non-transitive strategic interactions of fighting game neutral play while remaining simple enough for efficient analysis. We provide a vectorized simulator that enables high-throughput training on standard hardware, making the environment accessible and reproducible. We describe the design of the environment, benchmark several reinforcement learning algorithms, and discuss open research directions it enables. The code is available at https://github.com/como-research/FootsiesGym.

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2607.06507 2026-07-08 cs.CL cs.IR 新提交

DynaKRAG: A Unified Framework for Learnable Evidence Control in Multi-Hop Retrieval-Augmented Generation

DynaKRAG:多跳检索增强生成中可学习证据控制的统一框架

Yaqi Wu, Xiaolei Guo, Chenyu Zhou, Jiaqi Huang, Xianfa Zhang, Junxu Zhang, Zhuo Yu, Zhubo Shi, Jianghao Lin, Dongdong Ge

发表机构 * Shanghai Jiao Tong University(上海交通大学) Shanghai Aircraft Manufacturing Co., Ltd.(上海飞机制造有限公司) Tongji University(同济大学)

AI总结 研究多跳检索增强生成中证据控制问题,提出DynaKRAG框架,将证据获取表述为状态条件控制,通过有效性层和控制器选择操作,实验表明该框架在多个基准测试中表现出色,证明协调检索等操作的益处。

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AI中文摘要

多跳检索增强生成(RAG)按顺序获取证据,每个新文档都可能揭示缺失的事实、桥梁实体、查询缺陷或足够的答案支持。现有方法提供了有用的操作,但通常在特定方法的管道或预定义的控制拓扑中组织它们。我们引入了DynaKRAG,将多跳证据获取表述为对原子证据操作的状态条件控制。在每个步骤中,有效性层构建可执行动作集,学习到的控制器选择下一个操作。实验结果表明,DynaKRAG在多个基准测试中优于最强的受控基线,证明了在不断演变的证据状态下协调检索、诊断和差距导向获取的好处。

英文摘要

Multi-hop retrieval-augmented generation (RAG) acquires evidence sequentially, with each new document potentially revealing missing facts, bridge entities, query defects, or sufficient support for answering. Existing methods provide useful operations such as iterative retrieval, query reformulation, evidence critique, and sufficiency judging, but typically organize them within method-specific pipelines or predefined control topologies. This leaves underexplored how to learn a shared state-conditioned policy that chooses among currently valid evidence operations. We introduce DynaKRAG, which formulates multi-hop evidence acquisition as state-conditioned control over atomic evidence operations. At each step, a validity layer constructs the executable action set, and a learned controller selects the next operation. The resulting transition updates the evidence state and may enable new operations at subsequent steps. With Qwen2.5-7B-Instruct, DynaKRAG achieves F1 scores of 0.5998 on HotpotQA, 0.5340 on 2Wiki, and 0.3061 on MuSiQue, outperforming the strongest controlled baseline on all three benchmarks. Replacing the learned controller with a uniform-valid policy reduces F1 by 3.96--5.78 points, while removing sufficiency feedback hurts all three datasets. Controlled retrieval-cap experiments further show that additional retrieval is not uniformly beneficial. Together, these results demonstrate the benefit of coordinating retrieval, diagnosis, and gap-directed acquisition under an evolving evidence state.

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2607.06504 2026-07-08 cs.AI 新提交

RMISC: A Large-scale Real-world Multivariate Corpus for Time Series Foundation Models

RMISC:用于时间序列基础模型的大规模真实世界多元语料库

Qian Sun, Yong-Ming Tian, Jia-Wei Huang, Cheng Feng, Shao-Qun Zhang

发表机构 * Nanjing University(南京大学) Siemens Data and AI Research(西门子数据与人工智能研究院) Nanjing University – Siemens Joint Research Center on Industrial AI(南京大学-西门子工业人工智能联合研究中心)

AI总结 研究真实世界多元数据对时间序列基础模型泛化性能的影响,通过建立RMISC语料库,预训练四个先进TSFMs并评估,发现纳入真实世界多元数据可提升泛化性能,为理解其对模型发展的作用提供了依据。

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AI中文摘要

近年来,使用时间序列基础模型(TSFMs)的多元建模出现,实现了先进的零样本泛化。现代多元TSFMs主要在多元合成数据上预训练,虽易扩展但可能无法捕捉现实时间序列中的复杂时间动态和交叉变量关系。为此建立了RMISC语料库,含约200个数据集和1420亿个时间点。预训练四个先进TSFMs并评估其零样本泛化能力,结果表明纳入真实世界多元数据可提高泛化性能,有助于深入理解其对更强TSFMs发展的作用。

英文摘要

Recent years have witnessed the emergence of multivariate modeling using time series foundation models (TSFMs), which achieve advanced zero-shot generalization. Modern multivariate TSFMs are predominantly pretrained on multivariate synthetic data, which is easier to scale but may fail to capture the complex temporal dynamics and cross-variable relationships present in real-world time series. This raises a key question: Whether and to what extent the leading TSFMs trained with the real-world corpus perform better than those trained with synthetic data? To answer this, we establish the RMISC corpus, a considerably large-scale, high-quality, openly accessible, real-world, and multivariate time series archive that contains around 200 datasets and 142 billion time points across diverse domains. Furthermore, we pretrain four advanced TSFMs on univariate, synthetic multivariate, and real-world multivariate data and evaluate their zero-shot generalization capabilities on standard in-distribution and out-of-distribution benchmarks. Experimental results show that incorporating real-world multivariate data predominantly improves the generalization performance for both univariate and multivariate TSFMs. These results provide a deeper understanding of how real-world multivariate data contributes to the development of stronger TSFMs.

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2607.06503 2026-07-08 cs.AI 新提交

Doomed from the Start: Early Abort of LLM Agent Episodes via a Recall-Controlled Probe Cascade

从一开始就注定失败:通过召回控制的探测级联实现大语言模型智能体情节的早期终止

Kai Ruan, Zihe Huang, Ziqi Zhou, Qianshan Wei, Xuan Wang, Hao Sun

发表机构 * Gaoling School of Artificial Intelligence, Renmin University of China(中国人民大学人工智能学院) Institute of Computing Technology, Chinese Academy of Sciences(中国科学院计算技术研究所) Duke University(杜克大学) Institute of Automation, Chinese Academy of Sciences(中国科学院自动化研究所) College of Computer Science, Zhejiang University(浙江大学计算机学院)

AI总结 研究大语言模型智能体多步任务中早期失败预测问题,提出通过召回控制的探测级联方法,能早期预测失败并转化为实用终止级联,在TextCraft模型上达到高召回目标,节省大量推理计算资源,还刻画了样本复杂度。

Comments 10 pages, 9 figures, 2 tables. Code will be released soon

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AI中文摘要

解决多步任务的大语言模型(LLM)智能体经常会陷入注定失败的轨迹,并且在失败变得明显之前继续消耗大量推理计算资源。我们表明,从智能体的内部表示中可以早期预测失败:对隐藏激活进行轻量级的每轮探测能够早在第一轮交互中就预测最终情节的失败,而仅读取智能体可观察行为的评分器几乎无法比随机猜测做得更好。我们将这个信号转化为一个实用的终止级联:每轮一个无分布校准门,联合搜索每轮的召回预算,以便最终成功的情节以用户指定的全局速率通过所有门;这种情节级别的保证在部署中很重要,因为错误终止风险会在各个门之间累积。在TextCraft上的两个智能体模型中,级联达到了从90%到97%的每个召回目标,在90%的目标下,节省了Qwen - 2.5 - 7B模型47.1%±10.3%以及Llama - 3.2 - 3B模型37.2%±8.8%的推理计算资源,是最佳单门策略的1.6 - 1.7倍。仅读取行为的相同级联节省的资源约为一半,并且在探测中添加行为特征不会带来进一步的收益:隐藏状态捕捉了行为所揭示的信息。最后,我们刻画了验证高召回目标的样本复杂度,告知从业者他们的数据能够以及无法证明支持哪些召回承诺。代码即将发布。

英文摘要

Large language model (LLM) agents solving multi-step tasks frequently commit to trajectories that are doomed to fail, yet continue to consume substantial inference compute before the failure becomes observable. We show that failure is predictable early from the agent's internal representations: lightweight per-round probes on hidden activations anticipate eventual episode failure as early as the first interaction round, where scorers reading only the agent's observable behavior are barely better than chance. We turn this signal into a practical abort cascade: one distribution-free calibrated gate per round, with per-round recall budgets jointly searched so that eventually-successful episodes survive all gates at a user-specified global rate; this episode-level guarantee is the one that matters in deployment, since false-abort risk accumulates across gates. Across two agent models on TextCraft, the cascade meets every recall target from 90% to 97% and, at the 90% target, saves 47.1% +/- 10.3% (Qwen-2.5-7B) and 37.2% +/- 8.8% (Llama-3.2-3B) of inference compute, 1.6--1.7x the best single-gate policy. An otherwise-identical cascade reading only behavior saves roughly half as much, and adding behavioral features to the probe yields no further gain: the hidden states capture what behavior reveals. Finally, we characterize the sample complexity of certifying high recall targets, telling practitioners which recall promises their data can, and provably cannot, back. The code will be released soon.

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2607.06501 2026-07-08 cs.RO 新提交

Hypothesis-driven Model Expansion under Uncertainty for Open-World Robot Planning

不确定性下用于开放世界机器人规划的假设驱动模型扩展

Anxing Xiao, Hanbo Zhang, Tianrun Hu, David Hsu

发表机构 * School of Computing, National University of Singapore(新加坡国立大学计算机学院) Smart Systems Institute, National University of Singapore(新加坡国立大学智能系统研究所)

AI总结 针对开放世界机器人规划中传统方法失效的问题,提出假设驱动模型扩展框架,利用基础模型生成假设,结合自动规划与验证反馈进行迭代优化,实现自主知识扩展,推动家用服务机器人实际部署。

Comments Accepted to Robotics: Science and Systems (RSS) 2026

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AI中文摘要

我们考虑一种开放世界规划场景,服务机器人必须在对物体和动作了解不完整的未知环境中运行。传统的具有预编程知识库的封闭世界方法在机器人遇到意外情况和任务时会失效,这对人类环境中的自主知识扩展构成了根本挑战。在这项工作中,我们提出了一个开放世界规划框架,使机器人能够自动生成、验证和更新关于其抽象世界模型的假设。我们的关键见解是明确维护不确定性感知知识扩展,并将假设验证集成到目标达成规划中。该框架利用基础模型生成关于状态和转换的初始假设,并应用自动规划来生成联合解决假设验证和任务执行的动作序列。通过迭代执行和优化,当假设被证明不正确时,机器人通过纳入基础模型的验证反馈来扩展其知识。在模拟和现实世界环境中的大量实验表明,我们的框架能够在开放世界环境中实现自主知识扩展和有效运行。这些结果表明,将来自机器人基础模型的不确定性感知模型扩展与规划相结合,推动了家用服务机器人的实际部署。

英文摘要

We consider an open-world planning setting in which service robots must operate in unknown environments with incomplete knowledge of objects and actions. Traditional closed-world approaches with pre-programmed knowledge bases fail when robots encounter unexpected situations and tasks, posing a fundamental challenge for autonomous knowledge expansion in human environments. In this work, we propose an open-world planning framework that enables robots to automatically generate, verify, and update hypotheses about their abstract world models. Our key insight is to explicitly maintain uncertainty-aware knowledge expansion and integrate hypothesis verification into goal-reaching planning. The framework leverages foundation models to generate initial hypotheses over states and transitions, and applies automated planning to produce action sequences that jointly address hypothesis verification and task execution. Through iterative execution and refinement, the robot expands its knowledge by incorporating verification feedback from the foundation models when hypotheses prove incorrect. Extensive experiments in simulated and real-world environments demonstrate that our framework enables autonomous knowledge expansion and effective operation in open-world settings. These results indicate that integrating uncertainty-aware model expansion from robot foundation models with planning advances the practical deployment of household service robots.

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2607.06499 2026-07-08 cs.RO 新提交

Clustering-Embedded Model Predictive Path Integral Control: Avoiding Averaging-Induced Failure and Enabling Efficient Cluster Selection for Dynamic Obstacles

聚类嵌入模型预测路径积分控制:避免平均诱导失效并实现动态障碍物的高效聚类选择

Zidong Liu, Kaixin Chang, Xu Chen

发表机构 * University of Washington(华盛顿大学)

AI总结 研究针对MPPI在杂乱环境中平均诱导失效问题,提出聚类嵌入MPPI框架。通过集成高保真修剪和聚类阶段重新定义控制律,利用DBSCAN等分离可行轨迹模式,结合智能选择逻辑。实验表明该方法能减轻障碍物前犹豫,缩短目标到达时间和末端执行器路径。

Journal ref IROS 2026

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AI中文摘要

随着并行计算硬件的广泛应用,基于采样的运动规划方法如模型预测路径积分(MPPI)控制在非光滑任务空间中的复杂非线性系统中变得越来越强大。然而,MPPI中的采样和前向模拟管道在杂乱环境中会出现平均诱导失效,即重要性加权更新会平均不兼容的展开,当障碍物直接在前方时会导致犹豫甚至碰撞。本文提出了聚类嵌入MPPI(CE-MPPI)框架,该框架从架构上解决了标准MPPI在非凸环境中固有的平均诱导失效问题。CE-MPPI通过集成高保真修剪和聚类阶段重新定义控制律,利用基于密度的空间聚类应用与噪声(DBSCAN)以及从碰撞衍生参考点提取的新颖几何方向特征,将可行轨迹模式与不可行展开的噪声分离,并结合智能选择逻辑。二维JAX加速模拟实验表明,CE-MPPI减轻了障碍物前方的犹豫,避免了在动态场景中与移动障碍物的持续耦合。特别是在Isaac Gym中对具有CUDA并行展开的6自由度UR5e机械手进行的实际测试中,目标到达时间减少了48%,末端执行器路径缩短了12%。

英文摘要

With the widespread availability of parallel computing hardware, sampling-based motion planning methods such as Model Predictive Path Integral (MPPI) control have become increasingly powerful for complex nonlinear systems in non-smooth task spaces. However, the sampling and forward-simulation pipeline in MPPI suffers from averaging-induced failure in cluttered environments, where the importance-weighted update averages incompatible rollouts and leads to hesitation or even collision when an obstacle lies directly ahead. This paper proposes Clustering-Embedded MPPI (CE-MPPI), a framework that architecturally resolves the averaging-induced failures inherent in standard MPPI within non-convex environments. Rather than simply mitigating interference, CE-MPPI redefines the control law by integrating a high-fidelity pruning and clustering stage. By leveraging density-based spatial clustering of applications with noise (DBSCAN) alongside a novel geometric direction feature that is extracted from collision-derived reference points, the system isolates feasible trajectory modes from the noise of infeasible rollouts. This is paired with an intelligent selection logic that optimizes for minimum cost in static scenes while actively steering opposite to obstacle flux in dynamic environments. Experiments in 2-D JAX-accelerated simulations show that CE-MPPI alleviates obstacle-front hesitation and avoids persistent coupling with moving obstacles in dynamic scenes. In particular, real-world tests on a 6-DoF UR5e manipulator with CUDA-parallel rollouts in Isaac Gym achieve a 48\% reduction in time-to-goal and a 12\% shorter end-effector path.

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2607.06497 2026-07-08 cs.LG q-bio.QM stat.ML 新提交

EntroPath: Maximum Entropy Path Ensemble Embedding for Manifold Learning

EntroPath:用于流形学习的最大熵路径集成嵌入

Przemysław Rola

发表机构 * Krakow University of Economics(克拉科夫经济大学)

AI总结 研究提出EntroPath流形学习方法,基于最大熵随机游走构建差异,通过Varadhan热核公式使自由能差异在短时间极限下收敛于平方测地线距离,在合成流形和单细胞基准测试中表现良好,尤其在特定流形上优势明显。

Comments 40 pages, 15 figures. Code: https://github.com/rpprzemek/entropath

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AI中文摘要

我们介绍了EntroPath,一种通过扩散路径集成从数据图中恢复测地线几何的流形学习方法。许多现有的基于图的嵌入方法要么依赖局部归一化随机游走,要么依赖最短路径距离,前者会使扩散集中在密集采样区域,后者对图中的虚假捷径边敏感。EntroPath则基于最大熵随机游走构建差异,聚合点之间k步路径的完整集合。通过Varadhan热核公式,我们表明在短时间极限下,由此产生的自由能差异收敛于平方测地线距离。扩散深度k在局部邻域结构和全局流形几何之间平滑插值,对称核允许精确的Gram分解将EntroPath与核方法联系起来。我们还通过地标投影和扩散势伪时间提供了可扩展的扩展。在合成流形和单细胞基准测试中,EntroPath始终匹配或优于基于扩散和最短路径的方法,在局部结构度量上与邻域保持嵌入(UMAP、t-SNE)具有竞争力。在具有非均匀采样密度和分离良好的分支轨迹的流形上,其优势最为明显,路径集成扩散更忠实地保留了潜在的测地线几何。

英文摘要

We introduce EntroPath, a manifold learning method that recovers geodesic geometry from data graphs through ensembles of diffusion paths. Many existing graph-based embeddings rely either on locally normalised random walks or on shortest-path distances. The former can concentrate diffusion in densely sampled regions, while the latter are sensitive to spurious shortcut edges in the graph. EntroPath instead builds its dissimilarities from the maximum entropy random walk (MERW), which aggregates the full ensemble of k-step paths between points rather than relying on any single trajectory. We show that the resulting free-energy dissimilarity converges to squared geodesic distance in the short-time limit, via Varadhan's heat-kernel formula. The diffusion depth k interpolates smoothly between local neighbourhood structure and global manifold geometry, and the symmetrised kernel admits an exact Gram factorisation connecting EntroPath to kernel methods. We further provide scalable extensions via landmark projection and diffusion-potential pseudotime. Across synthetic manifolds and single-cell benchmarks, EntroPath consistently matches or outperforms diffusion- and shortest-path-based methods, while remaining competitive with neighbourhood-preserving embeddings (UMAP, t-SNE) on local-structure metrics. Its gains are most pronounced on manifolds with non-uniform sampling density and well-separated branching trajectories, where path-ensemble diffusion more faithfully preserves the underlying geodesic geometry.

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