arXivDaily arXiv每日学术速递 周一至周五更新
重置
全部学科分类 2094
热门方向导航
2603.28387 2026-06-19 cs.AI cs.LG 版本更新

The Scaffold Effect: How Prompt Framing Drives Apparent Multimodal Gains in Clinical VLM Evaluation

脚手架效应:提示框架如何驱动临床VLM评估中的表面多模态增益

Doan Nam Long Vu, Simone Balloccu

发表机构 * Technical University of Darmstadt(达姆施塔特技术大学)

AI总结 研究发现,在临床VLM评估中,提示中提及MRI可用性即可解释70-80%的性能提升,与图像数据是否存在无关,这种“脚手架效应”揭示了表面评估无法反映真实多模态推理能力。

详情
AI中文摘要

可信的临床AI要求性能提升反映真实的证据整合而非表面伪影。我们在两个临床神经影像队列\textsc{FOR2107}(情感障碍)和\textsc{OASIS-3}(认知衰退)上评估了12个开源视觉语言模型(VLM)的二分类性能。两个数据集都包含结构MRI数据,但这些数据不携带可靠的个体级诊断信号。在这些条件下,较小的VLM在引入神经影像上下文后F1分数提升高达58%,蒸馏模型变得与规模大一个数量级的模型相当。对比置信度分析显示,仅仅在任务提示中\textit{提及}MRI可用性就解释了70-80%的转变,与影像数据是否存在无关,这是模态坍塌的一个领域特定实例,我们称之为\textit{脚手架效应}。专家评估揭示了在所有条件下捏造基于神经影像的正当理由,而偏好对齐虽然消除了引用MRI的行为,却使两种条件都退化为随机基线。我们的发现表明,表面评估不足以作为多模态推理的指标,这对VLM在临床环境中的部署有直接影响。

英文摘要

Trustworthy clinical AI requires that performance gains reflect genuine evidence integration rather than surface-level artifacts. We evaluate 12 open-weight vision-language models (VLMs) on binary classification across two clinical neuroimaging cohorts, \textsc{FOR2107} (affective disorders) and \textsc{OASIS-3} (cognitive decline). Both datasets come with structural MRI data that carries no reliable individual-level diagnostic signal. Under these conditions, smaller VLMs exhibit gains of up to 58\% F1 upon introduction of neuroimaging context, with distilled models becoming competitive with counterparts an order of magnitude larger. A contrastive confidence analysis reveals that merely \emph{mentioning} MRI availability in the task prompt accounts for 70-80\% of this shift, independent of whether imaging data is present, a domain-specific instance of modality collapse we term the \emph{scaffold effect}. Expert evaluation reveals fabrication of neuroimaging-grounded justifications across all conditions, and preference alignment, while eliminating MRI-referencing behavior, collapses both conditions toward random baseline. Our findings demonstrate that surface evaluations are inadequate indicators of multimodal reasoning, with direct implications for the deployment of VLMs in clinical settings.

2602.04037 2026-06-19 cs.LG cs.RO 版本更新

DADP: Domain Adaptive Diffusion Policy

DADP: 领域自适应扩散策略

Pengcheng Wang, Qinghang Liu, Haotian Lin, Yiheng Li, Guojian Zhan, Masayoshi Tomizuka, Yixiao Wang

发表机构 * University of California, Berkeley, California, USA(加州大学伯克利分校) Peking University, Beijing, China(北京大学) Tsinghua University, Beijing, China(清华大学)

AI总结 提出DADP,通过无监督解耦和领域感知扩散注入,实现跨动态环境的鲁棒零样本适应,在运动与操控任务上超越先前方法。

详情
AI中文摘要

学习能够泛化到未见过的转移动态的领域自适应策略,仍然是基于学习的控制中的一个基本挑战。通过领域表示学习来捕获领域特定信息,从而实现领域感知决策,已经取得了实质性进展。我们分析了通过动态预测学习领域表示的过程,发现选择与当前步骤相邻的上下文会导致学习到的表示将静态领域信息与变化的动态属性纠缠在一起。这种混合可能会混淆条件策略,从而限制零样本适应。为了应对这一挑战,我们提出了DADP(领域自适应扩散策略),通过无监督解耦和领域感知扩散注入实现鲁棒适应。首先,我们引入了滞后上下文动态预测,这是一种将未来状态估计条件化在历史偏移上下文上的策略;通过增加这个时间间隔,我们通过过滤掉瞬态属性来无监督地解耦静态领域表示。其次,我们通过偏置先验分布和重新制定扩散目标,将学习到的领域表示直接集成到生成过程中。在涉及运动和操控的具有挑战性的基准测试上的大量实验表明,DADP相对于先前方法具有优越的性能和泛化能力。更多可视化结果可在此https URL上获得。

英文摘要

Learning domain adaptive policies that can generalize to unseen transition dynamics, remains a fundamental challenge in learning-based control. Substantial progress has been made through domain representation learning to capture domain-specific information, thus enabling domain-aware decision making. We analyze the process of learning domain representations through dynamical prediction and find that selecting contexts adjacent to the current step causes the learned representations to entangle static domain information with varying dynamical properties. Such mixture can confuse the conditioned policy, thereby constraining zero-shot adaptation. To tackle the challenge, we propose DADP (Domain Adaptive Diffusion Policy), which achieves robust adaptation through unsupervised disentanglement and domain-aware diffusion injection. First, we introduce Lagged Context Dynamical Prediction, a strategy that conditions future state estimation on a historical offset context; by increasing this temporal gap, we unsupervisedly disentangle static domain representations by filtering out transient properties. Second, we integrate the learned domain representations directly into the generative process by biasing the prior distribution and reformulating the diffusion target. Extensive experiments on challenging benchmarks across locomotion and manipulation demonstrate the superior performance, and the generalizability of DADP over prior methods. More visualization results are available on the https://outsider86.github.io/DomainAdaptiveDiffusionPolicy/.

2512.00850 2026-06-19 cs.CV 版本更新

Smol-GS: Compact Representations for Abstract 3D Gaussian Splatting

Smol-GS: 抽象3D高斯溅射的紧凑表示

Haishan Wang, Mohammad Hassan Vali, Arno Solin

发表机构 * ELLIS Institute Finland(芬兰ELLIS研究所) Aalto University(阿alto大学)

AI总结 提出Smol-GS方法,通过八叉树位置编码和熵压缩学习高效溅射特征,实现3D高斯溅射的紧凑表示,在保持渲染质量的同时大幅降低存储。

详情
AI中文摘要

我们提出Smol-GS,一种学习3D高斯溅射(3DGS)紧凑表示的新方法。我们的方法学习高效的逐溅射特征来建模3D空间,这些特征捕获抽象线索,包括颜色、不透明度、变换和材质属性。我们提出八叉树导出的位置编码,显式建模空间局部性并增强表示效率。我们进一步应用基于熵的压缩来利用特征冗余,并使用递归体素层次压缩溅射坐标。这种设计在保持表示灵活性的同时,实现了数量级的存储减少。Smol-GS在标准基准测试上以高渲染质量实现了最先进的压缩性能。

英文摘要

We present Smol-GS, a novel method for learning compact representations for 3D Gaussian Splatting (3DGS). Our approach learns highly efficient splat-wise features to model 3D space, which capture abstracted cues, including color, opacity, transformation, and material properties. We propose octree-derived positional encoding, which explicitly models spatial locality and enhances representation efficiency. We further apply entropy-based compression to exploit feature redundancy and compress splat coordinates using a recursive voxel hierarchy. This design enables orders-of-magnitude reduction in storage while preserving representation flexibility. Smol-GS achieves state-of-the-art compression performance on standard benchmarks with high-level rendering quality.

2505.17006 2026-06-19 cs.CV cs.RO 版本更新

CoMo: Learning Continuous Latent Motion from Internet Videos for Scalable Robot Learning

CoMo: 从互联网视频中学习连续潜在运动以实现可扩展的机器人学习

Jiange Yang, Yansong Shi, Haoyi Zhu, Mingyu Liu, Kaijing Ma, Yating Wang, Gangshan Wu, Tong He, Limin Wang

发表机构 * Nanjing University(南京大学) Shanghai AI Lab(上海人工智能实验室) University of Science and Technology of China(中国科学技术大学) Zhejiang University(浙江大学) Fudan University(复旦大学) Tongji University(同济大学)

AI总结 提出CoMo方法,通过早期时间差分和时序对比学习从互联网视频中学习连续潜在运动,避免离散化信息损失,实现零样本泛化生成伪动作标签,联合训练策略在仿真和真实实验中表现优异。

Comments CVPR 2026

详情
AI中文摘要

从互联网视频中无监督学习潜在运动对于机器人学习至关重要。现有的离散方法通常通过小码本大小的向量量化来减轻提取过多静态背景导致的捷径学习,但它们存在信息损失,难以捕捉更复杂和细粒度的动态。此外,离散潜在运动与连续机器人动作之间存在固有分布差距,阻碍了统一策略的联合学习。我们提出CoMo,旨在从互联网规模视频中学习更精确的连续潜在运动。CoMo采用早期时间差分(Td)机制来增加捷径学习难度并显式增强运动线索。此外,为确保潜在运动更好地捕捉有意义的背景,我们进一步提出时序对比学习(Tcl)方案。具体地,正样本对通过小的未来帧时间偏移构建,而负样本对则通过直接反转时间方向形成。所提出的Td和Tcl协同工作,有效确保潜在运动更好地关注前景并增强运动线索。关键的是,CoMo表现出强大的零样本泛化能力,使其能够为未见过的视频生成有效的伪动作标签。大量的仿真和真实实验表明,使用CoMo伪动作标签联合训练的策略在扩散和自回归架构下均实现了优越性能。

英文摘要

Unsupervised learning of latent motion from Internet videos is crucial for robot learning. Existing discrete methods generally mitigate the shortcut learning caused by extracting excessive static backgrounds through vector quantization with a small codebook size. However, they suffer from information loss and struggle to capture more complex and fine-grained dynamics. Moreover, there is an inherent gap between the distribution of discrete latent motion and continuous robot action, which hinders the joint learning of a unified policy. We propose CoMo, which aims to learn more precise continuous latent motion from internet-scale videos. CoMo employs an early temporal difference (Td) mechanism to increase the shortcut learning difficulty and explicitly enhance motion cues. Additionally, to ensure latent motion better captures meaningful foregrounds, we further propose a temporal contrastive learning (Tcl) scheme. Specifically, positive pairs are constructed with a small future frame temporal offset, while negative pairs are formed by directly reversing the temporal direction. The proposed Td and Tcl work synergistically and effectively ensure that the latent motion focuses better on the foreground and reinforces motion cues. Critically, CoMo exhibits strong zeroshot generalization, enabling it to generate effective pseudo action labels for unseen videos. Extensive simulated and real-world experiments show that policies co-trained with CoMo pseudo action labels achieve superior performance with both diffusion and auto-regressive architectures.

2603.25702 2026-06-19 cs.CL 版本更新

S2D2: Fast Decoding for Diffusion LLMs via Training-Free Self-Speculation

S2D2:通过免训练自我推测实现扩散LLM的快速解码

Ligong Han, Hao Wang, Han Gao, Kai Xu, Akash Srivastava

发表机构 * Red Hat AI Innovation(红帽AI创新) MIT-IBM Watson AI Lab(MIT-IBM沃森人工智能实验室) Iowa State University(爱荷华州立大学) Core AI, IBM(IBM核心AI)

AI总结 提出S2D2,一种免训练的自我推测解码框架,通过将块扩散模型在块大小为1时变为自回归模型,实现草稿与验证角色复用,在不增加训练或测试计算下提升解码速度与准确性。

Comments Code is available at https://github.com/phymhan/S2D2

详情
AI中文摘要

块扩散语言模型通过结合块级自回归解码与块内并行去噪,为超越自回归生成提供了一条有前景的路径。然而,在实际加速所需的少步数场景中,标准的置信度阈值解码往往脆弱:激进的阈值损害质量,而保守的阈值则需要不必要的去噪步骤。现有解决此问题的方法要么需要额外训练,要么增加测试时计算。我们提出S2D2,一种用于块扩散语言模型的免训练自我推测解码框架。我们的关键观察是,当块大小减小到1时,块扩散模型变为自回归模型,从而允许相同的预训练模型同时充当草稿模型和验证模型。S2D2在标准块扩散解码中插入一个推测验证步骤,并使用轻量级路由策略来决定何时验证值得其成本。这产生了一种混合解码轨迹,其中扩散并行提出令牌,而自回归模式充当局部序列级评判器。在三个主流块扩散家族中,S2D2在准确性-速度权衡上持续优于强置信度阈值基线。在SDAR上,我们观察到相比自回归解码高达4.7倍加速,相比调优的动态解码基线高达1.57倍加速,同时准确性提升高达4.5个点。在LLaDA2.1-Mini上,S2D2与内置自校正保持互补,包括在保守设置下比静态基线快4.4倍且准确性略高。

英文摘要

Block-diffusion language models offer a promising path toward faster-than-autoregressive generation by combining block-wise autoregressive decoding with within-block parallel denoising. However, in the few-step regime needed for practical acceleration, standard confidence-thresholded decoding is often brittle: aggressive thresholds hurt quality, while conservative thresholds require unnecessary denoising steps. Existing approaches that address this issue either require additional training or incur extra test-time compute. We present S2D2, a training-free self-speculative decoding framework for block-diffusion language models. Our key observation is that a block-diffusion model becomes autoregressive when the block size is reduced to one, allowing the same pretrained model to act as both drafter and verifier. S2D2 inserts a speculative verification step into standard block-diffusion decoding and uses lightweight routing policies to decide when verification is worth its cost. This yields a hybrid decoding trajectory in which diffusion proposes tokens in parallel, while the autoregressive mode acts as a local sequence-level critic. Across three mainstream block-diffusion families, S2D2 consistently improves the accuracy-speed tradeoff over strong confidence-thresholding baselines. On SDAR, we observe up to $4.7\times$ speedup over autoregressive decoding, and up to $1.57\times$ over a tuned dynamic decoding baseline while improving accuracy by up to $4.5$ points. On LLaDA2.1-Mini, S2D2 remains complementary to built-in self-correction, including a conservative setting where it is $4.4\times$ faster than the static baseline with slightly higher accuracy.

2603.12252 2026-06-19 cs.CV cs.CL 版本更新

EndoCoT: Scaling Endogenous Chain-of-Thought Reasoning in Diffusion Models

EndoCoT:扩散模型中的内生思维链推理扩展

Xuanlang Dai, Yujie Zhou, Long Xing, Jiazi Bu, Xilin Wei, Yuhong Liu, Beichen Zhang, Kai Chen, Yuhang Zang

发表机构 * Shanghai AI Laboratory(上海人工智能实验室) Xi’an Jiaotong University(西安交通大学) University of Science and Technology of China(中国科学技术大学) Shanghai Jiaotong University(上海交通大学) Fudan University(复旦大学) The Chinese University of Hong Kong(香港中文大学)

AI总结 提出EndoCoT框架,通过迭代思维引导模块激活MLLM的推理潜力,并利用终端思维接地模块确保推理轨迹与文本监督对齐,使DiT逐步执行复杂任务,在多个基准上平均准确率达92.1%。

Comments 23 pages, 18 figures, The code and dataset are publicly available at https://internlm.github.io/EndoCoT/

详情
AI中文摘要

最近,多模态大语言模型(MLLMs)被广泛集成到扩散框架中,主要作为文本编码器来处理空间推理等复杂任务。然而,这种范式存在两个关键限制:(i)MLLM文本编码器表现出不足的推理深度。单步编码无法激活思维链过程,而这对MLLM为复杂任务提供准确指导至关重要。(ii)在解码过程中,指导保持不变。即使有正确的MLLM编码,解码过程中的不变指导也阻止了DiT逐步将复杂指令分解为可执行的去噪步骤。为此,我们提出了内生思维链(EndoCoT),一种新颖的框架,首先通过迭代思维引导模块迭代细化潜在思维状态来激活MLLM的推理潜力,然后将这些状态桥接到DiT的去噪过程。其次,应用终端思维接地模块,通过将最终状态与真实答案对齐,确保推理轨迹保持与文本监督的接地。通过这两个组件,MLLM文本编码器提供精心推理的指导,使DiT能够逐步执行并最终以逐步方式解决复杂任务。在多个基准(如Maze、TSP、VSP和Sudoku)上的广泛评估实现了平均准确率92.1%,比最强基线高出8.3个百分点。代码和数据集在此https URL公开。

英文摘要

Recently, Multimodal Large Language Models (MLLMs) have been widely integrated into diffusion frameworks primarily as text encoders to tackle complex tasks such as spatial reasoning. However, this paradigm suffers from two critical limitations: (i) MLLMs text encoder exhibits insufficient reasoning depth. Single-step encoding fails to activate the Chain-of-Thought process, which is essential for MLLMs to provide accurate guidance for complex tasks. (ii) The guidance remains invariant during the decoding process. Invariant guidance during decoding prevents DiT from progressively decomposing complex instructions into actionable denoising steps, even with correct MLLM encodings. To this end, we propose Endogenous Chain-of-Thought (EndoCoT), a novel framework that first activates MLLMs' reasoning potential by iteratively refining latent thought states through an iterative thought guidance module, and then bridges these states to the DiT's denoising process. Second, a terminal thought grounding module is applied to ensure the reasoning trajectory remains grounded in textual supervision by aligning the final state with ground-truth answers. With these two components, the MLLM text encoder delivers meticulously reasoned guidance, enabling the DiT to execute it progressively and ultimately solve complex tasks in a step-by-step manner. Extensive evaluations across diverse benchmarks (e.g., Maze, TSP, VSP, and Sudoku) achieve an average accuracy of 92.1%, outperforming the strongest baseline by 8.3 percentage points. The code and dataset are publicly available at https://internlm.github.io/EndoCoT/.

2603.22922 2026-06-19 cs.CL 版本更新

Quality Over Clicks: Iterative Reinforcement Learning for Early-Stage E-Commerce Query Suggestion

质量优于点击:面向早期电商查询建议的迭代强化学习

Qi Sun, Kejun Xiao, Huaipeng Zhao, Tao Luo, Xiaoyi Zeng

发表机构 * Alibaba International Digital Commercial Group(阿里巴巴国际数字商业集团)

AI总结 针对早期部署场景点击反馈稀疏的问题,提出质量优先的迭代强化学习框架QualEQS,从可回答性、事实性和信息增益三个维度优化查询建议质量,通过候选建议的组级分歧识别模糊上下文并挖掘难例进行迭代改进,在真实电商系统中ChatPV提升6.81%。

详情
AI中文摘要

现有的对话系统依赖查询建议来增强用户参与度。最近的方法主要使用点击率(CTR)模型优化生成模型,以与用户偏好对齐。然而,这些方法在早期部署场景中效果较差,因为点击反馈稀疏且不足以训练可靠的CTR模型。为弥补这一差距,我们提出了QualEQS,一个面向电商查询建议的质量优先迭代强化学习框架。我们将可操作的建议质量形式化为三个直接影响下游可用性的维度:可回答性、事实性和信息增益。为了在没有点击监督的情况下从在线流量中持续改进,我们进一步提出候选建议之间的组级分歧,以识别模糊的查询上下文并挖掘难训练案例进行迭代优化。我们还引入了EQS-Benchmark,一个包含16,949个真实电商查询的数据集,用于离线训练和评估。实验表明,我们基于质量的离线指标与在线性能强相关,为稀疏反馈部署提供了一种实用的评估方法。在离线和在线设置中,QualEQS均持续优于强基线,在真实企业级对话购物助手系统中,在线ChatPV提升了6.81%。

英文摘要

Existing dialogue systems rely on query suggestion to enhance user engagement. Recent approaches mainly optimize generative models using click-through rate (CTR) models to align with user preferences. However, these methods are less effective in early-stage deployment scenarios, where click feedback is sparse and insufficient for training a reliable CTR model. To bridge this gap, we propose QualEQS, a quality-first iterative reinforcement learning framework for e-commerce query suggestion. We formalize actionable suggestion quality along three dimensions that directly affect downstream usability: answerability, factuality, and information gain. To continuously improve from online traffic without click supervision, we further propose group-level disagreement among candidate suggestions to identify ambiguous query contexts and mine hard training cases for iterative refinement. We also introduce EQS-Benchmark, a dataset of 16,949 real-world e-commerce queries for offline training and evaluation. Experiments show that our quality-based offline metrics correlate strongly with online performance, providing a practical evaluation recipe for sparse-feedback deployment. In both offline and online settings, QualEQS consistently outperforms strong baselines, yielding a 6.81% improvement in online ChatPV in a real-world enterprise-level conversational shopping assistant system.

2603.16606 2026-06-19 cs.CL 版本更新

Omnilingual SONAR: Cross-Lingual and Cross-Modal Sentence Embeddings Bridging Massively Multilingual Text and Speech

Omnilingual SONAR:跨语言与跨模态句子嵌入,连接大规模多语言文本与语音

Omnilingual SONAR Team, João Maria Janeiro, Pere-Lluís Huguet Cabot, Ioannis Tsiamas, Yen Meng, Vivek Iyer, Guillem Ramírez, Loic Barrault, Belen Alastruey, Xiang "Tony" Cao, Yu-An Chung, Marta R. Costa-Jussa, David Dale, Kevin Heffernan, Jaehyeong Jo, Artyom Kozhevnikov, Alexandre Mourachko, Christophe Ropers, Holger Schwenk, Paul-Ambroise Duquenne

发表机构 * FAIR at Meta(Meta的FAIR)

AI总结 提出OmniSONAR模型,通过渐进式训练和教师-学生蒸馏,在数千种语言上实现文本、语音、代码和数学表达式的统一语义嵌入,在跨语言检索和翻译任务上显著降低错误率,并支持零样本语音翻译。

详情
AI中文摘要

跨语言句子编码器通常只覆盖几百种语言,并且常常为了更强的对齐而牺牲下游质量,限制了它们的采用。我们引入了OmniSONAR,一个新的全语言、跨语言和跨模态句子嵌入模型家族,它原生地将文本、语音、代码和数学表达式嵌入到单一语义空间中,同时在数千种语言(从高资源到极低资源变体)的规模上提供最先进的下游性能。为了在不发生表示崩溃的情况下达到这一规模,我们使用了渐进式训练。我们首先使用LLM初始化的编码器-解码器,结合token级解码、新颖的分裂softmax对比损失和合成硬负样本,为200种语言学习一个强大的基础空间。在此基础上,我们通过两阶段教师-学生编码器蒸馏框架扩展到数千种语言变体。最后,我们通过将177种口语无缝映射到该空间,展示了该空间的跨模态可扩展性。OmniSONAR将200种语言的FLORES数据集上的跨语言相似性搜索错误减半,并在1560种语言的BIBLE基准上将错误减少了15倍。它还实现了强大的翻译性能,在多语言基准上优于NLLB-3B,并在1560种语言到英语的BIBLE翻译上比先前模型(包括更大的LLM)高出15个chrF++点。OmniSONAR在MTEB和XLCoST上也表现强劲。对于语音,OmniSONAR实现了43%更低的相似性搜索错误,并达到了SeamlessM4T语音到文本质量的97%,尽管对于翻译是零样本(仅在ASR数据上训练)。最后,通过训练一个编码器-解码器LM Spectrum,仅使用英语文本处理OmniSONAR嵌入序列,我们为复杂的下游任务解锁了向数千种语言和语音的高性能迁移。

英文摘要

Cross-lingual sentence encoders typically cover only a few hundred languages and often trade downstream quality for stronger alignment, limiting their adoption. We introduce OmniSONAR, a new family of omnilingual, cross-lingual and cross-modal sentence embedding models that natively embed text, speech, code, and mathematical expressions in a single semantic space, while delivering state-of-the-art downstream performance at the scale of thousands of languages, from high-resource to extremely low-resource varieties. To reach this scale without representation collapse, we use progressive training. We first learn a strong foundational space for 200 languages with an LLM-initialized encoder-decoder, combining token-level decoding with a novel split-softmax contrastive loss and synthetic hard negatives. Building on this foundation, we expand to several thousands language varieties via a two-stage teacher-student encoder distillation framework. Finally, we demonstrate the cross-modal extensibility of this space by seamlessly mapping 177 spoken languages into it. OmniSONAR halves cross-lingual similarity search error on the 200-language FLORES dataset and reduces error by a factor of 15 on the 1,560-language BIBLE benchmark. It also enables strong translation, outperforming NLLB-3B on multilingual benchmarks and exceeding prior models (including much larger LLMs) by 15 chrF++ points on 1,560 languages into English BIBLE translation. OmniSONAR also performs strongly on MTEB and XLCoST. For speech, OmniSONAR achieves a 43% lower similarity-search error and reaches 97% of SeamlessM4T speech-to-text quality, despite being zero-shot for translation (trained only on ASR data). Finally, by training an encoder-decoder LM, Spectrum, exclusively on English text processing OmniSONAR embedding sequences, we unlock high-performance transfer to thousands of languages and speech for complex downstream tasks.

2603.15106 2026-06-19 cs.AI 版本更新

PrototypeNAS: Rapid Design of Deep Neural Networks for Microcontroller Units

PrototypeNAS: 微控制器单元深度神经网络的快速设计

Mark Deutel, Simon Geis, Axel Plinge

发表机构 * Fraunhofer Institute for Integrated Circuits(弗劳恩霍夫集成电路研究所)

AI总结 提出零样本NAS方法PrototypeNAS,通过解耦设计与训练、多架构搜索空间、集成零样本代理和超体积子集选择,快速为不同MCU定制DNN,在图像分类等任务上分钟级找到小模型且精度接近大模型。

Comments Accepted at ECML-PKDD 2026. 18 pages, 7 figures, 4 tables. This work was funded by the European Commission as part of the MANOLO project under the Horizon Europe programme Grant Agreement No.101135782

详情
AI中文摘要

在具有不同硬件约束的边缘设备上实现高效的深度神经网络推理是一项具有挑战性的任务,通常需要为每个设备单独定制DNN架构。为避免大量人工努力,可以使用神经架构搜索。然而,许多现有的NAS方法资源密集且耗时,因为它们需要从头开始训练许多不同的DNN。此外,它们没有考虑目标系统的资源约束。为了解决这些缺点,我们提出了PrototypeNAS,一种零样本NAS方法,用于加速和自动化DNN的选择、压缩和针对不同目标微控制器单元的专门化。我们提出了一种新颖的三步搜索方法,将DNN设计和专门化与给定目标平台上的DNN训练解耦。首先,我们提出了一种新的搜索空间,不仅从单个大型架构中裁剪出较小的DNN,而且结合了多种架构类型的结构优化,以及它们的剪枝和量化配置的优化。其次,我们探索在优化过程中使用集成零样本代理而不是单个代理。第三,我们提出使用超体积子集选择从多目标优化的帕累托前沿中提取DNN架构,这些架构代表了准确性和FLOPs之间最有意义的权衡。我们在三个不同任务(图像分类、时间序列分类和目标检测)的12个数据集上评估了PrototypeNAS的有效性。我们的结果表明,PrototypeNAS能够在几分钟内识别出足够小、可部署在现成MCU上的DNN模型,并且仍然达到与大型DNN模型相当的精度。

英文摘要

Enabling efficient deep neural network (DNN) inference on edge devices with different hardware constraints is a challenging task that typically requires DNN architectures to be specialized for each device separately. To avoid the huge manual effort, one can use neural architecture search (NAS). However, many existing NAS methods are resource-intensive and time-consuming because they require the training of many different DNNs from scratch. Furthermore, they do not take the resource constraints of the target system into account. To address these shortcomings, we propose PrototypeNAS, a zero-shot NAS method to accelerate and automate the selection, compression, and specialization of DNNs to different target microcontroller units (MCUs). We propose a novel three-step search method that decouples DNN design and specialization from DNN training for a given target platform. First, we present a novel search space that not only cuts out smaller DNNs from a single large architecture, but instead combines the structural optimization of multiple architecture types, as well as optimization of their pruning and quantization configurations. Second, we explore the use of an ensemble of zero-shot proxies during optimization instead of a single one. Third, we propose the use of Hypervolume subset selection to distill DNN architectures from the Pareto front of the multi-objective optimization that represent the most meaningful tradeoffs between accuracy and FLOPs. We evaluate the effectiveness of PrototypeNAS on 12 different datasets in three different tasks: image classification, time series classification, and object detection. Our results demonstrate that PrototypeNAS is able to identify DNN models within minutes that are small enough to be deployed on off-the-shelf MCUs and still achieve accuracies comparable to the performance of large DNN models.

2603.09420 2026-06-19 cs.CV cs.AI cs.RO 版本更新

Class-Incremental Motion Forecasting

类别增量运动预测

Nicolas Schischka, Nikhil Gosala, B Ravi Kiran, Senthil Yogamani, Abhinav Valada

发表机构 * Department of Computer Science, University of Freiburg, Germany(弗赖堡大学计算机科学系) Qualcomm SARL France(法国.qualcomm SARL) Automated Driving, Qualcomm Technologies, Inc.(qualcomm Technologies, Inc. 自动驾驶部门)

AI总结 提出类别增量运动预测新任务,通过端到端框架结合伪标签与开放词汇分割,利用3D-2D投票机制和查询特征方差重放策略,缓解灾难性遗忘并适应新类别。

Comments V3: Change title. Add further experiments

详情
AI中文摘要

运动预测使自动驾驶车辆能够通过预测动态智能体的未来轨迹来预判场景演化。然而,现有方法通常假设一个封闭世界设定,具有固定的对象分类法并依赖高质量感知,限制了其在现实世界中的应用,因为现实世界中感知不完美,且新对象类别可能随时间出现。在这项工作中,我们引入了类别增量运动预测,这是一个新颖的设定,其中新对象类别随时间顺序引入,并且直接从相机图像预测未来对象轨迹。我们提出了首个针对该设定的端到端框架,该框架适应新引入的类别,同时减轻对先前学习类别的灾难性遗忘。我们的方法为已知类别生成运动预测伪标签,并将其与开放词汇分割模型的2D实例掩码进行匹配。这种3D到2D关键点投票机制过滤不一致和过度自信的预测,而基于查询特征方差的重放策略采样信息丰富的过去序列以保留先验知识。在nuScenes和Argoverse 2上的广泛评估表明,我们的方法成功地在已知类别上保持性能,同时有效适应新类别。我们进一步展示了向真实世界驾驶的零样本迁移,并表明该框架自然地扩展到nuScenes和NeuroNCAP上的开环和闭环端到端类别增量规划。代码和模型将在该https URL上公开。

英文摘要

Motion forecasting enables autonomous vehicles to anticipate scene evolution by predicting the future trajectories of dynamic agents. However, existing approaches typically assume a closed-world setting with a fixed object taxonomy and access to high-quality perception, limiting their applicability in the real world where perception is imperfect, and new object classes may emerge over time. In this work, we introduce class-incremental motion forecasting, a novel setting in which new object classes are sequentially introduced over time and future object trajectories are predicted directly from camera images. We propose the first end-to-end framework for this setting, which adapts to newly introduced classes while mitigating catastrophic forgetting of previously learned ones. Our method generates motion forecasting pseudo-labels for known classes and matches them with 2D instance masks from an open-vocabulary segmentation model. This 3D-to-2D keypoint voting mechanism filters inconsistent and overconfident predictions, while a query feature variance-based replay strategy samples informative past sequences to preserve prior knowledge. Extensive evaluations on nuScenes and Argoverse 2 show that our approach successfully preserves performance on known classes while effectively adapting to novel ones. We further demonstrate zero-shot transfer to real-world driving and show that the framework extends naturally to open- and closed-loop end-to-end class-incremental planning on nuScenes and NeuroNCAP. Code and models will be made publicly available at https://omen.cs.uni-freiburg.de.

2602.05533 2026-06-19 cs.AI 版本更新

Conditional Diffusion Guidance under Hard Constraint: A Stochastic Analysis Approach

硬约束下的条件扩散引导:一种随机分析方法

Zhengyi Guo, Wenpin Tang, Renyuan Xu

发表机构 * Department of Industrial Engineering and Operations Research, Columbia University(哥伦比亚大学工业工程与运营管理系) Department of Management Science and Engineering, Stanford University(斯坦福大学管理科学与工程系)

AI总结 提出基于Doob h-变换和鞅表示的条件扩散引导框架,通过鞅损失和鞅协方差损失学习条件函数梯度,确保硬约束满足并给出非渐近保证。

详情
AI中文摘要

我们研究了扩散模型中在硬约束下的条件生成,其中生成的样本必须以概率1满足预设事件。这类约束在安全关键应用和稀有事件模拟中自然出现,而软或基于奖励的引导方法无法保证约束满足。基于扩散模型的概率解释,我们利用Doob h-变换、鞅表示和二次变差过程,开发了一个原则性的条件扩散引导框架。具体地,得到的引导动力学通过涉及条件函数对数梯度的显式漂移校正来增强预训练扩散,而不修改预训练得分网络。利用鞅和二次变差恒等式,我们提出了两种新的离策略学习算法,基于鞅损失和鞅协方差损失,仅使用预训练模型的轨迹来估计h及其梯度。我们为得到的条件采样器在总变差和Wasserstein距离下提供了非渐近保证,明确刻画了得分近似和引导估计误差的影响。数值实验证明了所提方法在强制硬约束和生成稀有事件样本方面的有效性。数值实验的代码可在此https URL找到。

英文摘要

We study conditional generation in diffusion models under hard constraints, where generated samples must satisfy prescribed events with probability one. Such constraints arise naturally in safety-critical applications and in rare-event simulation, where soft or reward-based guidance methods offer no guarantee of constraint satisfaction. Building on a probabilistic interpretation of diffusion models, we develop a principled conditional diffusion guidance framework based on Doob's h-transform, martingale representation and quadratic variation process. Specifically, the resulting guided dynamics augment a pretrained diffusion with an explicit drift correction involving the logarithmic gradient of a conditioning function, without modifying the pretrained score network. Leveraging martingale and quadratic-variation identities, we propose two novel off-policy learning algorithms based on a martingale loss and a martingale-covariation loss to estimate h and its gradient using only trajectories from the pretrained model. We provide non-asymptotic guarantees for the resulting conditional sampler in both total variation and Wasserstein distances, explicitly characterizing the impact of score approximation and guidance estimation errors. Numerical experiments demonstrate the effectiveness of the proposed methods in enforcing hard constraints and generating rare-event samples. The code of the numerical experiments can be found at https://github.com/ZhengyiGuo2002/CDG_Finance.

2603.07236 2026-06-19 cs.CV 版本更新

HY-WU (Part I): An Extensible Functional Neural Memory Framework and An Instantiation in Text-Guided Image Editing

HY-WU (第一部分): 一种可扩展的功能性神经记忆框架及其在文本引导图像编辑中的应用

Mengxuan Wu, Xuanlei Zhao, Ziqiao Wang, Ruicheng Feng, Zhangyang Wang, Kai Wang

发表机构 * Tencent HY Team(腾讯 HY 团队)

AI总结 提出HY-WU框架,通过功能性神经记忆模块即时生成实例特定权重更新,避免共享权重覆盖导致的干扰,解决持续学习与个性化中的灾难性遗忘问题。

详情
AI中文摘要

基础模型正从离线预测器过渡到期望长时间运行的部署系统。在实际部署中,目标并非固定:领域漂移、用户偏好演变,以及模型发布后出现新任务。这将持续学习和即时个性化从可选功能提升为核心架构要求。然而,大多数适应流程仍遵循静态权重范式:训练后(或任何适应步骤后),推理执行单一参数向量,而不考虑用户意图、领域或实例特定约束。这将训练或适应后的模型视为参数空间中的单个点。在异构且持续演变的机制中,不同目标可能在参数上诱导分离的可行区域,迫使任何单一共享更新陷入妥协、干扰或过度专业化。结果,持续学习和个性化通常实现为对共享权重的重复覆盖,冒着先前学习行为退化的风险。我们提出HY-WU(权重释放),一种记忆优先的适应框架,将适应压力从覆盖单一共享参数点转移。HY-WU将功能性(算子级)记忆实现为神经模块:一个根据实例条件即时合成权重更新的生成器,产生实例特定算子而无需测试时优化。

英文摘要

Foundation models are transitioning from offline predictors to deployed systems expected to operate over long time horizons. In real deployments, objectives are not fixed: domains drift, user preferences evolve, and new tasks appear after the model has shipped. This elevates continual learning and instant personalization from optional features to core architectural requirements. Yet most adaptation pipelines still follow a static weight paradigm: after training (or after any adaptation step), inference executes a single parameter vector regardless of user intent, domain, or instance-specific constraints. This treats the trained or adapted model as a single point in parameter space. In heterogeneous and continually evolving regimes, distinct objectives can induce separated feasible regions over parameters, forcing any single shared update into compromise, interference, or overspecialization. As a result, continual learning and personalization are often implemented as repeated overwriting of shared weights, risking degradation of previously learned behaviors. We propose HY-WU (Weight Unleashing), a memory-first adaptation framework that shifts adaptation pressure away from overwriting a single shared parameter point. HY-WU implements functional (operator-level) memory as a neural module: a generator that synthesizes weight updates on-the-fly from the instance condition, yielding instance-specific operators without test-time optimization.

2602.20573 2026-06-19 cs.LG 版本更新

MolGraphBench: A Benchmark of GNN Architectures for Molecular Regression Tasks

MolGraphBench:用于分子回归任务的GNN架构基准测试

Rajan, Ishaan Gupta

发表机构 * Rajan 1 Ishaan Gupta 2

AI总结 提出MolGraphBench基准,比较四种GNN模型在分子回归任务上的性能,发现GCN和GIN为最优架构,并指出GNN层类型应作为可调超参数。

Comments 14 pages, 5 figures and 4 tables

详情
AI中文摘要

分子通常表示为SMILES字符串,可以轻松转换为手工设计的描述符或指纹(FP)用于分子性质预测。研究表明,SMILES可以转换为分子图 $G = (V, E)$,其中原子为节点 $(V)$,键为边 $(E)$。这些分子图随后可用于训练图神经网络(GNN)模型。尽管近年来GNN(现有和新架构)在分子性质预测中的应用激增,但仍缺乏严格的基准测试。我们提出了MolGraphBench,一个包含四种常用GNN模型的全面基准测试,用于分子性质预测。基准测试结果表明,基于绝对性能、训练效率、迁移学习和预测质量,图卷积网络(GCN)和图同构网络(GIN)是分子图回归任务的最优GNN架构。研究还表明,在融合(GNN-FP)框架中,分子指纹具有非互补性。此外,我们的GNN模型在三个数据集上取得了优于或与当前最先进GNN基线相当的性能(B3DB上GCN的RMSE为0.518,FreeSolv上GIN-FP的RMSE为1.022,RT数据集上GIN的MAE为63.783)。本研究的发现表明,GNN层类型应被视为可调超参数,而非固定设计选择,以实现更优性能。

英文摘要

Molecules are often represented as SMILES strings, which can be readily converted to hand-crafted descriptors or fingerprints (FP) for molecular property prediction. Research has demonstrated that SMILES can be converted to molecular graphs $G = (V, E)$, with atoms as nodes $(V)$ and bonds as edges $(E)$. These molecular graphs can subsequently be used to train graph neural networks (GNN) models. Despite the recent surge in application of GNN (existing and novel architectures) for molecular property prediction, a rigorous benchmark is still lacking. We propose MolGraphBench, a comprehensive benchmark of four commonly used GNN models for molecular property prediction. Benchmarking results demonstrate graph convolutional network (GCN) and graph isomorphism networks (GIN) as the optimal GNN architectures for molecular graph regression tasks, based on absolute performance, training efficiency, transfer learning and prediction quality. The study also indicates the non-complementary nature of molecular fingerprints in the fusion (GNN-FP) framework. Furthermore, our GNN models achieved performance superior or comparable performance to current state-of-the-art GNN baselines across three datasets (GCN with RMSE of $0.518$ on B3DB, GIN-FP with RMSE of $1.022$ on FreeSolv and GIN with MAE of $63.783$ on RT datasets). Findings from this study indicate that type of GNN-layer, should be treated as a tunable hyperparameter rather than a fixed design choice to achieve superior performance.

2603.04219 2026-06-19 cs.SD cs.AI eess.AS 版本更新

ZeSTA: Zero-Shot TTS Augmentation with Domain-Conditioned Training for Data-Efficient Personalized Speech Synthesis

ZeSTA: 基于领域条件训练的零样本文本转语音增强用于数据高效的个性化语音合成

Youngwon Choi, Jinwoo Oh, Hwayeon Kim, Hyeonyu Kim

发表机构 * Maum AI Inc.(Maum AI公司) Humelo Inc.(Humelo公司)

AI总结 提出ZeSTA框架,通过轻量领域嵌入区分真实与合成语音,结合真实数据过采样,在极低资源下提升零样本文本转语音增强的说话人相似度,保持可懂度和感知质量。

Comments 6 pages, accepted to INTERSPEECH 2026

详情
AI中文摘要

我们研究了将零样本文本转语音(ZS-TTS)作为低资源个性化语音合成的数据增强源。虽然合成增强可以提供语言丰富且音素多样的语音,但将大量合成语音与有限的真实录音简单混合往往会导致微调过程中说话人相似度下降。为解决这一问题,我们提出了ZeSTA,一个简单的基于领域条件的训练框架,通过轻量领域嵌入区分真实和合成语音,并结合真实数据过采样以在极有限的目标数据下稳定适应,无需修改基础架构。在LibriTTS和一个内部数据集上使用两个ZS-TTS源的实验表明,我们的方法在保持可懂度和感知质量的同时,相比朴素合成增强提高了说话人相似度。音频样本可在我们的网页上获取。

英文摘要

We investigate the use of zero-shot text-to-speech (ZS-TTS) as a data augmentation source for low-resource personalized speech synthesis. While synthetic augmentation can provide linguistically rich and phonetically diverse speech, naively mixing large amounts of synthetic speech with limited real recordings often leads to speaker similarity degradation during fine-tuning. To address this issue, we propose ZeSTA, a simple domain-conditioned training framework that distinguishes real and synthetic speech via a lightweight domain embedding, combined with real-data oversampling to stabilize adaptation under extremely limited target data, without modifying the base architecture. Experiments on LibriTTS and an in-house dataset with two ZS-TTS sources demonstrate that our approach improves speaker similarity over naive synthetic augmentation while preserving intelligibility and perceptual quality. Audio samples are available on our web page.

2509.15927 2026-06-19 cs.LG cs.AI 版本更新

Enhancing Generative Auto-bidding with Offline Reward Evaluation and Policy Search

增强生成式自动出价:结合离线奖励评估与策略搜索

Zhiyu Mou, Yiqin Lv, Miao Xu, Qi Wang, Yixiu Mao, Jinghao Chen, Qichen Ye, Chao Li, Rongquan Bai, Chuan Yu, Jian Xu, Bo Zheng

发表机构 * Taobao & Tmall Group of Alibaba(阿里巴巴淘宝与天猫集团) Department of Automation, Tsinghua University(清华大学自动化系)

AI总结 针对现有生成式自动出价方法无法超越静态数据集进行探索的性能瓶颈,提出AIGB-Pearl方法,通过轨迹评估器和KL-Lipschitz约束的分数最大化方案实现安全高效探索,在模拟和真实广告系统中取得最优性能。

详情
AI中文摘要

自动出价是广告主提升广告效果的关键工具。最近进展表明,AI生成式出价(AIGB)从离线数据中学习条件生成规划器,相比典型的基于离线强化学习(RL)的自动出价方法取得了更优性能。然而,现有AIGB方法仍面临性能瓶颈,因其固有能力无法在静态数据集之外进行带反馈的探索。为解决此问题,我们提出\textbf{AIGB-Pearl}(\emph{\textbf{P}lanning with \textbf{E}valu\textbf{A}tor via \textbf{RL}}),一种融合生成式规划与策略优化的新方法。AIGB-Pearl的核心在于构建轨迹评估器以评估生成分数的质量,并设计一个理论上可靠的KL-Lipschitz约束分数最大化方案,确保在离线数据集之外进行安全高效的探索。进一步开发了结合同步耦合技术的实用算法,以保证所提方案所需的模型正则性。在模拟和真实广告系统上的大量实验证明了我们方法的最优性能。

英文摘要

Auto-bidding is a critical tool for advertisers to improve advertising performance. Recent progress has demonstrated that AI-Generated Bidding (AIGB), which learns a conditional generative planner from offline data, achieves superior performance compared to typical offline reinforcement learning (RL)-based auto-bidding methods. However, existing AIGB methods still face a performance bottleneck due to their inherent inability to explore beyond the static dataset with feedback. To address this, we propose \textbf{AIGB-Pearl} (\emph{\textbf{P}lanning with \textbf{E}valu\textbf{A}tor via \textbf{RL}}), a novel method that integrates generative planning and policy optimization. The core of AIGB-Pearl lies in constructing a trajectory evaluator to assess the quality of generated scores and designing a provably sound KL-Lipschitz-constrained score-maximization scheme to ensure safe and efficient exploration beyond the offline dataset. A practical algorithm that incorporates the synchronous coupling technique is further developed to ensure the model regularity required by the proposed scheme. Extensive experiments on both simulated and real-world advertising systems demonstrate the state-of-the-art performance of our approach.

2603.01250 2026-06-19 cs.CV cs.AI 版本更新

The MAMA-MIA Challenge: Advancing Generalizability and Fairness in Breast MRI Tumor Segmentation and Treatment Response Prediction

MAMA-MIA挑战:推进乳腺MRI肿瘤分割与治疗反应预测的泛化性和公平性

Lidia Garrucho, Smriti Joshi, Kaisar Kushibar, Richard Osuala, Maciej Bobowicz, Xavier Bargalló, Paulius Jaruševičius, Kai Geissler, Raphael Schäfer, Muhammad Alberb, Tony Xu, Anne Martel, Daniel Sleiman, Navchetan Awasthi, Hadeel Awwad, Joan C. Vilanova, Robert Martí, Daan Schouten, Jeong Hoon Lee, Mirabela Rusu, Eleonora Poeta, Luisa Vargas, Eliana Pastor, Maria A. Zuluaga, Jessica Kächele, Dimitrios Bounias, Alexandra Ertl, Katarzyna Gwoździewicz, Maria-Laura Cosaka, Pasant M. Abo-Elhoda, Sara W. Tantawy, Shorouq S. Sakrana, Norhan O. Shawky-Abdelfatah, Amr Muhammad Abdo-Salem, Androniki Kozana, Eugen Divjak, Gordana Ivanac, Katerina Nikiforaki, Michail E. Klontzas, Rosa García-Dosdá, Meltem Gulsun-Akpinar, Oğuz Lafcı, Carlos Martín-Isla, Oliver Díaz, Laura Igual, Karim Lekadir

发表机构 * Barcelona Artificial Intelligence in Medicine Lab (BCN-AIM), Facultat de Matemàtiques i Informàtica, Universitat de Barcelona(巴塞罗那人工智能在医学实验室(BCN-AIM),巴塞罗那大学数学与计算机学院)

AI总结 提出MAMA-MIA挑战,通过标准化基准评估乳腺MRI肿瘤分割和病理完全缓解预测,在跨洲多中心数据上分析模型泛化性与公平性,发现性能与亚组公平性之间存在权衡。

详情
AI中文摘要

乳腺癌是全球女性中最常诊断的恶性肿瘤,也是癌症相关死亡的主要原因之一。动态对比增强磁共振成像在肿瘤表征和治疗监测中发挥核心作用,尤其是接受新辅助化疗的患者。然而,现有的乳腺磁共振成像人工智能模型通常使用异质性数据集、研究人群和评估协议进行开发和评估,使得直接比较困难,并限制了跨机构和临床相关患者亚组的模型鲁棒性理解。MAMA-MIA挑战旨在通过提供标准化基准来解决这些问题,该基准用于联合评估原发性肿瘤分割和仅使用治疗前磁共振成像预测病理完全缓解。训练队列包括来自美国多家机构的1506名患者,而评估则在来自三个独立欧洲中心的574名患者的外部测试集上进行,以评估跨大陆和跨机构的泛化性。统一的评分框架结合了预测性能与年龄、绝经状态和乳腺密度方面的亚组一致性。26个国际团队参加了最终评估阶段。结果表明,在共同的外部评估框架下,性能存在显著差异,并揭示了整体准确性与亚组公平性之间的权衡。该挑战提供了标准化数据集、评估协议和公共资源,以促进开发稳健且公平的乳腺癌影像人工智能系统。

英文摘要

Breast cancer is the most frequently diagnosed malignancy among women worldwide and a leading cause of cancer-related mortality. Dynamic contrast-enhanced magnetic resonance imaging plays a central role in tumor characterization and treatment monitoring, particularly in patients receiving neoadjuvant chemotherapy. However, existing artificial intelligence models for breast magnetic resonance imaging are typically developed and evaluated using heterogeneous datasets, study populations, and assessment protocols, making direct comparison difficult and limiting understanding of model robustness across institutions and clinically relevant patient subgroups. The MAMA-MIA Challenge was designed to address these challenges by providing a standardized benchmark for the joint evaluation of primary tumor segmentation and prediction of pathologic complete response using pre-treatment magnetic resonance imaging only. The training cohort comprised 1,506 patients from multiple institutions in the United States, while evaluation was conducted on an external test set of 574 patients from three independent European centers to assess cross-continental and cross-institutional generalization. A unified scoring framework combined predictive performance with subgroup consistency across age, menopausal status, and breast density. Twenty-six international teams participated in the final evaluation phase. Results demonstrate substantial performance variability under a common external evaluation framework and reveal trade-offs between overall accuracy and subgroup fairness. The challenge provides standardized datasets, evaluation protocols, and public resources to promote the development of robust and equitable artificial intelligence systems for breast cancer imaging.

2603.00654 2026-06-19 cs.CV 版本更新

RC-GeoCP: Geometric Consensus for Radar-Camera Collaborative Perception

RC-GeoCP:雷达-相机协同感知的几何一致性

Xiaokai Bai, Lianqing Zheng, Runwei Guan, Siyuan Cao, Songkai Wang, Huiliang Shen

发表机构 * College of Information Science and Electronic Engineering, Zhejiang University(浙江大学信息科学与电子工程学院) School of Automotive Studies, Tongji University(同济大学汽车学院) Thrust of Artificial Intelligence, Hong Kong University of Science and Technology(香港科技大学人工智能研究所)

AI总结 提出首个4D雷达与相机协同感知框架RC-GeoCP,通过雷达锚定几何一致性解决深度模糊和空间分散导致的错位,实现高效通信与全局一致表示。

Comments 11 pages, 6 figures, 9 tables

详情
AI中文摘要

协同感知(CP)通过多智能体信息共享增强场景理解。尽管以LiDAR为中心的系统提供精确几何,但高成本和恶劣天气下的性能下降需要多模态替代方案。尽管具有密集的视觉语义和鲁棒的空间测量,相机与4D雷达之间的协同在协作环境中仍未得到充分探索。本文介绍RC-GeoCP,这是首个探索CP中4D雷达与图像融合的框架。为解决由深度模糊和跨智能体空间分散引起的错位,RC-GeoCP建立了雷达锚定的几何一致性。具体而言,几何结构修正(GSR)将视觉语义与雷达导出的几何对齐,以生成空间有根基的、几何一致的表示。不确定性感知通信(UAC)将选择性传输表述为条件熵减少过程,基于智能体间分歧优先处理信息特征。最后,共识驱动聚合器(CDA)通过共享几何锚聚合多智能体信息,形成全局一致的表示。我们在V2X-Radar和V2X-R上建立了首个统一的雷达-相机CP基准,展示了最先进的性能,同时显著降低了通信开销。代码即将发布。

英文摘要

Collaborative perception (CP) enhances scene understanding through multi-agent information sharing. While LiDAR-centric systems offer precise geometry, high costs and performance degradation in adverse weather necessitate multi-modal alternatives. Despite dense visual semantics and robust spatial measurements, the synergy between cameras and 4D radar remains underexplored in collaborative settings. This work introduces RC-GeoCP, the first framework to explore the fusion of 4D radar and images in CP. To resolve misalignment caused by depth ambiguity and spatial dispersion across agents, RC-GeoCP establishes a radar-anchored geometric consensus. Specifically, Geometric Structure Rectification (GSR) aligns visual semantics with geometry derived from radar to generate spatially grounded, geometry-consistent representations. Uncertainty-Aware Communication (UAC) formulates selective transmission as a conditional entropy reduction process to prioritize informative features based on inter-agent disagreement. Finally, the Consensus-Driven Assembler (CDA) aggregates multi-agent information via shared geometric anchors to form a globally coherent representation. We establish the first unified radar-camera CP benchmark on V2X-Radar and V2X-R, demonstrating state-of-the-art performance with significantly reduced communication overhead. Code will be released soon.

2602.23248 2026-06-19 cs.AI 版本更新

Mitigating Legibility Tax with Decoupled Prover-Verifier Games

通过解耦证明者-验证者游戏减轻可读性代价

Yegon Kim, Juho Lee

发表机构 * KAIST(韩国科学技术院)

AI总结 提出解耦证明者-验证者游戏(DPVG),通过分离正确性与可检查性训练一个翻译器模型,将固定求解器的解转化为可检查形式,在保持答案正确性的同时提高可检查性,解决了可读性代价问题。

Comments ICLR 2026 Workshop Trustworthy AI

详情
AI中文摘要

随着大型语言模型能力日益增强,其输出能被能力较弱的系统轻松检查变得至关重要。证明者-验证者游戏可用于提高模型输出的可检查性,但与仅训练以最大化正确性的基线相比,其准确性有所下降——这种现象被称为可读性代价。我们提出一种解决方案,通过将正确性与可检查性条件解耦,转而训练一个“翻译器”模型,将固定求解器模型的解转化为可检查形式。这使我们能够首先训练求解器以最大化正确性,然后训练翻译器将求解器的解翻译成可检查形式,同时保留求解器的答案。为了适应这一新的翻译目标,我们制定了一个解耦的证明者-验证者游戏(DPVG),其均衡对应于忠实且可检查的翻译器。

英文摘要

As large language models become increasingly capable, it is critical that their outputs can be easily checked by less capable systems. Prover-verifier games can be used to improve checkability of model outputs, but display a degradation in accuracy compared to a baseline trained only to maximize correctness -- a phenonemon named legibility tax. We propose a solution by decoupling the correctness from the checkability condition and instead training a "translator" model that turns a fixed solver model's solution into a checkable form. This allows us to first train the solver to maximize correctness, and then train the translator to translate the solver into a checkable form while retaining the solver's answer. To accommodate this new objective of translation, we formulate a decoupled prover-verifier game (DPVG) where the equilibria correspond to faithful and checkable translators.

2602.23172 2026-06-19 cs.CV cs.AI cs.RO 版本更新

Latent Gaussian Splatting for 4D Panoptic Occupancy Tracking

潜在高斯泼溅用于4D全景占据跟踪

Maximilian Luz, Rohit Mohan, Thomas Nürnberg, Yakov Miron, Daniele Cattaneo, Abhinav Valada

发表机构 * University of Freiburg(弗赖堡大学) Bosch Research(博世研究院) University of Haifa(海法大学)

AI总结 提出潜在高斯泼溅(LaGS)方法,通过特征高斯体作为动态关键点实现多视图特征聚合,用于4D全景占据跟踪,在Occ3D nuScenes和Waymo上达到最优性能。

Comments Accepted to IEEE Robotics and Automation Letters (RA-L), 2026

详情
AI中文摘要

捕捉4D时空场景结构对于机器人在动态环境中安全可靠运行至关重要。然而,现有方法通常只解决部分问题:它们要么通过边界框提供粗略的几何跟踪,要么提供缺乏显式时间关联和实例级推理的详细3D占据估计。在这项工作中,我们提出了潜在高斯泼溅(LaGS)用于4D全景占据跟踪(4D-POT)。我们重新审视底层表示,将3D特征建模为一组稀疏的带特征高斯体。这些高斯体作为动态的、面向体积的关键点,在泼溅到体素网格进行解码之前,能够实现多视图特征的空间连续、距离加权聚合。这种以点为中心的公式实现了灵活、数据相关的感受野和长程空间交互,这是局部密集体素算子难以捕捉的。分层高斯表示通过结合来自粗超点的全局上下文和来自高分辨率流的细粒度细节,进一步实现了多尺度推理。在Occ3D nuScenes和Waymo上的大量实验证明了4D-POT的最先进性能。我们在以下网址提供代码和模型:this https URL。

英文摘要

Capturing 4D spatiotemporal scene structure is crucial for the safe and reliable operation of robots in dynamic environments. However, existing approaches typically address only part of the problem: they either provide coarse geometric tracking via bounding boxes or detailed 3D occupancy estimates that lack explicit temporal association and instance-level reasoning. In this work, we present Latent Gaussian Splatting (LaGS) for 4D Panoptic Occupancy Tracking (4D-POT). We revisit the underlying representation and model 3D features as a sparse set of feature-bearing Gaussians. These act as dynamic, volume-oriented keypoints that enable spatially continuous, distance-weighted aggregation of multi-view features before being splatted into a voxel grid for decoding. This point-centric formulation enables flexible, data-dependent receptive fields and long-range spatial interactions that are difficult to capture with local and dense voxel-based operators. A hierarchical Gaussian representation further enables multi-scale reasoning by combining global context from coarse super-points with fine-grained detail from higher-resolution streams. Extensive experiments on Occ3D nuScenes and Waymo demonstrate state-of-the-art performance for 4D-POT. We provide code and models at https://lags.cs.uni-freiburg.de/.

2602.22959 2026-06-19 cs.CV 版本更新

Can Agents Distinguish Visually Hard-to-Separate Diseases in a Zero-Shot Setting? A Pilot Study

智能体能否在零样本设置中区分视觉上难以分离的疾病?一项初步研究

Zihao Zhao, Frederik Hauke, Juliana De Castilhos, Sven Nebelung, Daniel Truhn

发表机构 * Department of Diagnostic and Interventional Radiology, University Hospital Aachen, 52074 Aachen, Germany(诊断与介入放射科,亚琛大学医院,德国亚琛,52074)

AI总结 本研究探索多模态大语言模型智能体在零样本下区分视觉混淆疾病(如黑色素瘤与不典型痣、肺水肿与肺炎)的能力,提出基于对比裁决的多智能体框架,在皮肤镜数据上准确率提升11个百分点,但总体性能仍不足临床部署。

Comments Code available at https://github.com/TruhnLab/Contrastive-Agent-Reasoning. Accepted by MICCAI 2026

详情
AI中文摘要

多模态大语言模型(MLLMs)的快速进展引发了对基于智能体系统的日益关注。尽管大多数医学影像先前工作集中于自动化常规临床工作流程,我们研究了一个未被充分探索但临床意义重大的场景:在零样本设置中区分视觉上难以分离的疾病。我们在两个仅基于影像的代理诊断任务上对代表性智能体进行基准测试:(1)黑色素瘤与不典型痣,以及(2)肺水肿与肺炎,尽管临床管理存在显著差异,但视觉特征高度混淆。我们引入了一种基于对比裁决的多智能体框架。实验结果显示诊断性能提升(在皮肤镜数据上准确率提高11个百分点),并在定性样本上减少了无根据的声明,尽管整体性能仍不足以用于临床部署。我们承认人类注释中固有的不确定性以及临床背景的缺失,这进一步限制了向真实世界场景的转化。在此受控设置中,这项初步研究为视觉混淆场景下的零样本智能体性能提供了初步见解。

英文摘要

The rapid progress of multimodal large language models (MLLMs) has led to increasing interest in agent-based systems. While most prior work in medical imaging concentrates on automating routine clinical workflows, we study an underexplored yet clinically significant setting: distinguishing visually hard-to-separate diseases in a zero-shot setting. We benchmark representative agents on two imaging-only proxy diagnostic tasks, (1) melanoma vs. atypical nevus and (2) pulmonary edema vs. pneumonia, where visual features are highly confounded despite substantial differences in clinical management. We introduce a multi-agent framework based on contrastive adjudication. Experimental results show improved diagnostic performance (an 11-percentage-point gain in accuracy on dermoscopy data) and reduced unsupported claims on qualitative samples, although overall performance remains insufficient for clinical deployment. We acknowledge the inherent uncertainty in human annotations and the absence of clinical context, which further limit the translation to real-world settings. Within this controlled setting, this pilot study provides preliminary insights into zero-shot agent performance in visually confounded scenarios.

2508.15228 2026-06-19 cs.CV 版本更新

Collaborative Multi-Modal Coding for High-Quality 3D Generation

协作多模态编码用于高质量3D生成

Ziang Cao, Zhaoxi Chen, Liang Pan, Ziwei Liu

发表机构 * S-Lab, Nanyang Technological University, Singapore(南洋理工大学S实验室) Shanghai Artificial Intelligence Laboratory(上海人工智能实验室)

AI总结 提出TriMM,首个前馈式3D原生生成模型,通过协作多模态编码融合RGB、RGBD和点云特征,结合辅助2D/3D监督和三平面潜在扩散模型,实现高质量3D资产生成。

详情
AI中文摘要

3D内容本质上具有多模态特性,可投影到不同模态(如RGB图像、RGBD和点云)。每种模态在3D资产建模中表现出独特优势:RGB图像包含生动的3D纹理,而点云定义精细的3D几何。然而,现有大多数3D原生生成架构要么主要在单模态范式下运行——从而忽略了多模态数据的互补优势,要么局限于3D结构,从而限制了可用训练数据集的范围。为了全面利用多模态进行3D建模,我们提出了TriMM,这是第一个从基本多模态(如RGB、RGBD和点云)学习的前馈式3D原生生成模型。具体来说,1) TriMM首先引入协作多模态编码,该编码在保留各模态独特表示优势的同时整合模态特定特征。2) 此外,引入辅助2D和3D监督以提高多模态编码的鲁棒性和性能。3) 基于嵌入的多模态编码,TriMM采用三平面潜在扩散模型生成更高质量的3D资产,增强了纹理和几何细节。在多个知名数据集上的大量实验表明,TriMM通过有效利用多模态,尽管使用少量训练数据,仍能达到与在大规模数据集上训练的模型相竞争的性能。此外,我们在最近的RGB-D数据集上进行了额外实验,验证了将其他多模态数据集纳入3D生成的可行性。

英文摘要

3D content inherently encompasses multi-modal characteristics and can be projected into different modalities (e.g., RGB images, RGBD, and point clouds). Each modality exhibits distinct advantages in 3D asset modeling: RGB images contain vivid 3D textures, whereas point clouds define fine-grained 3D geometries. However, most existing 3D-native generative architectures either operate predominantly within single-modality paradigms-thus overlooking the complementary benefits of multi-modality data-or restrict themselves to 3D structures, thereby limiting the scope of available training datasets. To holistically harness multi-modalities for 3D modeling, we present TriMM, the first feed-forward 3D-native generative model that learns from basic multi-modalities (e.g., RGB, RGBD, and point cloud). Specifically, 1) TriMM first introduces collaborative multi-modal coding, which integrates modality-specific features while preserving their unique representational strengths. 2) Furthermore, auxiliary 2D and 3D supervision are introduced to raise the robustness and performance of multi-modal coding. 3) Based on the embedded multi-modal code, TriMM employs a triplane latent diffusion model to generate 3D assets of superior quality, enhancing both the texture and the geometric detail. Extensive experiments on multiple well-known datasets demonstrate that TriMM, by effectively leveraging multi-modality, achieves competitive performance with models trained on large-scale datasets, despite utilizing a small amount of training data. Furthermore, we conduct additional experiments on recent RGB-D datasets, verifying the feasibility of incorporating other multi-modal datasets into 3D generation.

2602.15819 2026-06-19 cs.CV 版本更新

VideoSketcher: Sequential Sketch Generation Using Video Model Priors

VideoSketcher:利用视频模型先验的序列草图生成

Hui Ren, Yuval Alaluf, Omer Bar Tal, Alexander Schwing, Antonio Torralba, Yael Vinker

发表机构 * MIT(麻省理工学院)

AI总结 提出VideoSketcher方法,结合LLM的语义规划与视频扩散模型的时序渲染,通过两阶段微调从少量样本学习笔画顺序与风格,生成高质量序列草图。

详情
AI中文摘要

素描本质上是序列化的:笔画逐步绘制以探索和完善想法。然而,大多数生成方法将草图视为静态图像,忽略了创造性探索背后的时间过程。建模这种序列结构仍然具有挑战性:先前的方法要么依赖大规模但多样性有限的人类绘制数据集,要么使用大型语言模型(LLM)生成绘制指令,但往往以视觉保真度为代价。我们提出VideoSketcher,一种通过将预训练的文本到视频扩散模型适应于草图形成的稀疏连续性质来生成高质量绘制过程的方法。我们的关键洞察是LLM和视频扩散模型提供互补优势:LLM作为语义规划器,将概念分解为逐步指令,而视频扩散模型作为强大的“渲染器”,将它们转化为时间连贯的草图序列。我们引入一种两阶段微调策略,将时间结构与视觉外观解耦:笔画顺序从合成形状组合中学习,而风格则从少至七幅手绘示例中提炼。尽管监督极少,我们的方法能够生成多样、高质量的序列草图,并忠实遵循指定的绘制顺序。我们的框架自然扩展到笔刷风格控制和自回归生成,支持艺术应用。

英文摘要

Sketching is inherently sequential: strokes are drawn progressively to explore and refine ideas. Yet most generative approaches treat sketches as static images, ignoring the temporal process underlying creative exploration. Modeling this sequential structure remains challenging: prior methods either rely on large-scale human-drawn datasets with limited diversity, or use large language models (LLMs) to produce drawing instructions, often at the cost of visual fidelity. We present VideoSketcher, a method for generating high-quality sketching processes by adapting pretrained text-to-video diffusion models to the sparse, continuous nature of sketch formation. Our key insight is that LLMs and video diffusion models offer complementary strengths: LLMs act as semantic planners that decompose concepts into step-by-step instructions, while video diffusion models serve as powerful "renderers" that translate them into temporally coherent sketch sequences. We introduce a two-stage fine-tuning strategy that decouples temporal structure from visual appearance: stroke ordering is learned from synthetic shape compositions, while style is distilled from as few as seven hand-drawn examples. Despite minimal supervision, our method can generate diverse, high-quality sequential sketches that faithfully follow specified drawing orders. Our framework naturally extends to brush style control and autoregressive generation, supporting artistic applications.

2602.14696 2026-06-19 cs.LG 版本更新

A Critical Look at Targeted Instruction Selection: Disentangling What Matters (and What Doesn't)

对目标指令选择的批判性审视:厘清什么重要(以及什么不重要)

Nihal V. Nayak, Paula Rodriguez-Diaz, Neha Hulkund, Sara Beery, David Alvarez-Melis

发表机构 * Harvard University(哈佛大学) MIT(麻省理工学院) Kempner Institute(凯门研究所)

AI总结 本文系统解构指令微调中目标指令选择的两大核心要素——数据表示与选择算法,发现基于梯度的表示结合贪心轮询选择在低预算下表现最佳,但收益随预算增加而减弱,并统一了多种算法为近似距离最小化。

Comments ICML 2026

详情
AI中文摘要

大型语言模型(LLM)的指令微调通常涉及从大型候选池中选择一个指令训练子集,使用来自目标任务的小型查询集。尽管兴趣日益增长,关于目标指令选择的文献仍然支离破碎且不透明:方法在选择预算上差异很大,经常省略零样本基线,并且常常混淆关键组件的贡献。因此,实践者缺乏针对其目标任务选择指令的可操作指导。在这项工作中,我们旨在通过解构和系统分析两个核心要素:数据表示和选择算法,为这一领域带来清晰度。我们的框架支持跨模型、任务和预算的受控比较。我们发现,只有基于梯度的数据表示选择的子集,其与查询的相似性能够一致地预测跨数据集、模型和候选池的性能。虽然没有单一方法占主导地位,但基于梯度的表示与贪心轮询选择相结合,在低预算下平均表现最佳,但这些收益在较大预算下会减弱。最后,我们将几种现有的选择算法统一为所选子集与查询集之间近似距离最小化的形式,并用新的泛化界限支持这一观点。更广泛地说,我们的发现为LLM微调中更原则性的数据选择提供了关键见解和基础。代码可在该 https URL 获取。

英文摘要

Instruction fine-tuning of large language models (LLMs) often involves selecting a subset of instruction training data from a large candidate pool, using a small query set from the target task. Despite growing interest, the literature on targeted instruction selection remains fragmented and opaque: methods vary widely in selection budgets, often omit zero-shot baselines, and frequently entangle the contributions of key components. As a result, practitioners lack actionable guidance on selecting instructions for their target tasks. In this work, we aim to bring clarity to this landscape by disentangling and systematically analyzing the two core ingredients: data representation and selection algorithms. Our framework enables controlled comparisons across models, tasks, and budgets. We find that only gradient-based data representations choose subsets whose similarity to the query consistently predicts performance across datasets, models, and candidate pools. While no single method dominates, gradient-based representations paired with greedy round-robin selection often perform best on average at low budgets, but these gains diminish at larger budgets. Finally, we unify several existing selection algorithms as forms of approximate distance minimization between the selected subset and the query set, and support this view with new generalization bounds. More broadly, our findings provide critical insights and a foundation for more principled data selection in LLM fine-tuning. The code is available at https://github.com/dcml-lab/targeted-instruction-selection.

2512.11173 2026-06-19 cs.RO 版本更新

Learning Category-level Last-meter Navigation from RGB Demonstrations of a Single-instance

从单实例RGB演示中学习类别级最后米导航

Tzu-Hsien Lee, Fidan Mahmudova, Karthik Desingh

发表机构 * University of Minnesota, Twin Cities(明尼苏达大学 Twin Cities 分校)

AI总结 提出面向对象的模仿学习框架,利用RGB观测实现四足移动机械臂在最后米阶段的精确导航,无需深度或地图先验,在类别级泛化中达到高成功率。

详情
AI中文摘要

移动机械臂基座的精确定位对于后续成功操作至关重要。大多数基于RGB的导航系统仅保证粗略的米级精度,不适合移动操作的精确定位阶段。这一差距导致操作策略无法在其训练演示的分布内运行,从而导致频繁的执行失败。我们通过引入一种面向对象的模仿学习框架来解决这一差距,用于最后米导航,使四足移动机械臂机器人仅使用其机载摄像头的RGB观测即可实现可操作的定位。我们的方法将导航策略条件化为三个输入:目标图像、来自机载摄像头的多视角RGB观测以及指定目标对象的文本提示。然后,语言驱动的分割模块和空间得分矩阵解码器提供显式的对象定位和相对姿态推理。使用类别内单个对象实例的真实世界数据,该系统能够泛化到不同环境中具有挑战性光照和背景条件的未见对象实例。为了全面评估这一点,我们引入了两个指标:边缘对齐度量(使用真实方向)和对象对齐度量(评估机器人视觉上面对目标的程度)。在这些指标下,我们的策略在相对于未见目标对象定位时,边缘对齐成功率达到74.58%,对象对齐成功率达到89.42%。这些结果表明,无需深度、LiDAR或地图先验,即可在类别级实现精确的最后米导航,为统一的移动操作提供可扩展的途径。项目页面:此https URL

英文摘要

Achieving precise positioning of the mobile manipulator's base is essential for successful manipulation actions that follow. Most of the RGB-based navigation systems only guarantee coarse, meter-level accuracy, making them less suitable for the precise positioning phase of mobile manipulation. This gap prevents manipulation policies from operating within the distribution of their training demonstrations, resulting in frequent execution failures. We address this gap by introducing an object-centric imitation learning framework for last-meter navigation, enabling a quadruped mobile manipulator robot to achieve manipulation-ready positioning using only RGB observations from its onboard cameras. Our method conditions the navigation policy on three inputs: goal images, multi-view RGB observations from the onboard cameras, and a text prompt specifying the target object. A language-driven segmentation module and a spatial score-matrix decoder then supply explicit object grounding and relative pose reasoning. Using real-world data from a single object instance within a category, the system generalizes to unseen object instances across diverse environments with challenging lighting and background conditions. To comprehensively evaluate this, we introduce two metrics: an edge-alignment metric, which uses ground truth orientation, and an object-alignment metric, which evaluates how well the robot visually faces the target. Under these metrics, our policy achieves 74.58% success in edge-alignment and 89.42% success in object-alignment when positioning relative to unseen target objects. These results show that precise last-meter navigation can be achieved at a category-level without depth, LiDAR, or map priors, enabling a scalable pathway toward unified mobile manipulation. Project page: https://rpm-lab-umn.github.io/category-level-last-meter-nav/

2508.21677 2026-06-19 cs.RO 版本更新

Robust Convex Model Predictive Control with collision avoidance guarantees for robot manipulators

具有碰撞避免保证的机器人操作器鲁棒凸模型预测控制

Bernhard Wullt, Johannes Köhler, Per Mattsson, Mikeal Norrlöf, Thomas B. Schön

发表机构 * ABB robotics(ABB机器人公司) Department of Mechanical Engineering, Imperial College London(帝国理工学院机械工程系) Department of Information Technology, Uppsala University(乌普萨拉大学信息科技系)

AI总结 提出一种结合鲁棒管MPC与走廊规划算法的凸MPC方案,在模型不确定下实现工业机器人快速无碰撞运动,优于基准方法。

详情
AI中文摘要

工业操作器通常在杂乱环境中运行,安全运动规划至关重要。然而,模型不确定性使任务更加复杂,导致保守的速度限制以减少干扰影响。因此,需要能够保证快速执行安全运动的控制方法。我们通过为操作器提出一种新颖的模型预测控制(MPC)方案来解决这一问题,其中两个主要组件是鲁棒管MPC和用于获得无碰撞运动的走廊规划算法。我们的方案形成凸MPC公式,可以快速求解,使方法具有实际应用价值。我们在模拟环境中展示了方法的有效性,该环境包含一个6自由度工业机器人在具有不确定模型参数的杂乱环境中运行。通过容忍更高水平的模型不确定性同时实现更快的运动,我们优于基准方法。

英文摘要

Industrial manipulators typically operate in cluttered environments, where safe motion planning is critical. However, model uncertainties further complicate this task, which leads to conservative speed limits to reduce the influence of disturbances. Hence, there is a need for control methods that can guarantee safe motions which are executed fast. We address this by suggesting a novel model predictive control (MPC) solution for manipulators, where our two main components are a robust tube MPC and a corridor planning algorithm to obtain collision-free motion. Our solution results in a convex MPC formulation, which we can solve fast, making our method practically useful. We demonstrate the efficacy of our method in a simulated environment with a 6 DOF industrial robot operating in cluttered environments with uncertain model parameters. We outperform benchmark methods by tolerating higher levels of model uncertainty while achieving faster motion.

2602.09689 2026-06-19 cs.LG 版本更新

Model soups need only one ingredient

模型汤只需一种成分

Alireza Abdollahpoorrostam, Nikolaos Dimitriadis, Adam Hazimeh, Pascal Frossard

发表机构 * EPFL(瑞士联邦理工学院) EPFL LTS4(瑞士联邦理工学院 LTS4)

AI总结 提出MonoSoup方法,利用SVD分解单检查点的层更新,通过熵有效秩自动重加权成分,实现强分布内-分布外平衡,无需多检查点。

详情
AI中文摘要

在目标分布上微调大型预训练模型通常会提高分布内(ID)准确性,但代价是分布外(OOD)鲁棒性下降,因为表示会专门适应微调数据。权重空间集成方法,如模型汤(Model Soups),通过平均多个检查点来缓解这一影响,但它们在计算上代价高昂,需要训练和存储数十个微调模型。在本文中,我们介绍了MonoSoup,一种简单、无数据、无超参数的事后方法,仅使用单个检查点即可实现强大的ID-OOD平衡。我们的方法对每一层的更新应用奇异值分解(SVD),将其分解为捕捉任务特定适应的高能量方向和引入噪声但可能仍编码对鲁棒性有用的残余信号的低能量方向。然后,MonoSoup使用基于熵的有效秩自动重新加权这些分量,并考虑模型的谱和几何结构的逐层系数。在ImageNet上微调并在自然分布偏移下评估的CLIP模型,以及在数学推理和多选题基准上测试的Qwen语言模型上的实验表明,这种即插即用方法是多检查点方法的实用且有效的替代方案,保留了其大部分好处而无需计算开销。

英文摘要

Fine-tuning large pre-trained models on a target distribution often improves in-distribution (ID) accuracy, but at the cost of out-of-distribution (OOD) robustness as representations specialize to the fine-tuning data. Weight-space ensembling methods, such as Model Soups, mitigate this effect by averaging multiple checkpoints, but they are computationally prohibitive, requiring the training and storage of dozens of fine-tuned models. In this paper, we introduce MonoSoup, a simple, data-free, hyperparameter-free, post-hoc method that achieves a strong ID-OOD balance using only a single checkpoint. Our method applies Singular Value Decomposition (SVD) to each layer's update and decomposes it into high-energy directions that capture task-specific adaptation and low-energy directions that introduce noise but may still encode residual signals useful for robustness. MonoSoup then uses entropy-based effective rank to automatically re-weigh these components with layer-wise coefficients that account for the spectral and geometric structure of the model. Experiments on CLIP models fine-tuned on ImageNet and evaluated under natural distribution shifts, as well as on Qwen language models tested on mathematical reasoning and multiple-choice benchmarks, show that this plug-and-play approach is a practical and effective alternative to multi-checkpoint methods, retaining much of their benefits without their computational overhead.

2510.24410 2026-06-19 cs.CV cs.RO 版本更新

GenTrack2: An Improved Hybrid Approach for Multi-Object Tracking

GenTrack2: 一种改进的多目标跟踪混合方法

Toan Van Nguyen, Rasmus G. K. Christiansen, Dirk Kraft, Leon Bodenhagen

发表机构 * SDU Robotics, University of Southern Denmark(SDU机器人研究所,南丹麦大学)

AI总结 提出结合随机粒子滤波与确定性关联的多目标跟踪方法,通过粒子群优化和新型代价矩阵解决非线性动态下的标识一致性问题,性能优于现有方法。

Comments The content of this paper was included in the full manuscript of GenTrack family which has been submitted to the journal for possible publication

详情
AI中文摘要

本文提出一种视觉多目标跟踪方法,联合使用随机和确定性机制,以确保在非线性动态下未知且时变目标数量的标识一致性。随机粒子滤波处理非线性动态和非高斯噪声,并借助粒子群优化(PSO)将粒子引导至状态分布模式,通过提出的适应度度量(包含运动一致性、外观相似性和与邻近目标的社交互动线索)减轻发散。确定性关联通过提出的代价矩阵进一步强制标识一致性,该矩阵包含粒子与当前检测之间的空间一致性、检测置信度和轨迹惩罚。随后,提出一种新颖方案,在保持目标身份的同时平滑更新目标状态,特别是对于与其他目标交互和长时间遮挡期间的弱轨迹。此外,对过去状态的速度回归提供趋势种子速度,增强粒子采样和状态更新。所提出的跟踪器设计灵活,适用于预录视频和相机直播流(未来帧不可用)。实验结果表明,与最先进的跟踪器相比,性能优越。所提出方法和对比跟踪器的源代码参考实现已在GitHub上提供:此 https URL

英文摘要

This paper proposes a visual multi-object tracking method that jointly employs stochastic and deterministic mechanisms to ensure identifier consistency for unknown and time-varying target numbers under nonlinear dynamics. A stochastic particle filter addresses nonlinear dynamics and non-Gaussian noise, with support from particle swarm optimization (PSO) to guide particles toward state distribution modes and mitigate divergence through proposed fitness measures incorporating motion consistency, appearance similarity, and social-interaction cues with neighboring targets. Deterministic association further enforces identifier consistency via a proposed cost matrix incorporating spatial consistency between particles and current detections, detection confidences, and track penalties. Subsequently, a novel scheme is proposed for the smooth updating of target states while preserving their identities, particularly for weak tracks during interactions with other targets and prolonged occlusions. Moreover, velocity regression over past states provides trend-seed velocities, enhancing particle sampling and state updates. The proposed tracker is designed to operate flexibly for both pre-recorded videos and camera live streams, where future frames are unavailable. Experimental results confirm superior performance compared to state-of-the-art trackers. The source-code reference implementations of both the proposed method and compared-trackers are provided on GitHub: https://github.com/SDU-VelKoTek/GenTrack2

2602.07628 2026-06-19 cs.AI cs.LG 版本更新

SleepMaMi: A Universal Sleep Foundation Model for Integrating Macro- and Micro-structures

SleepMaMi:一种融合宏观与微观结构的通用睡眠基础模型

Keondo Park, Younghoon Na, Yourim Choi, Hyunwoo Ryu, Hyun-Woo Shin, Hyung-Sin Kim

发表机构 * Graduate School of Data Science, Seoul National University, Seoul, South Korea(首尔国立大学数据科学研究生院,韩国首尔) Department of Biomedical Sciences, Seoul National University College of Medicine, Seoul, Republic of Korea(首尔国立大学医学院生物医学科学系,韩国首尔) Obstructive Upper Airway Research (OUaR) Laboratory, Department of Pharmacology, Seoul National University College of Medicine, Seoul, Republic of Korea(首尔国立大学医学院药理学系阻塞性上气道研究(OUaR)实验室,韩国首尔) Department of Otorhinolaryngology-Head and Neck Surgery, Seoul National University Hospital, Seoul, Republic of Korea(首尔国立大学医院耳鼻喉头颈外科系,韩国首尔)

AI总结 提出SleepMaMi睡眠基础模型,通过分层双编码器设计(宏观编码器建模整夜时间依赖,微观编码器捕捉生物信号短时特征),结合人口统计引导对比学习和混合掩码自编码器训练,在超过2万条PSG记录上预训练,在下游任务中优于或匹配现有基础模型。

Comments 8 pages, Appendix 9 pages

详情
AI中文摘要

虽然向统一基础模型的转变已经彻底改变了许多深度学习领域,但睡眠医学仍然主要局限于专注于局部微观结构特征的特定任务模型。这些方法常常忽略多导睡眠图(PSG)丰富的多模态背景,并且未能捕捉整夜睡眠的全局宏观结构。为了解决这个问题,我们引入了SleepMaMi,一种睡眠基础模型,旨在掌握长达一小时的睡眠架构和细粒度信号形态。我们的框架采用分层双编码器设计:宏观编码器用于建模整夜时间依赖,微观编码器用于从生物信号中捕捉短期特征。宏观编码器通过人口统计引导对比学习进行训练,该学习将夜间睡眠模式与客观受试者元数据(如年龄、性别和BMI)对齐,以优化全局表示。微观编码器通过混合掩码自编码器(MAE)和多模态对比目标进行优化。在超过20,000条PSG记录(158K小时)的大规模语料库上预训练,SleepMaMi在多样化的下游任务套件中优于或匹配现有的最先进基础模型,展示了在临床睡眠分析中卓越的泛化能力和标签高效适应能力。

英文摘要

While the shift toward unified foundation models has revolutionized many deep learning domains, sleep medicine remains largely restricted to task-specific models that focus on localized micro-structure features. These approaches often neglect the rich, multi-modal context of Polysomnography (PSG) and fail to capture the global macro-structure of a full night's sleep. To address this, we introduce SleepMaMi , a Sleep Foundation Model engineered to master both hour-long sleep architectures and fine-grained signal morphologies. Our framework utilizes a hierarchical dual-encoder design: a Macro-Encoder to model full-night temporal dependencies and a Micro-Encoder to capture short-term characteristics from biosignals. Macro-Encoder is trained via Demographic-Guided Contrastive Learning, which aligns overnight sleep patterns with objective subject metadata, such as age, sex and BMI to refine global representations. Micro-Encoder is optimized via a hybrid Masked Autoencoder (MAE) and multi-modal contrastive objective. Pre-trained on a massive corpus of $>$20,000 PSG recordings (158K hours),SleepMaMi outperforms or matches state-of-the-art existing foundation models across a diverse suite of downstream tasks, demonstrating superior generalizability and label-efficient adaptation for clinical sleep analysis.

2602.04396 2026-06-19 cs.LG cs.AI 版本更新

LoRDO: Distributed Low-Rank Optimization with Infrequent Communication

LoRDO: 分布式低秩优化与低频通信

Andrej Jovanović, Alex Iacob, Mher Safaryan, Ionut-Vlad Modoranu, Lorenzo Sani, William F. Shen, Xinchi Qiu, Dan Alistarh, Nicholas D. Lane

发表机构 * University of Cambridge(剑桥大学) Institute of Science and Technology Austria(奥地利科学与技术研究院) Lancaster University(兰卡斯特大学) Flower Labs(Flower实验室)

AI总结 提出LoRDO框架,统一低秩优化与低频同步,通过全秩准双曲更新恢复子空间探索,在125M-720M模型规模下实现与低秩DDP近似的性能,通信量减少约10倍。

Comments Accepted at ICML 2026

详情
AI中文摘要

通过$\ exttt{DDP}$进行基础模型的分布式训练受限于互连带宽。虽然低频通信策略减少了同步频率,但优化器状态的内存和通信需求仍然构成瓶颈。低秩优化器可以缓解这些限制;然而,在局部更新机制下,工作节点无法访问计算低秩投影所需的全批次梯度,这降低了性能。我们提出$\ exttt{LoRDO}$,一个统一低秩优化与低频同步的原则性框架。我们首先证明,虽然基于伪梯度的全局投影在理论上更优,但它们将优化轨迹永久限制在低秩子空间中。为了恢复子空间探索,我们引入了一个全秩准双曲更新。$\ exttt{LoRDO}$在125M-720M模型规模的语言建模和下游任务中实现了与低秩$\ exttt{DDP}$近乎相同的性能,同时将通信量减少了约10倍。最后,我们表明在具有小秩/小批次大小的极低内存设置中,$\ exttt{LoRDO}$的性能提升更为显著。

英文摘要

Distributed training of foundation models via $\texttt{DDP}$ is limited by interconnect bandwidth. While infrequent communication strategies reduce synchronization frequency, they remain bottlenecked by the memory and communication requirements of optimizer states. Low-rank optimizers can alleviate these constraints; however, in the local-update regime, workers lack access to the full-batch gradients required to compute low-rank projections, which degrades performance. We propose $\texttt{LoRDO}$, a principled framework unifying low-rank optimization with infrequent synchronization. We first demonstrate that, while global projections based on pseudo-gradients are theoretically superior, they permanently restrict the optimization trajectory to a low-rank subspace. To restore subspace exploration, we introduce a full-rank quasi-hyperbolic update. $\texttt{LoRDO}$ achieves near-parity with low-rank $\texttt{DDP}$ in language modeling and downstream tasks at model scales of $125$M--$720$M, while reducing communication by $\approx 10 \times$. Finally, we show that $\texttt{LoRDO}$ improves performance even more in very low-memory settings with small rank/batch size.

2602.04306 2026-06-19 cs.CL cs.AI 版本更新

DeFrame: Debiasing Large Language Models Against Framing Effects

DeFrame: 消除大语言模型中的框架效应偏差

Kahee Lim, Soyeon Kim, Steven Euijong Whang

发表机构 * KAIST(韩国科学技术院)

AI总结 针对大语言模型在语义等价但不同表述的提示下产生不一致偏见的问题,提出框架感知的去偏方法,通过量化框架差异并增强跨框架一致性,有效降低整体偏见并提升鲁棒性。

Comments Accepted to Findings of ACL 2026

详情
AI中文摘要

随着大语言模型(LLMs)在现实应用中的日益部署,确保其在不同人口群体中的公平响应变得至关重要。尽管做出了许多努力,但一个持续的挑战是隐藏的偏见:LLMs 在标准评估下表现公平,但在这些评估设置之外可能产生有偏见的响应。在本文中,我们识别出框架——语义等价的提示在表达方式上的差异(例如,“A 比 B 好” vs. “B 比 A 差”)——作为导致这一差距的一个未被充分探索的因素。我们首先引入“框架差异”的概念来量化框架对公平性评估的影响。通过用替代框架扩充公平性评估基准,我们发现(1)公平性得分随框架变化显著,以及(2)现有的去偏方法改善了整体(即框架平均)公平性,但往往未能减少框架引起的差异。为了解决这个问题,我们提出了一种框架感知的去偏方法,鼓励 LLMs 在不同框架之间更加一致。实验表明,我们的方法减少了整体偏见,并提高了对框架差异的鲁棒性,使 LLMs 能够产生更公平和更一致的响应。

英文摘要

As large language models (LLMs) are increasingly deployed in real-world applications, ensuring their fair responses across demographics has become crucial. Despite many efforts, an ongoing challenge is hidden bias: LLMs appear fair under standard evaluations, but can produce biased responses outside those evaluation settings. In this paper, we identify framing -- differences in how semantically equivalent prompts are expressed (e.g., "A is better than B" vs. "B is worse than A") -- as an underexplored contributor to this gap. We first introduce the concept of "framing disparity" to quantify the impact of framing on fairness evaluation. By augmenting fairness evaluation benchmarks with alternative framings, we find that (1) fairness scores vary significantly with framing and (2) existing debiasing methods improve overall (i.e., frame-averaged) fairness, but often fail to reduce framing-induced disparities. To address this, we propose a framing-aware debiasing method that encourages LLMs to be more consistent across framings. Experiments demonstrate that our approach reduces overall bias and improves robustness against framing disparities, enabling LLMs to produce fairer and more consistent responses.