arXivDaily arXiv每日学术速递 周一至周五更新

视觉与机器人

VLA / 视觉-语言-动作模型

视觉-语言-动作模型、机器人基础模型和语言条件机器人控制。

今日/当前日期收录 6 信号源:cs.RO, cs.CV, cs.AI, cs.LG
2606.19784 2026-06-19 cs.RO 新提交 95%

EquiVLA: A General Framework for Rotationally Equivariant Vision-Language-Action Models

EquiVLA: 旋转等变视觉-语言-动作模型的通用框架

Thien-Loc Ha, Quang-Tan Nguyen, Trong-Bao Ho, Long Dinh, Minh Duc Nguyen, Gia-Binh Nguyen, Pham Tri Quang, Minh N. Vu, Duy M. H. Nguyen, An Thai Le, Ngo Anh Vien

发表机构 * VinRobotics VinUniversity DFKI(德国人工智能研究中心) University of Stuttgart(斯图加特大学) IMPRS-IS(国际马克斯·普朗克智能系统研究学院)

专题命中 VLA模型 :提出旋转等变VLA框架,用于机器人操作。

AI总结 提出EquiVLA,首个端到端SO(2)等变VLA框架,通过EquiPerceptor和EquiActor实现从视觉到动作的近似等变链,在LIBERO、CALVIN和真实机器人任务上显著提升性能。

Comments Comment: First version 22 pages, project site: https://equivla.github.io/

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AI中文摘要

视觉-语言-动作(VLA)模型已成为通用机器人操作的有力范式,但它们缺乏几何归纳偏置:在特定方向训练的策略需要大量数据才能泛化到不同旋转配置。我们提出 \textsc{EquiVLA},首个端到端 $\mathrm{SO}(2)$-等变 VLA 模型的通用框架,适用于任何将冻结的视觉-语言骨干与流匹配扩散 Transformer 动作头耦合的架构。\textsc{EquiVLA} 引入了 \textsc{EquiPerceptor},它从冻结的 ViT 特征生成近似 $\mathrm{SO}(2)$-等变的视觉表示;以及 \textsc{EquiActor},一个精确 $\mathrm{SO}(2)$-等变的流匹配扩散 Transformer 动作头。两者共同建立了一条从相机观测到预测动作序列的近似 $\mathrm{SO}(2)$ 等变链。在 GR00T~N1.5 上实例化,并在四个 LIBERO 套件、CALVIN ABCD$\to$D 以及 Mobile ALOHA 上的五个真实机器人任务中评估,\textsc{EquiVLA} 在 LIBERO 上达到 $92.6\%$ 的平均成功率(基线为 $78.1\%$),在 CALVIN 上平均序列长度为 $4.03$(基线为 $3.45$),并将真实机器人成功率从 $54\%$ 提升至 $72\%$。

英文摘要

Vision-Language-Action (VLA) models have emerged as a powerful paradigm for generalist robot manipulation, yet they lack geometric inductive biases: policies trained at specific orientations require substantially more data to generalize across rotational configurations. We present \textsc{EquiVLA}, the first general framework for end-to-end $\mathrm{SO}(2)$-equivariant VLA models, applicable to any architecture coupling a frozen vision-language backbone with a flow-matching Diffusion Transformer action head. \textsc{EquiVLA} introduces \textsc{EquiPerceptor}, which produces approximately $\mathrm{SO}(2)$-equivariant visual representations from frozen ViT features; and \textsc{EquiActor}, an exactly $\mathrm{SO}(2)$-equivariant flow-matching Diffusion Transformer action head. Together, they establish an approximate $\mathrm{SO}(2)$ equivariance chain from camera observations to predicted action sequences. Instantiated on GR00T~N1.5 and evaluated across four LIBERO suites, CALVIN ABCD$\to$D, and five real-robot tasks on Mobile ALOHA, \textsc{EquiVLA} achieves $92.6\%$ average success on LIBERO (vs. $78.1\%$ baseline), an average sequence length of $4.03$ on CALVIN (vs. $3.45$), and improves real-robot success from $54\%$ to $72\%$.

2606.20285 2026-06-19 cs.RO 新提交 90%

Co-VLA: Coordination-Aware Structured Action Modeling for Dual-Arm Vision-Language-Action Systems

Co-VLA:面向双臂视觉-语言-动作系统的协调感知结构化动作建模

Yandong Wang, Jiaqian Yu, Xiongfeng Peng, Lu Xu, Yamin Mao, Weiming Li, Jaewook Yoo, Dongwook Lee, Daehyun Ji, Mingbo Zhao, Chao Zhang

发表机构 * Donghua University(东华大学) Samsung R&D Institute China-Beijing (SRCB)(三星中国北京研究院) Samsung AI Center, DS Division(三星DS部门AI中心)

专题命中 VLA模型 :提出双臂VLA模型Co-VLA

AI总结 针对双臂紧耦合任务中隐式协调不足的问题,提出Co-VLA框架,通过结构化动作专家和潜在感知控制器显式引入协调先验,在仿真和真实场景中显著提升成功率和效率。

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AI中文摘要

视觉-语言-动作(VLA)模型在单臂和双臂机器人操作中展现出强大能力。先前研究表明,通过端到端学习,利用大型视觉-语言骨干网络和连续动作预测,可以涌现出协调的双臂行为。然而,随着双臂任务变得紧密耦合且执行约束变得关键,仅靠隐式协调不足以确保可靠、可解释且稳定的行为。在这项工作中,我们提出了Co-VLA,一个协调感知的双臂操作框架,将显式结构先验引入VLA模型。我们在一个最先进的视觉-语言骨干网络上实例化我们的方法,用专为双臂协调设计的结构化动作专家(SAE)替换其单一动作头。具体来说,我们在动作生成层面引入显式结构,采用模块化的协调感知损失,根据任务特定结构塑造共享和残差潜在变量。共享潜在变量编码任务级协调意图,而残差潜在变量捕获每个手臂的执行调整。在部署时,潜在感知控制器(LAC)解释学习到的表示,以实时调节同步强度、执行不对称性、平滑性和安全约束。LAC在关节命令级别运行,并与标准控制流水线兼容,无需力或阻抗控制。在仿真和真实世界基准上的实验表明,Co-VLA显著优于单一基线,在紧协调任务中成功率达到27%的提升,在OOD真实世界场景中性能翻倍(从13%提升至27%),并将任务完成时间减少高达25%。

英文摘要

Vision-language-action (VLA) models show strong capabilities in single and dual-arm robotic manipulation. Prior works show coordinated bimanual behaviors can emerge from end-to-end learning, leveraging large vision-language backbones with continuous action prediction. However, as bimanual tasks become tightly coupled and execution constraints become critical, implicit coordination alone is insufficient to ensure reliable, interpretable, and stable behavior. In this work, we propose Co-VLA, a coordination-aware bimanual manipulation framework introducing explicit structural priors into VLA models. We instantiate our method on a state-of-the-art vision-language backbone by replacing its monolithic action head with a Structured Action Expert (SAE) designed for bimanual coordination. Specifically, we introduce explicit structure at the action generation level with a modular coordination-aware loss that shapes shared and residual latents according to task-specific structures. The shared latent encodes task-level coordination intent, while residual latents capture execution adjustments for each arm. At deployment, a Latent-Aware Controller (LAC) interprets the learned representations to modulate synchronization strength, execution asymmetry, smoothness, and safety constraints in real time. LAC operates at the joint-command level and remains compatible with standard control pipelines without requiring force or impedance control. Experiments across simulation and real-world benchmarks show Co-VLA significantly outperforms monolithic baselines, achieving a 27% success rate gain in tight-coordination tasks, more than doubling performance in OOD real-world scenarios (from 13% to 27%), and reducing task completion time by up to 25%.

2606.20246 2026-06-19 cs.RO cs.AI 新提交 90%

Finetuning Vision-Language-Action Models Requires Fewer Layers Than You Think

微调视觉-语言-动作模型所需的层数比你想象的少

Gia-Binh Nguyen, Trong-Bao Ho, Thien-Loc Ha, Khoa Vo, Philip Lund Møller, Quang T. Nguyen, Long Dinh, Tuan Dam, Vu Duong, Tung M. Luu, Trung Le, Tran Nguyen Le, Minh Vu, An Thai Le, Ngan Le, Daniel Sonntag, James Zou, Jan Peters, Duy M. H. Nguyen, Ngo Anh Vien

发表机构 * Center for AI Research, VinUniversity(VinUniversity人工智能研究中心) VinRobotics University of Arkansas(阿肯色大学) Technical University of Denmark(丹麦技术大学) Hanoi University of Science and Technology(河内科技大学) KAIST(韩国科学技术院) Monash University(莫纳什大学) Oldenburg University(奥尔登堡大学) DFKI(德国人工智能研究中心) University of Stuttgart(斯图加特大学) IMPRS-IS(国际马克斯·普朗克智能系统研究学院) Stanford University(斯坦福大学) Technische Universität Darmstadt(达姆施塔特工业大学)

专题命中 VLA模型 :研究VLA模型微调中的层冗余

AI总结 本文发现VLA模型存在层间表示冗余,提出无需训练的压缩方法,通过去除冗余层将模型深度减少50%,实现40-50%训练加速和30%推理加速,性能不变。

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AI中文摘要

在大规模视频-机器人数据集上预训练的视觉-语言-动作(VLA)模型彻底改变了机器人操作,但其数十亿参数架构在下游微调和实时推理过程中带来了巨大的计算负担。在这项工作中,我们揭示了这些连续控制基础策略(例如pi_0、GR00T-N1.5)的一个高度非平凡的结构特性:尽管在多样化的物理轨迹上训练,它们表现出严重的逐层表示冗余。为了利用这一点,我们引入了一个完全无需训练的结构压缩流程,避免了现有方法需要加载全尺寸模型来学习优化的令牌缩减或动态层选择器的需求。相反,仅通过使用中心核对齐的单次前向传递来识别冗余层特征,我们移除孪生层以永久压缩模型深度高达50%,涵盖VLM主干和连续控制策略头。这种精简架构的下游微调带来了双重加速效益:训练时间减少40-50%,实时推理速度提升高达30%,同时匹配或超越全尺寸基模型性能。我们在三个模拟基准(LIBERO、RoboCasa、SimplerEnv)和10个跨4种不同机器人实体的多样化真实世界操作任务上全面验证了我们的方法。这些结果证明,先进的VLA所需的层数远少于先前假设,为可扩展的机器人学习提供了一种高度计算高效的范式。

英文摘要

Vision-Language-Action (VLA) models pre-trained on massive video-robot datasets have revolutionized robotic manipulation, yet their multi-billion parameter architectures impose prohibitive computational burdens during downstream fine-tuning and real-time inference. In this work, we reveal a highly non-trivial architectural characteristic of these continuous control foundation policies (e.g., pi_0, GR00T-N1.5): despite being trained on diverse physical trajectories, they exhibit severe layer-wise representational redundancy. To exploit this, we introduce a structural compression pipeline that is entirely training-free, bypassing the need of existing methods to load full-scale models to learn optimized token reductions or dynamic layer selectors. Instead, using only a single forward pass via Centered Kernel Alignment to identify redundant layer features, we remove twin layers to permanently compress the model depth by up to 50% across both the VLM backbone and the continuous control policy head. Downstream fine-tuning of this streamlined architecture yields a dual acceleration benefit: a 40-50% reduction in training time and up to 30% faster real-time inference, while matching or exceeding full-scale base model performance. We comprehensively validate our method across three simulation benchmarks (LIBERO, RoboCasa, SimplerEnv) and 10 diverse real-world manipulation tasks across 4 unique robotic embodiments. These results prove that advanced VLAs require significantly fewer layers than previously assumed, offering a highly compute-efficient paradigm for scalable robot learning.

2606.20092 2026-06-19 cs.CV 新提交 90%

EventVLA: Event-Driven Visual Evidence Memory for Long-Horizon Vision-Language-Action Policies

EventVLA: 面向长程视觉-语言-动作策略的事件驱动视觉证据记忆

Ganlin Yang, Zhangzheng Tu, Yuqiang Yang, Sitong Mao, Junyi Dong, Tianxing Chen, Jiaqi Peng, Jing Xiong, Jiafei Cao, Jifeng Dai, Wengang Zhou, Yao Mu, Tai Wang

发表机构 * University of Science and Technology of China(中国科学技术大学) Shanghai AI Laboratory(上海人工智能实验室) Shanghai Jiao Tong University(上海交通大学) Dalian University of Technology(大连理工大学) Huawei Technologies Co., Ltd.(华为技术有限公司) The University of Hong Kong(香港大学) Tsinghua University(清华大学) Peking University(北京大学)

专题命中 VLA模型 :视觉-语言-动作策略记忆增强

AI总结 针对长程机器人操作中记忆瓶颈问题,提出EventVLA框架,通过动态关键帧证据记忆模块自主捕获任务关键视觉事件,在17个模拟和4个真实任务中平均成功率提升40%。

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AI中文摘要

记忆仍然是长程机器人操作的关键瓶颈,因为标准的视觉-语言-动作(VLA)策略在任务相关线索随时间变得遮挡或不可观测时常常失败。虽然现有的记忆增强方法利用历史上下文,但它们要么遭受严重的信息瓶颈,通过解耦的双系统引入高延迟,要么依赖积累大量视觉冗余的无选择性缓冲区。为了解决这些限制,我们引入了EventVLA,一个基于稀疏视觉证据记忆概念的端到端框架,包含两个核心组件:用于保留初始和短期上下文的基础视觉锚点,以及动态关键帧证据记忆(KEM)模块。具体来说,KEM直接从VLA的潜在嵌入中预测未来关键帧概率,以自主捕获和存储稀疏的、任务关键的视觉事件。这种前瞻驱动的机制使策略能够动态评估当前观测的未来因果效用,在瞬态视觉证据变得不可观测之前将其保留。此外,我们提出了RoboTwin-MeM,一个专门设计用于评估具有交互式视觉证据的非马尔可夫操作任务的诊断基准。大量评估表明,在17个需要记忆的模拟任务和4个真实世界双臂任务中,EventVLA相比最先进的记忆增强VLA实现了平均成功率提升+40%。

英文摘要

Memory remains a critical bottleneck for long-horizon robotic manipulation, as standard Vision-Language-Action (VLA) policies often fail when task-relevant cues become occluded or unobservable over time. While existing memory-augmented methods utilize historical context, they either suffer from severe information bottlenecks, incur high latency via decoupled dual systems, or rely on unselective buffers that accumulate massive visual redundancies. To address these limitations, we introduce EventVLA, an end-to-end framework founded on the concept of sparse visual evidence memory that comprises two core components: foundational visual anchors to retain initial and short-term contexts, and a dynamic Keyframe Evidence Memory (KEM) module. Specifically, KEM directly predicts future keyframe probabilities from the VLA's latent embeddings to autonomously capture and store sparse, task-critical visual events. This foresight-driven mechanism empowers the policy to dynamically evaluate the future causal utility of current observations, preserving transient visual evidence before it becomes unobservable. Furthermore, we propose RoboTwin-MeM, a diagnostic benchmark specifically designed to evaluate non-Markovian manipulation tasks with interactive visual evidence. Extensive evaluations show that across 17 memory-requiring simulation tasks and 4 real-world bimanual tasks, EventVLA achieves an average success rate improvement of +40% over state-of-the-art memory-augmented VLAs.

2606.19565 2026-06-19 cs.CV 新提交 90%

Mix-QVLA: Task-Evidence-Aware Mixed-Precision Quantization of Vision-Language-Action Models

Mix-QVLA:任务证据感知的视觉-语言-动作模型混合精度量化

Navin Ranjan, Andreas Savakis

发表机构 * Rochester Institute of Technology(罗彻斯特理工学院)

专题命中 VLA模型 :提出VLA模型混合精度量化框架Mix-QVLA

AI总结 提出Mix-QVLA框架,通过任务证据感知的混合精度后训练量化,在保持任务性能的同时大幅降低VLA模型的内存和计算开销,在LIBERO上实现4.1GB内存和1.52倍加速。

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AI中文摘要

我们提出Mix-QVLA,一种针对VLA模型的任务证据感知混合精度PTQ框架。Mix-QVLA将每个量化变体锚定到全精度动作令牌参考决策,并评估量化是否在关键VLA功能边界上保留了任务相关证据。它从边界激活计算归一化的梯度加权任务证据图,并使用证据质量和归因分布失真比较全精度和量化图,捕捉决策支持证据的强度和分配变化。一个软瓶颈目标将边界级退化聚合为层敏感度分数。Mix-QVLA进一步在整个任务执行过程中建模敏感度,捕捉层重要性的阶段依赖变化,而不是假设固定的敏感度分布。由此产生的证据和时间感知分数指导在模型大小和BitOps预算下的混合精度位分配。在OpenVLA风格策略上的广泛评估表明,Mix-QVLA改善了低比特VLA部署的精度-效率权衡。在LIBERO上,Mix-QVLA将OpenVLA-OFT内存从15.4 GB减少到4.1 GB,保留了96.3的平均成功率(BF16模型为97.1),并实现了1.52倍的推理加速。

英文摘要

We propose Mix-QVLA, a task-evidence-aware mixed-precision PTQ framework for VLA models. Mix-QVLA anchors each quantized variant to the full-precision action-token reference decision and evaluates whether quantization preserves task-relevant evidence across key VLA functional boundaries. It computes normalized gradient-weighted task-evidence maps from boundary activations and compares full-precision and quantized maps using evidence-mass and attribution-distribution distortion, capturing changes in both the strength and allocation of decision-supporting evidence. A soft-bottleneck objective aggregates boundary-level degradation into layer-wise sensitivity scores. Mix-QVLA further models sensitivity throughout task execution, capturing phase-dependent shifts in layer importance rather than assuming a fixed sensitivity profile. The resulting evidence- and time-aware scores guide mixed-precision bit allocation under model-size and BitOps budgets. Extensive evaluations on OpenVLA-style policies show that Mix-QVLA improves the accuracy-efficiency trade-off of low-bit VLA deployment. On LIBERO, Mix-QVLA reduces OpenVLA-OFT memory from 15.4 GB to 4.1 GB, retains 96.3 average success compared with 97.1 for the BF16 model, and achieves a 1.52x inference speedup.

2606.19998 2026-06-19 cs.RO cs.AI cs.CV cs.LG 新提交 85%

Tri-Info: Generalizable, Interpretable Failure Prediction for VLA Models via Information Theory

Tri-Info: 基于信息论的VLA模型可泛化、可解释的故障预测

Jinghan Yang, Yunchao Zhang, Wang Yuan, Haolun Wan, Jiaming Zhang, Zhengyang Hu, Yanchao Yang

发表机构 * InfoBodied AI Lab, The University of Hong Kong(香港大学信息具身人工智能实验室) HKU Musketeers Foundation Institute of Data Science(香港大学赛马会数据科学研究院)

专题命中 VLA模型 :提出故障预测方法专门针对VLA模型。

AI总结 提出Tri-Info方法,通过信息论信号捕捉动作多样性、时间一致性和状态耦合,实现跨架构、环境及仿真到现实的零样本故障检测,准确率达83%。

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AI中文摘要

视觉-语言-动作(VLA)模型越来越多地部署在各种任务中,但它们仍然是黑箱,其物理交互可能导致不可逆的伤害,因此需要可泛化和可解释的故障检测。我们观察到成功和失败的轨迹具有系统不同的信息论特征。基于此,我们将VLA控制形式化为闭环信息管道,并推导出三重信息论(Tri-Info)信号,这些信号捕捉动作是否保持多样性、时间一致性以及与状态转换的耦合。在六个VLA模型和三个基准环境中,Tri-Info在域内匹配最强的基线。此外,Tri-Info无需重新训练即可跨架构、环境和仿真到现实差距迁移,在现实世界任务中达到83%的准确率,而先前的检测器则降至随机水平。这确立了Tri-Info作为一种简单而强大的方法,不仅能够检测故障并具有强大的跨域泛化能力,还能提供底层故障模式的可解释诊断。

英文摘要

Vision-Language-Action (VLA) models are increasingly deployed across diverse tasks, yet they remain black boxes whose physical interactions can cause irreversible harm, making generalizable and interpretable failure detection essential. We observe that successful and failed rollouts carry systematically different information-theoretic signatures. Building on this, we formalize VLA control as a closed-loop information pipeline and derive the Triple Information-theoretic (Tri-Info) signals that capture whether actions remain diverse, temporally consistent, and coupled to state transitions. Across six VLA models and three benchmark environments, Tri-Info matches the strongest baselines in-domain. Moreover, Tri-Info transfers across architectures, environments, and the sim-to-real gap without retraining, reaching 83\% accuracy on real-world tasks where prior detectors collapse to chance. This establishes Tri-Info as a simple yet powerful method that not only detects failures with strong cross-domain generalization, but also delivers interpretable diagnostics of the underlying failure modes.