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Main Authors: Guo, Jianing, Wu, Zhenhong, Tu, Chang, Ma, Yiyao, Kong, Xiangqi, Liu, Zhiqian, Ji, Jiaming, Zhang, Shuning, Chen, Yuanpei, Chen, Kai, Dou, Qi, Yang, Yaodong, Liu, Xianglong, Zhao, Huijie, Lv, Weifeng, Li, Simin
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.00037
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author Guo, Jianing
Wu, Zhenhong
Tu, Chang
Ma, Yiyao
Kong, Xiangqi
Liu, Zhiqian
Ji, Jiaming
Zhang, Shuning
Chen, Yuanpei
Chen, Kai
Dou, Qi
Yang, Yaodong
Liu, Xianglong
Zhao, Huijie
Lv, Weifeng
Li, Simin
author_facet Guo, Jianing
Wu, Zhenhong
Tu, Chang
Ma, Yiyao
Kong, Xiangqi
Liu, Zhiqian
Ji, Jiaming
Zhang, Shuning
Chen, Yuanpei
Chen, Kai
Dou, Qi
Yang, Yaodong
Liu, Xianglong
Zhao, Huijie
Lv, Weifeng
Li, Simin
contents In Vision-Language-Actionf(VLA) models, robustness to real-world perturbations is critical for deployment. Existing methods target simple visual disturbances, overlooking the broader multi-modal perturbations that arise in actions, instructions, environments, and observations. Here, we first evaluate the robustness of mainstream VLAs under 17 perturbations across four modalities. We find (1) actions as the most fragile modality, (2) Existing visual-robust VLA do not gain robustness in other modality, and (3) pi0 demonstrates superior robustness. To build multi-modal robust VLAs, we propose RobustVLA against perturbations in VLA inputs and outputs. For output robustness, we perform offline robust optimization against worst-case action noise that maximizes mismatch in flow matching objective. This can be seen as adversarial training, label smoothing, and outlier penalization. For input robustness, we enforce consistent actions across input variations that preserve task semantics. To account for multiple perturbations, we formulate robustness as a multi-armed bandit problem and apply an upper confidence bound algorithm to automatically identify the most harmful noise. Experiments on LIBERO demonstrate our RobustVLA delivers absolute gains over baselines of 12.6% on the pi0 backbone and 10.4% on the OpenVLA backbone across all 17 perturbations, achieving 50.6x faster inference than existing visual-robust BYOVLA that requires external LLMs, and a 10.4% gain under mixed perturbations. On the real-world FR5 robot, under four types of multimodal perturbations, RobustVLA shows strong low-data performance, outperforming pi0 by 65.6% success rate with 25 demonstrations. Even with abundant demos, our method still outperform pi0 by 30% success rate. Code and demo videos available at https://github.com/gakakulicc/RobustVLA.
format Preprint
id arxiv_https___arxiv_org_abs_2510_00037
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle On Robustness of Vision-Language-Action Model against Multi-Modal Perturbations
Guo, Jianing
Wu, Zhenhong
Tu, Chang
Ma, Yiyao
Kong, Xiangqi
Liu, Zhiqian
Ji, Jiaming
Zhang, Shuning
Chen, Yuanpei
Chen, Kai
Dou, Qi
Yang, Yaodong
Liu, Xianglong
Zhao, Huijie
Lv, Weifeng
Li, Simin
Computer Vision and Pattern Recognition
Artificial Intelligence
Robotics
In Vision-Language-Actionf(VLA) models, robustness to real-world perturbations is critical for deployment. Existing methods target simple visual disturbances, overlooking the broader multi-modal perturbations that arise in actions, instructions, environments, and observations. Here, we first evaluate the robustness of mainstream VLAs under 17 perturbations across four modalities. We find (1) actions as the most fragile modality, (2) Existing visual-robust VLA do not gain robustness in other modality, and (3) pi0 demonstrates superior robustness. To build multi-modal robust VLAs, we propose RobustVLA against perturbations in VLA inputs and outputs. For output robustness, we perform offline robust optimization against worst-case action noise that maximizes mismatch in flow matching objective. This can be seen as adversarial training, label smoothing, and outlier penalization. For input robustness, we enforce consistent actions across input variations that preserve task semantics. To account for multiple perturbations, we formulate robustness as a multi-armed bandit problem and apply an upper confidence bound algorithm to automatically identify the most harmful noise. Experiments on LIBERO demonstrate our RobustVLA delivers absolute gains over baselines of 12.6% on the pi0 backbone and 10.4% on the OpenVLA backbone across all 17 perturbations, achieving 50.6x faster inference than existing visual-robust BYOVLA that requires external LLMs, and a 10.4% gain under mixed perturbations. On the real-world FR5 robot, under four types of multimodal perturbations, RobustVLA shows strong low-data performance, outperforming pi0 by 65.6% success rate with 25 demonstrations. Even with abundant demos, our method still outperform pi0 by 30% success rate. Code and demo videos available at https://github.com/gakakulicc/RobustVLA.
title On Robustness of Vision-Language-Action Model against Multi-Modal Perturbations
topic Computer Vision and Pattern Recognition
Artificial Intelligence
Robotics
url https://arxiv.org/abs/2510.00037