Safety in Embodied AI: A Survey of Risks, Attacks, and Defenses
Xiao Li, Xiang Zheng, Yifeng Gao, Xinyu Xia, Yixu Wang, Xin Wang, Ye Sun, Yunhan Zhao, Ming Wen, Jiayu Li, Xun Gong, Yi Liu, Yige Li, Yutao Wu, Cong Wang, Jun Sun, Yixin Cao, Zhineng Chen, Jingjing Chen, Tao Gui, Qi Zhang, Zuxuan Wu, Xipeng Qiu, Xuanjing Huang, Tiehua Zhang, Zhipeng Wei, Hanxun Huang, Sarah Erfani, James Bailey, Jianping Wang, Wei-Ying Ma, Bo Li, Xingjun Ma, Yu-Gang Jiang
Why It Matters
What makes this one worth your time
Understanding safety in embodied AI is crucial as these systems are increasingly deployed in safety-critical environments like healthcare and transportation.
A comprehensive survey of safety challenges and defenses in embodied AI systems.
Summary
The paper surveys safety research in embodied AI, focusing on risks, attacks, and defenses across the embodied AI pipeline, and introduces a taxonomy to unify fragmented research areas.
Key contributions
- A structured review of safety research in embodied AI.
- Introduction of a multi-level taxonomy for safety in embodied AI.
- Identification of critical research gaps in embodied AI safety.
Notable insights
- The fragility of multimodal perception fusion in embodied AI systems.
- The instability of planning under jailbreak attacks.
Possible limitations
- Not stated in the abstract
Abstract
arXiv:2605.02900v1 Announce Type: cross Abstract: Embodied Artificial Intelligence (Embodied AI) integrates perception, cognition, planning, and interaction into agents that operate in open-world, safety-critical environments. As these systems gain autonomy and enter domains such as transportation, healthcare, and industrial or assistive robotics, ensuring their safety becomes both technically challenging and socially indispensable. Unlike digital AI systems, embodied agents must act under uncertain sensing, incomplete knowledge, and dynamic human-robot interactions, where failures can directly lead to physical harm. This survey provides a comprehensive and structured review of safety research in embodied AI, examining attacks and defenses across the full embodied pipeline, from perception and cognition to planning, action and interaction, and agentic system. We introduce a multi-level taxonomy that unifies fragmented lines of work and connects embodied-specific safety findings with broader advances in vision, language, and multimodal foundation models. Our review synthesizes insights from over 400 papers spanning adversarial, backdoor, jailbreak, and hardware-level attacks; attack detection, safe training and robust inference; and risk-aware human-agent interaction. This analysis reveals several overlooked challenges, including the fragility of multimodal perception fusion, the instability of planning under jailbreak attacks, and the trustworthiness of human-agent interaction in open-ended scenarios. By organizing the field into a coherent framework and identifying critical research gaps, this survey provides a roadmap for building embodied agents that are not only capable and autonomous but also safe, robust, and reliable in real-world deployment.