AI Agents 相关度: 8/10

What Breaks Embodied AI Security:LLM Vulnerabilities, CPS Flaws,or Something Else?

Boyang Ma, Hechuan Guo, Peizhuo Lv, Minghui Xu, Xuelong Dai, YeChao Zhang, Yijun Yang, Yue Zhang
arXiv: 2602.17345v1 发布: 2026-02-19 更新: 2026-02-19

AI 摘要

具身智能安全问题源于系统级不匹配,而非孤立的模型缺陷或传统CPS攻击。

主要贡献

  • 指出LLM漏洞和CPS缺陷无法完全解释具身智能安全问题
  • 强调具身智能安全问题的系统级本质
  • 提出四个核心洞见解释具身智能更难安全的原因

方法论

通过分析现有研究,提出具身智能系统安全问题的核心洞见,强调系统级视角。

原文摘要

Embodied AI systems (e.g., autonomous vehicles, service robots, and LLM-driven interactive agents) are rapidly transitioning from controlled environments to safety critical real-world deployments. Unlike disembodied AI, failures in embodied intelligence lead to irreversible physical consequences, raising fundamental questions about security, safety, and reliability. While existing research predominantly analyzes embodied AI through the lenses of Large Language Model (LLM) vulnerabilities or classical Cyber-Physical System (CPS) failures, this survey argues that these perspectives are individually insufficient to explain many observed breakdowns in modern embodied systems. We posit that a significant class of failures arises from embodiment-induced system-level mismatches, rather than from isolated model flaws or traditional CPS attacks. Specifically, we identify four core insights that explain why embodied AI is fundamentally harder to secure: (i) semantic correctness does not imply physical safety, as language-level reasoning abstracts away geometry, dynamics, and contact constraints; (ii) identical actions can lead to drastically different outcomes across physical states due to nonlinear dynamics and state uncertainty; (iii) small errors propagate and amplify across tightly coupled perception-decision-action loops; and (iv) safety is not compositional across time or system layers, enabling locally safe decisions to accumulate into globally unsafe behavior. These insights suggest that securing embodied AI requires moving beyond component-level defenses toward system-level reasoning about physical risk, uncertainty, and failure propagation.

标签

具身智能 安全 LLM CPS 系统级安全

arXiv 分类

cs.CR cs.AI