论文标题

SOK:关于自主驾驶的语义AI安全性

SoK: On the Semantic AI Security in Autonomous Driving

论文作者

Shen, Junjie, Wang, Ningfei, Wan, Ziwen, Luo, Yunpeng, Sato, Takami, Hu, Zhisheng, Zhang, Xinyang, Guo, Shengjian, Zhong, Zhenyu, Li, Kang, Zhao, Ziming, Qiao, Chunming, Chen, Qi Alfred

论文摘要

自动驾驶(AD)系统依靠AI组件来做出安全和正确的驾驶决策。不幸的是,当今的AI算法通常很容易受到对抗攻击的影响。但是,要使这样的AI组件级漏洞在系统级别上具有语义上的影响,它需要从系统级攻击输入空间到AI组件级别的那些(2)从AI组件级别的攻击影响到系统级别的那些。在本文中,我们将研究空间定义为语义AI安全性,而不是通用AI安全性。在过去的五年中,越来越多的研究工作是在广告环境中应对这种语义AI安全挑战的工作,该挑战已开始显示出指数级的增长趋势。 在本文中,我们对这种不断增长的语义AD AI安全研究领域的知识进行了首次系统化。总体而言,我们总共收集和分析了53篇论文,并根据对安全领域至关重要的研究方面进行系统分类。我们总结了基于现有AD AI安全性工作的定量比较以及与密切相关域的安全性工作水平的,基于定量比较观察到的6个最大的科学差距。有了这些,我们不仅可以在设计层面,而且在研究目标,方法论和社区层面上提供见解和潜在的未来方向。为了解决最关键的科学方法论级别的差距,我们采取了主动性为语义AD AI Security Research研究所开发开源,统一和可扩展的系统驱动的评估平台,名为PASS。我们还使用实施的平台原型来展示使用代表性语义AD AI攻击的平台的功能和好处。

Autonomous Driving (AD) systems rely on AI components to make safety and correct driving decisions. Unfortunately, today's AI algorithms are known to be generally vulnerable to adversarial attacks. However, for such AI component-level vulnerabilities to be semantically impactful at the system level, it needs to address non-trivial semantic gaps both (1) from the system-level attack input spaces to those at AI component level, and (2) from AI component-level attack impacts to those at the system level. In this paper, we define such research space as semantic AI security as opposed to generic AI security. Over the past 5 years, increasingly more research works are performed to tackle such semantic AI security challenges in AD context, which has started to show an exponential growth trend. In this paper, we perform the first systematization of knowledge of such growing semantic AD AI security research space. In total, we collect and analyze 53 such papers, and systematically taxonomize them based on research aspects critical for the security field. We summarize 6 most substantial scientific gaps observed based on quantitative comparisons both vertically among existing AD AI security works and horizontally with security works from closely-related domains. With these, we are able to provide insights and potential future directions not only at the design level, but also at the research goal, methodology, and community levels. To address the most critical scientific methodology-level gap, we take the initiative to develop an open-source, uniform, and extensible system-driven evaluation platform, named PASS, for the semantic AD AI security research community. We also use our implemented platform prototype to showcase the capabilities and benefits of such a platform using representative semantic AD AI attacks.

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