The rapid development of artificial intelligence, especially deep learning technology, has advanced autonomous driving systems (ADSs) by providing precise control decisions to counterpart almost any driving event, spanning from anti-fatigue safe driving to intelligent route planning. However, ADSs are still plagued by increasing threats from different attacks, which could be categorized into physical attacks, cyberattacks and learning-based adversarial attacks. Inevitably, the safety and security of deep learning-based autonomous driving are severely challenged by these attacks, from which the countermeasures should be analyzed and studied comprehensively to mitigate all potential risks. This survey provides a thorough analysis of different attacks that may jeopardize ADSs, as well as the corresponding state-of-the-art defense mechanisms. The analysis is unrolled by taking an in-depth overview of each step in the ADS workflow, covering adversarial attacks for various deep learning models and attacks in both physical and cyber context. Furthermore, some promising research directions are suggested in order to improve deep learning-based autonomous driving safety, including model robustness training, model testing and verification, and anomaly detection based on cloud/edge servers.
翻译:人工智能的迅速发展,特别是深层次的学习技术,已经通过提供精确的控制决定,对几乎所有驾驶事件都作出精确的控制决定,包括从反令人满意的安全驾驶到智能路线规划等,从而发展了自主驾驶系统(ADS),然而,ADS仍然受到来自不同攻击的威胁日益增加的困扰,这些攻击可分为人身攻击、网络攻击和以学习为基础的对抗性攻击,不可避免地,深层次学习自主驾驶的安全和安保受到这些攻击的严重挑战,应从这些攻击中分析和全面研究这些反措施,以减轻所有潜在风险。这项调查对可能危害ADS的不同攻击以及相应的最新防御机制进行了彻底分析。通过对ADS工作流程的每一步骤进行深入的概述,包括各种深层次学习模式的对立式攻击以及物理和网络攻击。此外,为了改善基于深层次学习的自主驾驶安全,建议了一些有希望的研究方向,包括模型坚固性培训、模型测试和核查,以及基于云层/顶端服务器的异常检测,从而进行深入分析。