Adversarial AI Testcases for Maritime Autonomous Systems

Mathew J. Walter, Aaron Barrett, David Walker, K. Tam
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引用次数: 1

Abstract

Contemporary maritime operations such as shipping are a vital component constituting global trade and defence. The evolution towards maritime autonomous systems, often providing significant benefits (e.g., cost, physical safety), requires the utilisation of artificial intelligence (AI) to automate the functions of a conventional crew. However, unsecured AI systems can be plagued with vulnerabilities naturally inherent within complex AI models. The adversarial AI threat, primarily only evaluated in a laboratory environment, increases the likelihood of strategic adversarial exploitation and attacks on mission-critical AI, including maritime autonomous systems. This work evaluates AI threats to maritime autonomous systems in situ. The results show that multiple attacks can be used against real-world maritime autonomous systems with a range of lethality. However, the effects of AI attacks vary in a dynamic and complex environment from that proposed in lower entropy laboratory environments. We propose a set of adversarial test examples and demonstrate their use, specifically in the marine environment. The results of this paper highlight security risks and deliver a set of principles to mitigate threats to AI, throughout the AI lifecycle, in an evolving threat landscape.
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海上自治系统的对抗性人工智能测试案例
航运等当代海上行动是构成全球贸易和国防的重要组成部分。向海上自主系统的发展,通常提供显着的好处(例如,成本,人身安全),需要利用人工智能(AI)来自动化传统船员的功能。然而,不安全的人工智能系统可能会受到复杂人工智能模型中固有漏洞的困扰。对抗性人工智能威胁主要仅在实验室环境中进行评估,这增加了对关键任务人工智能(包括海上自主系统)进行战略对抗性利用和攻击的可能性。这项工作评估了人工智能对海上自主系统的威胁。结果表明,多重攻击可用于具有一定杀伤力的真实海上自主系统。然而,人工智能攻击的影响在动态和复杂的环境中与在低熵实验室环境中提出的影响有所不同。我们提出了一组对抗性测试示例,并演示了它们的使用,特别是在海洋环境中。本文的结果强调了安全风险,并提供了一套原则,以减轻对人工智能的威胁,在整个人工智能生命周期中,在不断发展的威胁环境中。
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