Artificial Intelligence Security: Threats and Countermeasures

Yupeng Hu, Wenxin Kuang, Zheng Qin, Kenli Li, Jiliang Zhang, Yansong Gao, Wei Li, Kuan-Ching Li
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引用次数: 24

Abstract

In recent years, with rapid technological advancement in both computing hardware and algorithm, Artificial Intelligence (AI) has demonstrated significant advantage over human being in a wide range of fields, such as image recognition, education, autonomous vehicles, finance, and medical diagnosis. However, AI-based systems are generally vulnerable to various security threats throughout the whole process, ranging from the initial data collection and preparation to the training, inference, and final deployment. In an AI-based system, the data collection and pre-processing phase are vulnerable to sensor spoofing attacks and scaling attacks, respectively, while the training and inference phases of the model are subject to poisoning attacks and adversarial attacks, respectively. To address these severe security threats against the AI-based systems, in this article, we review the challenges and recent research advances for security issues in AI, so as to depict an overall blueprint for AI security. More specifically, we first take the lifecycle of an AI-based system as a guide to introduce the security threats that emerge at each stage, which is followed by a detailed summary for corresponding countermeasures. Finally, some of the future challenges and opportunities for the security issues in AI will also be discussed.
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人工智能安全:威胁与对策
近年来,随着计算硬件和算法的快速发展,人工智能(AI)在图像识别、教育、自动驾驶汽车、金融、医疗诊断等广泛领域显示出对人类的显著优势。然而,从最初的数据收集和准备到训练、推理和最终部署,基于ai的系统在整个过程中通常容易受到各种安全威胁。在基于人工智能的系统中,数据收集和预处理阶段分别容易受到传感器欺骗攻击和缩放攻击,而模型的训练和推理阶段分别容易受到投毒攻击和对抗性攻击。为了解决这些针对基于人工智能系统的严重安全威胁,本文回顾了人工智能安全问题的挑战和最新研究进展,从而描绘了人工智能安全的总体蓝图。更具体地说,我们首先以基于人工智能的系统的生命周期为指导,介绍在每个阶段出现的安全威胁,然后详细总结相应的对策。最后,还将讨论人工智能安全问题的一些未来挑战和机遇。
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