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Securing Connected & Autonomous Vehicles: Challenges Posed by Adversarial Machine Learning and the Way Forward

机译:保护和自治车辆:对抗机器学习和前进方向构成的挑战

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摘要

Connected and autonomous vehicles (CAVs) will form the backbone of future next-generation intelligent transportation systems (ITS) providing travel comfort, road safety, along with a number of value-added services. Such a transformation-which will be fuelled by concomitant advances in technologies for machine learning (ML) and wireless communications-will enable a future vehicular ecosystem that is better featured and more efficient. However, there are lurking security problems related to the use of ML in such a critical setting where an incorrect ML decision may not only be a nuisance but can lead to loss of precious lives. In this paper, we present an in-depth overview of the various challenges associated with the application of ML in vehicular networks. In addition, we formulate the ML pipeline of CAVs and present various potential security issues associated with the adoption of ML methods. In particular, we focus on the perspective of adversarial ML attacks on CAVs and outline a solution to defend against adversarial attacks in multiple settings.
机译:连接和自主车辆(CAV)将形成未来的下一代智能运输系统(其)的骨干,提供旅行舒适,道路安全以及许多增值服务。这种转变 - 通过伴随机器学习(ML)和无线通信技术的伴随地步推动 - 将使未来的车辆生态系统能够更好地呈现和更有效。然而,在这种关键环境中使用ML有潜伏的安全问题,其中不正确的ML决定可能不仅是令人讨厌的,而且可能导致珍贵的生命丧失。在本文中,我们对与车辆网络中ML应用相关的各种挑战的深入概述。此外,我们制定了脉冲的ML管道,并呈现与采用ML方法相关的各种潜在的安全问题。特别是,我们专注于对脉冲的敌对ML攻击的视角,概述了一种解决多种环境中对抗对抗攻击的解决方案。

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