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首页> 外文期刊>European transport research review >Towards behaviour based testing to understand the black box of autonomous cars
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Towards behaviour based testing to understand the black box of autonomous cars

机译:走向基于行为的测试,了解自动汽车的黑匣子

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摘要

Background Autonomous cars could make traffic safer, more convenient, efficient and sustainable. They promise the convenience of a personal taxi, without the need for a human driver. Artificial intelligence would operate the vehicle instead. Especially deep neural networks (DNNs) offer a way towards this vision due to their exceptional performance particularly in perception. DNNs excel in identifying objects in sensor data which is essential for autonomous driving. These networks build their decision logic through training instead of explicit programming. A drawback of this technology is that the source code cannot be reviewed to assess the safety of a system. This leads to a situation where currently used methods for regulatory approval do not work to validate a promising new piece of technology. Objective In this paper four approaches are highlighted that might help understanding black box technical systems for autonomous cars by focusing on its behaviour instead. The method of experimental psychology is proposed to model the inner workings of DNNs by observing its behaviour in specific situations. It is argued that penetration testing can be applied to identify weaknesses of the system. Both can be applied to improve autonomous driving systems. The shadowing method reveals behaviour in a naturalistic setting while ensuring safety. It can be seen as a theoretical driving exam. The supervised driving method can be utilised to decide if the technology is safe enough. It has potential to be developed into a practical driving exam.
机译:背景技术自动车可以使交通更安全,更方便,高效和可持续。他们保证了个人出租车的便利,无需人类司机。人工智能将改用车辆。特别是深度神经网络(DNN)由于其特殊表现而言,尤其是感知的特殊表现提供了一种态度。 DNNS Excel在识别传感器数据中的对象,这对于自动驾驶至关重要。这些网络通过培训而不是显式编程构建其决策逻辑。这项技术的缺点是无法审查源代码以评估系统的安全性。这导致了当前使用的监管批准方法的情况不起作用,以验证有希望的新技术。本文的目的是突出了四种方法,这可能有助于了解自主汽车的黑匣子技术系统,通过重点关注其行为。建议通过在特定情况下观察其行为来模拟DNN的内部工作的实验心理学。认为可以应用渗透测试来识别系统的弱点。两者都可以应用于改善自主驾驶系统。遮蔽方法在确保安全的同时揭示自然主义中的行为。它可以被视为理论驾驶考试。可以利用监督的驱动方法来决定技术是否足够安全。它有可能开发成实际的驾驶考试。

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