ADEPT:模拟自动驾驶测试平台

Sen Wang, Zhuheng Sheng, Jingwei Xu, Taolue Chen, Junjun Zhu, Shuhui Zhang, Y. Yao, Xiaoxing Ma
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引用次数: 2

摘要

自动驾驶系统的有效质量保证方法近年来引起了越来越多的关注。本文报道了一种新的测试平台ADEPT,旨在为基于dnn的ADS提供实用的、全面的测试设施。ADEPT基于虚拟模拟器CARLA,提供了场景构建、ADS导入、测试执行和记录等众多测试设施。特别是,ADEPT采用了两种针对自动驾驶设计的独特测试场景生成策略。首先,我们利用现实生活中的事故报告,利用自然语言处理来制造丰富的驾驶场景。其次,我们通过考虑ADS的反馈来合成物理健壮的对抗性攻击,从而能够生成闭环测试场景。实验验证了该平台的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ADEPT: A Testing Platform for Simulated Autonomous Driving
Effective quality assurance methods for autonomous driving systems ADS have attracted growing interests recently. In this paper, we report a new testing platform ADEPT, aiming to provide practically realistic and comprehensive testing facilities for DNN-based ADS. ADEPT is based on the virtual simulator CARLA and provides numerous testing facilities such as scene construction, ADS importation, test execution and recording, etc. In particular, ADEPT features two distinguished test scenario generation strategies designed for autonomous driving. First, we make use of real-life accident reports from which we leverage natural language processing to fabricate abundant driving scenarios. Second, we synthesize physically-robust adversarial attacks by taking the feedback of ADS into consideration and thus are able to generate closed-loop test scenarios. The experiments confirm the efficacy of the platform.
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