A Study on Testing Autonomous Driving Systems

Xudong Zhang, Yan Cai, Z. Yang
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引用次数: 2

Abstract

In recent years, with the rapid development of artificial intelligence and other related technologies, the traditional automotive industry has begun to integrate information technology in an all-round way. Due to the contributions of computer vision, deep learning, and sensitive sensors, autonomous driving systems (ADS) has now achieved great progress. But as we all know, the primary requirement for autonomous driving is absolute safety. However, technology innovation has brought great challenges to the testing of ADS, and due to the high cost of field testing, industrial companies rarely open relevant test data for research. This paper aims to study existing testing methods for ADS. Our study shows that there are few published works focusing on testing aspects of ADS. However, there is an obvious trend on the record of published works on testing ADS. Also, we can find that most reviewed works focus on setting up virtual test environment including generating, synthesizing, or reconstructing test input data. They either treat ADS as a whole to conduct (sub) system level testing or limit ADS into certain scenarios. From this, we believe that testing of ADS has just begun to attract researchers' interest; great effort should be paid before ADS becomes maturer.
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自动驾驶系统测试研究
近年来,随着人工智能等相关技术的快速发展,传统汽车行业开始全面融入信息技术。由于计算机视觉、深度学习和敏感传感器的贡献,自动驾驶系统(ADS)现在已经取得了很大的进展。但我们都知道,自动驾驶的首要要求是绝对安全。然而,技术创新给ADS的测试带来了巨大的挑战,并且由于现场测试成本高,工业公司很少开放相关测试数据进行研究。本文旨在对现有的ADS测试方法进行研究。我们的研究表明,针对ADS测试方面的已发表作品很少,但ADS测试方面的已发表作品记录有明显的趋势,并且我们可以发现,大多数被审查的作品都集中在虚拟测试环境的建立上,包括生成、合成或重构测试输入数据。他们要么将ADS作为一个整体来进行(子系统)级测试,要么将ADS限制在某些场景中。由此,我们认为ADS的测试才刚刚开始吸引研究人员的兴趣;在ADS成熟之前,我们应该付出巨大的努力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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