测试基于深度学习的自动驾驶视觉感知

Stephanie Abrecht, Lydia Gauerhof, C. Gladisch, K. Groh, Christian Heinzemann, M. Woehrle
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引用次数: 10

摘要

由于深度神经网络(dnn)在视觉感知方面令人印象深刻的性能,在自动化系统中对其使用的需求不断增加。然而,要在实践中使用深度神经网络,需要新的方法,例如用于测试。在这项工作中,我们关注的问题是如何测试基于深度学习的自动驾驶视觉感知功能。用于测试的经典方法是不够的:基于数据集分割的纯统计方法是不够的,因为测试需要解决各种目的,而不仅仅是平均情况性能。此外,由于自动驾驶开放环境下感知任务的复杂性,一个完整的规范是难以捉摸的。在本文中,我们回顾和讨论了现有的dnn视觉感知测试工作,特别关注自动驾驶的测试输入和测试oracle生成以及测试充分性。我们得出结论,该领域的dnn测试需要几个不同的测试集。我们展示了如何基于所提出的方法构建这样的测试集,解决基于所提出的方法的不同目的,并确定开放的研究问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Testing Deep Learning-based Visual Perception for Automated Driving
Due to the impressive performance of deep neural networks (DNNs) for visual perception, there is an increased demand for their use in automated systems. However, to use deep neural networks in practice, novel approaches are needed, e.g., for testing. In this work, we focus on the question of how to test deep learning-based visual perception functions for automated driving. Classical approaches for testing are not sufficient: A purely statistical approach based on a dataset split is not enough, as testing needs to address various purposes and not only average case performance. Additionally, a complete specification is elusive due to the complexity of the perception task in the open context of automated driving. In this article, we review and discuss existing work on testing DNNs for visual perception with a special focus on automated driving for test input and test oracle generation as well as test adequacy. We conclude that testing of DNNs in this domain requires several diverse test sets. We show how such tests sets can be constructed based on the presented approaches addressing different purposes based on the presented methods and identify open research questions.
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