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Open Questions in Testing of Learned Computer Vision Functions for Automated Driving

机译:测试自动驾驶学习的计算机视觉功能中的未解决问题

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摘要

Vision is an important sensing modality in automated driving. Deep learning-based approaches have gained popularity for different computer vision (CV) tasks such as semantic segmentation and object detection. However, the black-box nature of deep neural nets (DNN) is a challenge for practical software verification. With this paper, we want to initiate a discussion in the academic community about research questions w.r.t. software testing of DNNs for safety-critical CV tasks. To this end, we provide an overview of related work from various domains, including software testing, machine learning and computer vision and derive a set of open research questions to start discussion between the fields.
机译:视觉是自动驾驶中的重要传感方式。基于深度学习的方法已在诸如语义分割和对象检测之类的不同计算机视觉(CV)任务中获得普及。但是,深层神经网络(DNN)的黑盒性质对于实际的软件验证是一个挑战。通过本文,我们希望在学术界中发起有关研究问题的讨论。针对安全关键的简历任务的DNN软件测试。为此,我们提供了来自各个领域的相关工作的概述,包括软件测试,机器学习和计算机视觉,并得出了一系列开放研究问题,以开始各个领域之间的讨论。

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