Revisiting Neuron Coverage and Its Application to Test Generation

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Abstract

The use of neural networks in perception pipelines of autonomous systems such as autonomous driving is indispensable due to their outstanding performance. But, at the same time their complexity poses a challenge with respect to safety. An important question in this regard is how to substantiate test sufficiency for such a function. One approach from software testing literature is that of coverage metrics. Similar notions of coverage, called neuron coverage, have been proposed for deep neural networks and try to assess to what extent test input activates neurons in a network. Still, the correspondence between high neuron coverage and safety-related network qualities remains elusive. Potentially, a high coverage could imply sufficiency of test data. In this paper, we argue that the coverage metrics as discussed in the current literature do not satisfy these high expectations and present a line of experiments from the field of computer vision to prove this claim.

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Abrecht, S., Akila, M., Gannamaneni, S. S., Groh, K., Heinzemann, C., Houben, S., & Woehrle, M. (2020). Revisiting Neuron Coverage and Its Application to Test Generation. In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) (Vol. 12235 LNCS, pp. 289–301). Springer Science and Business Media Deutschland GmbH. https://doi.org/10.1007/978-3-030-55583-2_21

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