Deep Neural Networks (DNNs) for perception in automated driving have been extensively studied, while achieving strong results in detection performance on pre-annotated test sets. However, there has been a gap in the literature on a systematic analysis of DNNs behavior to investigate the factors contributing to their misbehavior. As part of DNNs safety, we propose to both analyze DNNs behavior in challenging scenarios as well as the respective factors that actually contribute to their misbehavior. Although some of such factors have been studied individually, there is not a thorough study to compare all together in a systematic manner to unveil the impact of each factor leading to DNNs failures. In this paper, we propose an approach to evaluate the DNNs performance limiting factors (PLF), and their contribution to the DNNs misbehavior. Accordingly, we analyze seventeen factors from the literature, introduce four novel factors and conduct an assessment on all of them to assess their potential as a PLF. Furthermore, we evaluate our results based on six state-of-the-art pedestrian detection DNNs including three detection tasks. For our experiments, we study a synthetic as well as a real-world dataset for pedestrian detection. We show that there exist various similarities and dissimilarities when comparing the PLF from a synthetic dataset to a real one, and discuss the causes and effects of such relations. Furthermore, we provide an approach to analyze the common factors from both real-world as well as synthetic datasets which might have similar effects on various DNNs performance.
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Deep Neural Networks (DNNs) for perception in automated driving have been extensively studied, while achieving strong results in detection performance on pre-annotated test sets. However, there has been a gap in the literature on a systematic analysis of DNNs behavior to investigate the factors contributing to their misbehavior. As part of DNNs safety, we propose to both analyze DNNs behavior in challenging scenarios as well as the respective factors that actually contribute to their misbehavior...
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