On the Robustness of Redundant Teacher-Student Frameworks for Semantic Segmentation

Abstract

The trend towards autonomous systems in today’s technology comes with the need for environment perception. Deep neural networks (DNNs) constantly showed state-ofthe-art performance over the last few years in visual machine perception, e.g., semantic segmentation. While DNNs work fine on uncorrupted data, recently introduced adversarial examples (AEs) led to misclassification with high confidence. This lack of robustness against such adversarial attacks questions the use of DNNs in safety-critical autonomous systems, e.g., autonomous driving vehicles. In this work, we address the mentioned problem with the use of a redundant teacher-student framework, consisting of a static teacher network (T), a static student network (S), and a constantly adapting student network (A). By using this triplet in combination with a novel inverse feature matching (IFM) loss, we show that a significant robustness increase of student DNNs against adversarial attacks is achieveable, while maintaining semantic segmentation quality at a reasonably high level. With our approach, we manage to increase the mean intersection over union (mean IoU) ratio between static student adversarial examples and clean images from about 35 % to about 80 % on the Cityscapes dataset. Moreover, our proposed method can be integrated into any DNN-based perception mechanism to increase the (online) robustness in an adversarial environment, created from static model knowledge.

Publication
In Proc. of CVF/IEEE Conference on Computer Vision and Pattern Recognition - Workshops
Andreas Bär
Andreas Bär
PhD Student / Research Associate