The University of California, Davis (UC Davis) is a top-tier public research university recognized for excellence in agriculture, environmental science, engineering, and data-enabled disciplines, with roots reaching back to 1905. NEC Laboratories America partners with UC Davis to advance joint research in robust AI, sensing and environmental monitoring, networking systems, and data-driven systems modeling. Read our latest publications with the University of California, Davis.

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Towards Robustness of Deep Neural Networks via Networks via Regularization

Recent studies have demonstrated the vulnerability of deep neural networks against adversarial examples. In-spired by the observation that adversarial examples often lie outside the natural image data manifold and the intrinsic dimension of image data is much smaller than its pixel space dimension, we propose to embed high-dimensional input images into a low-dimensional space and apply regularization on the embedding space to push the adversarial examples back to the manifold. The proposed framework is called Embedding Regularized Classifier (ER-Classifier), which improves the adversarial robustness of the classifier through embedding regularization. Besides improving classification accuracy against adversarial examples, the framework can be combined with detection methods to detect adversarial examples. Experimental results on several benchmark datasets show that, our proposed framework achieves good performance against strong adversarial at-tack methods.