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Improving the Robustness of Deep Neural Networks via Adversarial Training with Triplet Loss

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arxiv 1905.11713 v1 pith:DBAY2KE7 submitted 2019-05-28 cs.LG stat.ML

Improving the Robustness of Deep Neural Networks via Adversarial Training with Triplet Loss

classification cs.LG stat.ML
keywords adversariallosstripletdnnsmethodsrobustnesstrainingdeep
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Recent studies have highlighted that deep neural networks (DNNs) are vulnerable to adversarial examples. In this paper, we improve the robustness of DNNs by utilizing techniques of Distance Metric Learning. Specifically, we incorporate Triplet Loss, one of the most popular Distance Metric Learning methods, into the framework of adversarial training. Our proposed algorithm, Adversarial Training with Triplet Loss (AT$^2$L), substitutes the adversarial example against the current model for the anchor of triplet loss to effectively smooth the classification boundary. Furthermore, we propose an ensemble version of AT$^2$L, which aggregates different attack methods and model structures for better defense effects. Our empirical studies verify that the proposed approach can significantly improve the robustness of DNNs without sacrificing accuracy. Finally, we demonstrate that our specially designed triplet loss can also be used as a regularization term to enhance other defense methods.

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    Adversarial perturbations possess an inherently low-rank structure that enables more efficient and effective black-box adversarial attacks via subspace projection.