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Sliced Wasserstein adversarial training for improving adversarial robustness

Authors
Lee, WoojinLee, SungyoonKim, HokiLee, Jaewook
Issue Date
Aug-2024
Publisher
Springer Verlag
Keywords
Adversarial attack; Adversarial defense; Adversarial training; Sliced Wasserstein Distance
Citation
Journal of Ambient Intelligence and Humanized Computing, v.15, no.8, pp 3229 - 3242
Pages
14
Indexed
SCOPUS
Journal Title
Journal of Ambient Intelligence and Humanized Computing
Volume
15
Number
8
Start Page
3229
End Page
3242
URI
https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/209348
DOI
10.1007/s12652-024-04791-1
ISSN
1868-5137
1868-5145
Abstract
Recently, deep-learning-based models have achieved impressive performance on tasks that were previously considered to be extremely challenging. However, recent works have shown that various deep learning models are susceptible to adversarial data samples. In this paper, we propose the sliced Wasserstein adversarial training method to encourage the logit distributions of clean and adversarial data to be similar to each other. We capture the dissimilarity between two distributions using the Wasserstein metric and then align distributions using an end-to-end training process. We present the theoretical background of the motivation for our study by providing generalization error bounds for adversarial data samples. We performed experiments on three standard datasets and the results demonstrate that our method is more robust against white box attacks compared to previous methods.
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