A Tunable Framework for Joint Trade-Off Between Accuracy and Multi-Norm Robustness

Haonan Zheng, Xinyang Deng, Wen Jiang

科研成果: 期刊稿件文章同行评审

摘要

Adversarial training enhances the robustness of deep networks at the cost of reduced natural accuracy. Moreover, networks fortified struggle to simultaneously defend against both sparse and dense perturbations. Thus, achieving a better trade-off between natural accuracy and robustness against both types of noise remains an open challenge. Many proposed approaches explore solutions based on network architecture optimization. But, in most cases, the additional parameters introduced are static, meaning that once network training is completed, the performance remains unchanged, and retraining is required to explore other potential trade-offs. We propose two dynamic auxiliary modules, CBNI and CCNI, which can fine-tune convolutional layers and BN layers, respectively, during the inference phase, so that the trained network can still adjust its emphasis on natural examples, sparse perturbations or dense perturbations. This means our network can achieve an appropriate balance to adapt to the operational environment in situ, without retraining. Furthermore, fully exploring natural capability and robustness limits is a complex and time-consuming problem. Our method can serve as an efficient research tool to examine the achievable trade-offs with just a single training. It is worth mentioning that CCNI is a linear adjustment and CBNI does not directly participate in the inference process. Therefore, both of them don't introduce redundant parameters and inference latency. Experiments indicate that our network can indeed achieve a complex trade-off between accuracy and adversarial robustness, producing performance that is comparable to or even better than existing methods.

源语言英语
页(从-至)1490-1501
页数12
期刊IEEE Transactions on Emerging Topics in Computational Intelligence
9
2
DOI
出版状态已出版 - 2025

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