论文标题

通过对抗蒸馏培训,防御ECG分类中的对抗攻击

Defending Against Adversarial Attack in ECG Classification with Adversarial Distillation Training

论文作者

Shao, Jiahao, Geng, Shijia, Fu, Zhaoji, Xu, Weilun, Liu, Tong, Hong, Shenda

论文摘要

在诊所中,医生依靠心电图(ECG)评估严重的心脏病。由于技术的发展和健康意识的提高,目前使用医疗和商业设备获得了心电图信号。由于它们的准确率很高,因此深层神经网络(DNN)可用于分析这些信号。但是,研究人员发现,对抗攻击可以显着降低DNN的准确性。已经进行了研究,以捍卫基于ECG的DNN免受传统的对抗攻击,例如预计梯度下降(PGD)和针对ECG分类的平滑对抗扰动(SAP);但是,据我们所知,尚无研究彻底探讨针对针对ECG分类的对抗性攻击的防御。因此,我们进行了不同的实验,以探索针对靶向ECG分类的白盒对抗攻击和黑框对抗攻击的影响,并发现某些共同的防御方法对这些攻击表现良好。此外,我们提出了一种新的防御方法,称为对抗蒸馏训练(ADT),该方法来自防御性蒸馏,可以有效地改善DNN的概括性能。结果表明,与其他基线方法相比,我们的方法针对针对ECG分类的对抗性攻击更有效地执行,即对抗性训练,防御性蒸馏,Jacob正则化和噪声对信号比率正则化。此外,我们发现我们的方法在低噪声水平的PGD攻击方面表现更好,这意味着我们的方法具有更强的鲁棒性。

In clinics, doctors rely on electrocardiograms (ECGs) to assess severe cardiac disorders. Owing to the development of technology and the increase in health awareness, ECG signals are currently obtained by using medical and commercial devices. Deep neural networks (DNNs) can be used to analyze these signals because of their high accuracy rate. However, researchers have found that adversarial attacks can significantly reduce the accuracy of DNNs. Studies have been conducted to defend ECG-based DNNs against traditional adversarial attacks, such as projected gradient descent (PGD), and smooth adversarial perturbation (SAP) which targets ECG classification; however, to the best of our knowledge, no study has completely explored the defense against adversarial attacks targeting ECG classification. Thus, we did different experiments to explore the effects of defense methods against white-box adversarial attack and black-box adversarial attack targeting ECG classification, and we found that some common defense methods performed well against these attacks. Besides, we proposed a new defense method called Adversarial Distillation Training (ADT) which comes from defensive distillation and can effectively improve the generalization performance of DNNs. The results show that our method performed more effectively against adversarial attacks targeting on ECG classification than the other baseline methods, namely, adversarial training, defensive distillation, Jacob regularization, and noise-to-signal ratio regularization. Furthermore, we found that our method performed better against PGD attacks with low noise levels, which means that our method has stronger robustness.

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