ACL-SAR:用于基于骨骼的鲁棒动作识别的不可知模型对抗学习

Jiaxuan Zhu, Ming Shao, Libo Sun, Siyu Xia
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摘要

得益于现成的运动传感器和摄像头,人体骨骼数据最近在动作识别和人机交互界面中得到了广泛应用。随着深度模型在人体骨骼数据上的广泛应用,其在对抗性攻击下的脆弱性引发了越来越多的安全问题。虽然有一些作品专注于攻击策略,但在基于骨骼的动作识别中,较少有人致力于防御对手的攻击,而这并非易事。此外,对抗学习所需的标签也是基于对抗训练的防御的另一个痛点。本文针对这一任务提出了一个稳健的模型不可知论对抗学习框架。首先,我们介绍了基于骨骼的动作识别(ACL-SAR)的对抗性对比学习框架。其次,跨视角骨架数据的特性使得跨视角对抗性对比学习(CV-ACL-SAR)成为一种进一步的改进。第三,研究了对抗性攻击和防御策略,包括交替实例攻击和对抗性训练选项。为了验证我们方法的有效性,我们在 NTU-RGB+D 和 HDM05 数据集上进行了大量实验。结果表明,我们的防御策略不仅对各种对抗性攻击具有鲁棒性,而且还能保持泛化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

ACL-SAR: model agnostic adversarial contrastive learning for robust skeleton-based action recognition

ACL-SAR: model agnostic adversarial contrastive learning for robust skeleton-based action recognition

Human skeleton data have been widely explored in action recognition and the human–computer interface recently, thanks to off-the-shelf motion sensors and cameras. With the widespread usage of deep models on human skeleton data, their vulnerabilities under adversarial attacks have raised increasing security concerns. Although there are several works focusing on attack strategies, fewer efforts are put into defense against adversaries in skeleton-based action recognition, which is nontrivial. In addition, labels required in adversarial learning are another pain in adversarial training-based defense. This paper proposes a robust model agnostic adversarial contrastive learning framework for this task. First, we introduce an adversarial contrastive learning framework for skeleton-based action recognition (ACL-SAR). Second, the nature of cross-view skeleton data enables cross-view adversarial contrastive learning (CV-ACL-SAR) as a further improvement. Third, adversarial attack and defense strategies are investigated, including alternate instance-wise attacks and options in adversarial training. To validate the effectiveness of our method, we conducted extensive experiments on the NTU-RGB+D and HDM05 datasets. The results show that our defense strategies are not only robust to various adversarial attacks but can also maintain generalization.

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