Gait recognition is widely used in social security applications due to its advantages in long-distance human identification. Recently, sequence-based methods have achieved high accuracy by learning abundant temporal and spatial information. However, their robustness under adversarial attacks has not been clearly explored. In this paper, we demonstrate that the state-of-the-art gait recognition model is vulnerable to such attacks. To this end, we propose a novel temporal sparse adversarial attack method. Different from previous additive noise models which add perturbations on original samples, we employ a generative adversarial network based architecture to semantically generate adversarial high-quality gait silhouettes or video frames. Moreover, by sparsely substituting or inserting a few adversarial gait silhouettes, the proposed method ensures its imperceptibility and achieves a high attack success rate. The experimental results show that if only one-fortieth of the frames are attacked, the accuracy of the target model drops dramatically.
翻译:Gait承认由于在远程人类识别方面的优势,在社会保障应用中被广泛使用。最近,基于序列的方法通过学习丰富的时间和空间信息而实现了高度准确性。然而,在对抗性攻击下,这些方法的稳健性没有得到明确探讨。在本文中,我们证明最先进的动作识别模型很容易受到这种攻击。为此,我们提出一种新的时间上稀少的对抗性攻击方法。不同于以往添加原始样本扰动的添加式噪音模型,我们使用基于基因化对抗性网络的架构来生成高品质的对抗性格象仪或视频框架。此外,通过很少替换或插入一些对抗性格象耳胡贝,拟议方法确保其不易感性,并达到高攻击成功率。实验结果表明,如果只攻击了四分之一的框架,目标模型的准确性就会急剧下降。