Image-Level Adaptive Adversarial Ranking for Person Re-Identification

Xi Yang;Huanling Liu;Nannan Wang;Xinbo Gao
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Abstract

The potential vulnerability of deep neural networks and the complexity of pedestrian images, greatly limits the application of person re-identification techniques in the field of smart security. Current attack methods often focus on generating carefully crafted adversarial samples or only disrupting the metric distances between targets and similar pedestrians. However, both aspects are crucial for evaluating the security of methods adapted for person re-identification tasks. For this reason, we propose an image-level adaptive adversarial ranking method that comprehensively considers two aspects to adapt to changes in pedestrians in the real world and effectively evaluate the robustness of models in adversarial environments. To generate more refined adversarial samples, our image representation enhancement module leverages channel-wise information entropy, assigning varying weights to different channels to produce images with richer information content, along with a generative adversarial network to create adversarial samples. Subsequently, for adaptive perturbation of ranking, the adaptive weight confusion ranking loss is presented to calculate the weights of distances between positive or negative samples and query samples. It endeavors to push positive samples away from query samples and bring negative samples closer, thereby interfering with the ranking of system. Notably, this method requires no additional hyperparameter tuning or extra data training, making it an adaptive attack strategy. Experimental results on large-scale datasets such as Market1501, CUHK03, and DukeMTMC demonstrate the effectiveness of our method in attacking ReID systems.
用于人员再识别的图像级自适应对抗排序
深度神经网络的潜在脆弱性和行人图像的复杂性,极大地限制了人员再识别技术在智能安防领域的应用。目前的攻击方法通常侧重于生成精心制作的对抗样本,或仅破坏目标与相似行人之间的度量距离。然而,这两个方面对于评估适用于人员再识别任务的方法的安全性至关重要。因此,我们提出了一种图像级自适应对抗排序方法,该方法综合考虑了两个方面,以适应真实世界中行人的变化,并有效评估模型在对抗环境中的鲁棒性。为了生成更精细的对抗样本,我们的图像表征增强模块利用信道信息熵,为不同信道分配不同权重,以生成具有更丰富信息内容的图像,同时利用对抗生成网络生成对抗样本。随后,为了对排序进行自适应扰动,提出了自适应权重混淆排序损失,以计算正样本或负样本与查询样本之间距离的权重。它致力于将正样本推离查询样本,将负样本拉近,从而干扰系统的排序。值得注意的是,这种方法不需要额外的超参数调整或额外的数据训练,因此是一种自适应攻击策略。在 Market1501、CUHK03 和 DukeMTMC 等大型数据集上的实验结果证明了我们的方法在攻击 ReID 系统方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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