论文标题

长期重新识别的抽样不可知特征表示

Sampling Agnostic Feature Representation for Long-Term Person Re-identification

论文作者

Yang, Seongyeop, Kang, Byeongkeun, Lee, Yeejin

论文摘要

人重新识别是识别非重叠摄像机中个人的问题。尽管在重新识别问题中已经取得了显着进展,但由于同一人的外观变化以及其他外观相似的人,这仍然是一个具有挑战性的问题。一些先前的作品通过将正样本的特征与负面的特征分开来解决这些问题。但是,现有模型的性能在很大程度上取决于用于培训的样品的特征和统计数据。因此,我们提出了一个名为“采样独立鲁棒特征表示网络”(SIRNET)的新型框架,该框架学习了从随机选择的样品中嵌入的分离特征。对精心设计的采样独立的最大差异损失引入了与群集同一人的模型样本。结果,所提出的框架可以使用学到的功能产生额外的硬质量/积极因素,从而可以更好地辨别其他身份。大规模基准数据集的广泛实验结果验证了所提出的模型比以前的最新模型更有效。

Person re-identification is a problem of identifying individuals across non-overlapping cameras. Although remarkable progress has been made in the re-identification problem, it is still a challenging problem due to appearance variations of the same person as well as other people of similar appearance. Some prior works solved the issues by separating features of positive samples from features of negative ones. However, the performances of existing models considerably depend on the characteristics and statistics of the samples used for training. Thus, we propose a novel framework named sampling independent robust feature representation network (SirNet) that learns disentangled feature embedding from randomly chosen samples. A carefully designed sampling independent maximum discrepancy loss is introduced to model samples of the same person as a cluster. As a result, the proposed framework can generate additional hard negatives/positives using the learned features, which results in better discriminability from other identities. Extensive experimental results on large-scale benchmark datasets verify that the proposed model is more effective than prior state-of-the-art models.

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