Unsupervised person re-identification (Re-ID) is a promising and very challenging research problem in computer vision. Learning robust and discriminative features with unlabeled data is of central importance to Re-ID. Recently, more attention has been paid to unsupervised Re-ID algorithms based on clustered pseudo-label. However, the previous approaches did not fully exploit information of hard samples, simply using cluster centroid or all instances for contrastive learning. In this paper, we propose a Hard-sample Guided Hybrid Contrast Learning (HHCL) approach combining cluster-level loss with instance-level loss for unsupervised person Re-ID. Our approach applies cluster centroid contrastive loss to ensure that the network is updated in a more stable way. Meanwhile, introduction of a hard instance contrastive loss further mines the discriminative information. Extensive experiments on two popular large-scale Re-ID benchmarks demonstrate that our HHCL outperforms previous state-of-the-art methods and significantly improves the performance of unsupervised person Re-ID. The code of our work is available soon at https://github.com/bupt-ai-cz/HHCL-ReID.
翻译:未经监督的人重新识别(Re-ID)是计算机愿景中一个充满希望和非常具有挑战性的研究问题。学习具有未标签数据的稳健和歧视性特征对重新识别具有核心重要性。最近,更加注意基于集群伪标签的未经监督的重新识别算法。然而,以往的方法没有充分利用硬样品信息,只是使用集束机器人或所有实例进行对比性学习。在本文件中,我们提议采用硬模版制导混合对照学习(HHHCL)方法,将集束级损失与未经监督的人重新识别的试级损失相结合。我们的方法采用集束式对称式对比损失,以确保网络以更稳定的方式更新。与此同时,采用硬式对比性损失法,进一步埋下歧视性信息。对两种流行的大规模再识别基准的广泛实验表明,我们的HHCL超越了以往的状态方法,大大改进了未受监督的人再识别的性能。我们的工作守则不久将在 https://githubbb.comm-CLiz-CLA.