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Hierarchical Clustering With Hard-Batch Triplet Loss for Person Re-Identification

机译:具有硬批量三重损失的层次聚类,用于人员重新识别

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For clustering-guided fully unsupervised person reidentification (re-ID) methods, the quality of pseudo labels generated by clustering directly decides the model performance. In order to improve the quality of pseudo labels in existing methods, we propose the HCT method which combines hierarchical clustering with hard-batch triplet loss. The key idea of HCT is to make full use of the similarity among samples in the target dataset through hierarchical clustering, reduce the influence of hard examples through hard-batch triplet loss, so as to generate high quality pseudo labels and improve model performance. Specifically, (1) we use hierarchical clustering to generate pseudo labels, (2) we use PK sampling in each iteration to generate a new dataset for training, (3) we conduct training with hard-batch triplet loss and evaluate model performance in each iteration. We evaluate our model on Market-1501 and DukeMTMC-reID. Results show that HCT achieves 56.4% mAP on Market-1501 and 50.7% mAP on DukeMTMC-reID which surpasses state-of-the-arts a lot in fully unsupervised re-ID and even better than most unsupervised domain adaptation (UDA) methods which use the labeled source dataset. Code will be released soon on https://github.com/zengkaiwei/HCT
机译:对于由聚类指导的完全无监督人员重新识别(re-ID)方法,由聚类生成的伪标签的质量直接决定了模型的性能。为了提高现有方法中伪标签的质量,我们提出了一种HCT方法,该方法将分层聚类与硬批三重态损失相结合。 HCT的关键思想是通过层次聚类充分利用目标数据集中样本之间的相似性,通过硬批量三元组损失减少硬样本的影响,从而生成高质量的伪标签并提高模型性能。具体来说,(1)我们使用分层聚类来生成伪标签,(2)我们在每次迭代中使用PK采样来生成用于训练的新数据集,(3)我们在进行硬批三重损失的情况下进行训练并评估每个模型的性能迭代。我们在Market-1501和DukeMTMC-reID上评估我们的模型。结果表明,HCT在Market-1501上达到了56.4%的mAP,在DukeMTMC-reID上达到了50.7%的mAP,在完全无监督的re-ID方面远远超过了最新技术,甚至比大多数无监督的域自适应(UDA)方法要好。使用标记的源数据集。代码将很快在https://github.com/zengkaiwei/HCT上发布

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