Triplet Contrastive Representation Learning for Unsupervised Vehicle Re-identification
Fei Shen,
Xiaoyu Du,
Liyan Zhang
et al.
Abstract:Part feature learning plays a crucial role in achieving fine-grained semantic understanding in unsupervised vehicle re-identification. However, existing approaches directly model part and global features, which can easily lead to severe gradient vanishing issues due to their unequal feature information and unreliable pseudo-labels. To address this problem, in this paper, we propose a triplet contrastive representation learning (TCRL) framework, which leverages cluster features to bridge the part features and g… Show more
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