Adaptive Intra-Class Variation Contrastive Learning for Unsupervised Person Re-Identification
- URL: http://arxiv.org/abs/2404.04665v1
- Date: Sat, 6 Apr 2024 15:48:14 GMT
- Title: Adaptive Intra-Class Variation Contrastive Learning for Unsupervised Person Re-Identification
- Authors: Lingzhi Liu, Haiyang Zhang, Chengwei Tang, Tiantian Zhang,
- Abstract summary: We propose an adaptive intra-class variation contrastive learning algorithm for unsupervised Re-ID, called AdaInCV.
The algorithm quantitatively evaluates the learning ability of the model for each class by considering the intra-class variations after clustering.
To be more specific, two new strategies are proposed: Adaptive Sample Mining (AdaSaM) and Adaptive Outlier Filter (AdaOF)
- Score: 10.180143197144803
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The memory dictionary-based contrastive learning method has achieved remarkable results in the field of unsupervised person Re-ID. However, The method of updating memory based on all samples does not fully utilize the hardest sample to improve the generalization ability of the model, and the method based on hardest sample mining will inevitably introduce false-positive samples that are incorrectly clustered in the early stages of the model. Clustering-based methods usually discard a significant number of outliers, leading to the loss of valuable information. In order to address the issues mentioned before, we propose an adaptive intra-class variation contrastive learning algorithm for unsupervised Re-ID, called AdaInCV. And the algorithm quantitatively evaluates the learning ability of the model for each class by considering the intra-class variations after clustering, which helps in selecting appropriate samples during the training process of the model. To be more specific, two new strategies are proposed: Adaptive Sample Mining (AdaSaM) and Adaptive Outlier Filter (AdaOF). The first one gradually creates more reliable clusters to dynamically refine the memory, while the second can identify and filter out valuable outliers as negative samples.
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