Distribution-Guided Hierarchical Calibration Contrastive Network for Unsupervised Person Re-Identification

Autor: Li, Yongxi, Tang, Wenzhong, Wang, Shuai, Qian, Shengsheng, Xu, Changsheng
Zdroj: IEEE Transactions on Circuits and Systems for Video Technology; August 2024, Vol. 34 Issue: 8 p7149-7164, 16p
Abstrakt: The person re-identification task aims to retrieve the same identity under different cameras. The main difficulties of the task lie in the collection of a large amount of annotated data and the diversity of pedestrians. Therefore, how to learn a robust and discriminative representation feature with unlabeled data is the key to this task. The pseudo label based methods have shown significant effectiveness in the field by generating pseudo labels from unlabeled data instead of ground-truth labels. However, existing researches typically suffer two limitations: 1) The extracted features are insufficient to reflect the subtle local semantics; 2) The pseudo labels generated by clustering methods cannot avoid introducing noise, which will seriously affect the performance of the discriminative feature. In this paper, to address the above problems, we propose a Distribution-Guided Hierarchical Calibration Contrastive Network (DHCCN) to better exploit local clues and hierarchical representation, which can consider cross-granularity consistency and reduce the noise of pseudo labels by the calibrated feature distribution. A Hierarchical Feature Extractor is employed to capture the multi-granularity response of each image, and fuse both global salience and local subtle texture information of a pedestrian to generate the hierarchical feature. In addition, to reduce the error of the pseudo labels, we introduce a Feature Distribution Corrector to calibrate noisy features of low-confidence samples evaluated by a Gaussian Mixture Model. At last, we integrate cross-granularity consistency constraint by the difference between the global and local feature, which can help generate more accurate feature embedding and improve robustness of the model. Therefore, we can receive a performance that is close to the supervised person re-identification task by narrowing the gap between the pseudo and ground-truth label. Experiments on four standard benchmarks demonstrate the effectiveness of our method against the state-of-the-art unsupervised re-identification methods. The code is available at https://github.com/Li-Yongxi/2023-DHCCN.
Databáze: Supplemental Index