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Papers/Cluster Contrast for Unsupervised Person Re-Identification

Cluster Contrast for Unsupervised Person Re-Identification

Zuozhuo Dai, Guangyuan Wang, Weihao Yuan, Xiaoli Liu, Siyu Zhu, Ping Tan

2021-03-22Vehicle Re-IdentificationClusteringPerson Re-IdentificationUnsupervised Person Re-IdentificationUnsupervised Domain AdaptationDomain Adaptation
PaperPDFCode(official)CodeCode(official)Code

Abstract

State-of-the-art unsupervised re-ID methods train the neural networks using a memory-based non-parametric softmax loss. Instance feature vectors stored in memory are assigned pseudo-labels by clustering and updated at instance level. However, the varying cluster sizes leads to inconsistency in the updating progress of each cluster. To solve this problem, we present Cluster Contrast which stores feature vectors and computes contrast loss at the cluster level. Our approach employs a unique cluster representation to describe each cluster, resulting in a cluster-level memory dictionary. In this way, the consistency of clustering can be effectively maintained throughout the pipline and the GPU memory consumption can be significantly reduced. Thus, our method can solve the problem of cluster inconsistency and be applicable to larger data sets. In addition, we adopt different clustering algorithms to demonstrate the robustness and generalization of our framework. The application of Cluster Contrast to a standard unsupervised re-ID pipeline achieves considerable improvements of 9.9%, 8.3%, 12.1% compared to state-of-the-art purely unsupervised re-ID methods and 5.5%, 4.8%, 4.4% mAP compared to the state-of-the-art unsupervised domain adaptation re-ID methods on the Market, Duke, and MSMT17 datasets. Code is available at https://github.com/alibaba/cluster-contrast.

Results

TaskDatasetMetricValueModel
Person Re-IdentificationPersonXRank-194.4Cluster Contrast
Person Re-IdentificationPersonXRank-599.3Cluster Contrast
Person Re-IdentificationPersonXmAP84.7Cluster Contrast
Person Re-IdentificationMSMT17Rank-162Cluster Contrast
Person Re-IdentificationMSMT17Rank-1076.7Cluster Contrast
Person Re-IdentificationMSMT17Rank-571.8Cluster Contrast
Person Re-IdentificationMSMT17mAP33Cluster Contrast
Person Re-IdentificationMarket-1501MAP83Cluster Contrast
Person Re-IdentificationMarket-1501Rank-192.9Cluster Contrast
Person Re-IdentificationMarket-1501Rank-1098Cluster Contrast
Person Re-IdentificationMarket-1501Rank-597.2Cluster Contrast
Intelligent SurveillanceVeRi-776Rank-1092.8Cluster Contrast
Intelligent SurveillanceVeRi-776Rank186.2Cluster Contrast
Intelligent SurveillanceVeRi-776Rank590.5Cluster Contrast
Intelligent SurveillanceVeRi-776mAP40.8Cluster Contrast
Vehicle Re-IdentificationVeRi-776Rank-1092.8Cluster Contrast
Vehicle Re-IdentificationVeRi-776Rank186.2Cluster Contrast
Vehicle Re-IdentificationVeRi-776Rank590.5Cluster Contrast
Vehicle Re-IdentificationVeRi-776mAP40.8Cluster Contrast

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