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DDRN:a Data Distribution Reconstruction Network for Occluded Person Re-Identification

About

In occluded person re-identification(ReID), severe occlusions lead to a significant amount of irrelevant information that hinders the accurate identification of individuals. These irrelevant cues primarily stem from background interference and occluding interference, adversely affecting the final retrieval results. Traditional discriminative models, which rely on the specific content and positions of the images, often misclassify in cases of occlusion. To address these limitations, we propose the Data Distribution Reconstruction Network (DDRN), a generative model that leverages data distribution to filter out irrelevant details, enhancing overall feature perception ability and reducing irrelevant feature interference. Additionally, severe occlusions lead to the complexity of the feature space. To effectively handle this, we design a multi-center approach through the proposed Hierarchical SubcenterArcface (HS-Arcface) loss function, which can better approximate complex feature spaces. On the Occluded-Duke dataset, we achieved a mAP of 62.4\% (+1.1\%) and a rank-1 accuracy of 71.3\% (+0.6\%), surpassing the latest state-of-the-art methods(FRT) significantly.

Zhaoyong Wang, Yujie Liu, Mingyue Li, Wenxin Zhang, Zongmin Li• 2024

Related benchmarks

TaskDatasetResultRank
Person Re-IdentificationMarket 1501
mAP88.4
999
Person Re-IdentificationDukeMTMC
R1 Accuracy90.8
120
Person Re-IdentificationOccluded-reID
R-184.7
80
Person Re-IdentificationOccluded-DukeMTMC
Rank-1 Acc71.3
55
Partial Person Re-identificationPartialREID
R183.3
21
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