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3 months ago

Parameter-Efficient Person Re-identification in the 3D Space

Zhedong Zheng Nenggan Zheng Yi Yang

Parameter-Efficient Person Re-identification in the 3D Space

Abstract

People live in a 3D world. However, existing works on person re-identification (re-id) mostly consider the semantic representation learning in a 2D space, intrinsically limiting the understanding of people. In this work, we address this limitation by exploring the prior knowledge of the 3D body structure. Specifically, we project 2D images to a 3D space and introduce a novel parameter-efficient Omni-scale Graph Network (OG-Net) to learn the pedestrian representation directly from 3D point clouds. OG-Net effectively exploits the local information provided by sparse 3D points and takes advantage of the structure and appearance information in a coherent manner. With the help of 3D geometry information, we can learn a new type of deep re-id feature free from noisy variants, such as scale and viewpoint. To our knowledge, we are among the first attempts to conduct person re-identification in the 3D space. We demonstrate through extensive experiments that the proposed method (1) eases the matching difficulty in the traditional 2D space, (2) exploits the complementary information of 2D appearance and 3D structure, (3) achieves competitive results with limited parameters on four large-scale person re-id datasets, and (4) has good scalability to unseen datasets. Our code, models and generated 3D human data are publicly available at https://github.com/layumi/person-reid-3d .

Code Repositories

layumi/person-reid-3d
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
3d-point-cloud-classification-on-modelnet40OG-Net-Small
Mean Accuracy: 90.5
Number of params: 1.22M
Overall Accuracy: 93.3
person-re-identification-on-dukemtmc-reidOGNet
Rank-1: 76.66
mAP: 57.89
person-re-identification-on-dukemtmc-reid-1OGNet
Rank-1: 41.4
mAP: 17.2
person-re-identification-on-market-1501OGNet
Rank-1: 87.74
mAP: 69.52
person-re-identification-on-market-1501-1OGNet
Rank-1: 31.3
mAP: 16.3
person-re-identification-on-msmt17OGNet
Rank-1: 47.71
mAP: 23.01
unsupervised-domain-adaptation-on-duke-toOGNet
mAP: 14.7
rank-1: 36.4
rank-10: -
rank-5: -
unsupervised-domain-adaptation-on-duke-to-1OG-Net
mAP: 1.9
rank-1: 6.8
unsupervised-domain-adaptation-on-market-toOG-Net
mAP: 13.7
rank-1: 26.4
rank-10: -
rank-5: -
unsupervised-domain-adaptation-on-market-to-1OG-Net
mAP: 1.7
rank-1: 5.9
unsupervised-person-re-identification-onOGNet
Rank-1: 26.4
mAP: 13.7
unsupervised-person-re-identification-on-1OGNet
Rank-1: 36.4
mAP: 14.7
unsupervised-person-re-identification-on-2OG-Net
Rank-1: 5.9
mAP: 1.7
unsupervised-person-re-identification-on-3OGNet
Rank-1: 6.8
mAP: 1.9
unsupervised-person-re-identification-on-6OGNet
Rank-1: 35.3
mAP: 19.3
unsupervised-person-re-identification-on-7OG-Net
Rank-1: 40.1
mAP: 17.6

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Parameter-Efficient Person Re-identification in the 3D Space | Papers | HyperAI