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Reconstructing Groups of People with Hypergraph Relational Reasoning

About

Due to the mutual occlusion, severe scale variation, and complex spatial distribution, the current multi-person mesh recovery methods cannot produce accurate absolute body poses and shapes in large-scale crowded scenes. To address the obstacles, we fully exploit crowd features for reconstructing groups of people from a monocular image. A novel hypergraph relational reasoning network is proposed to formulate the complex and high-order relation correlations among individuals and groups in the crowd. We first extract compact human features and location information from the original high-resolution image. By conducting the relational reasoning on the extracted individual features, the underlying crowd collectiveness and interaction relationship can provide additional group information for the reconstruction. Finally, the updated individual features and the localization information are used to regress human meshes in camera coordinates. To facilitate the network training, we further build pseudo ground-truth on two crowd datasets, which may also promote future research on pose estimation and human behavior understanding in crowded scenes. The experimental results show that our approach outperforms other baseline methods both in crowded and common scenarios. The code and datasets are publicly available at https://github.com/boycehbz/GroupRec.

Buzhen Huang, Jingyi Ju, Zhihao Li, Yangang Wang• 2023

Related benchmarks

TaskDatasetResultRank
3D Human Interaction ReconstructionHi4D
MPJPE82.4
14
3D Human Interaction Reconstruction3DPW (interactive sequences)
MPJPE73.3
12
3D Human Interaction ReconstructionHarmony4D
MPJPE119
8
3D Human Interaction Reconstruction3DPW
MPJPE73.3
6
3D human reconstructionHi4D
Accel25.2
2
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