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Papers/3D Hand Reconstruction via Aggregating Intra and Inter Gra...

3D Hand Reconstruction via Aggregating Intra and Inter Graphs Guided by Prior Knowledge for Hand-Object Interaction Scenario

Feng Shuang, Wenbo He, Shaodong Li

2024-03-043D Hand Pose EstimationGraph Attention
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Abstract

Recently, 3D hand reconstruction has gained more attention in human-computer cooperation, especially for hand-object interaction scenario. However, it still remains huge challenge due to severe hand-occlusion caused by interaction, which contain the balance of accuracy and physical plausibility, highly nonlinear mapping of model parameters and occlusion feature enhancement. To overcome these issues, we propose a 3D hand reconstruction network combining the benefits of model-based and model-free approaches to balance accuracy and physical plausibility for hand-object interaction scenario. Firstly, we present a novel MANO pose parameters regression module from 2D joints directly, which avoids the process of highly nonlinear mapping from abstract image feature and no longer depends on accurate 3D joints. Moreover, we further propose a vertex-joint mutual graph-attention model guided by MANO to jointly refine hand meshes and joints, which model the dependencies of vertex-vertex and joint-joint and capture the correlation of vertex-joint for aggregating intra-graph and inter-graph node features respectively. The experimental results demonstrate that our method achieves a competitive performance on recently benchmark datasets HO3DV2 and Dex-YCB, and outperforms all only model-base approaches and model-free approaches.

Results

TaskDatasetMetricValueModel
HandHO-3D v2PA-MPJPE (mm)8.8SemGCN
HandDexYCBAverage MPJPE (mm)13.2SemGCN
HandDexYCBMPVPE12.4SemGCN
HandDexYCBPA-MPVPE5.4SemGCN
HandDexYCBProcrustes-Aligned MPJPE5.6SemGCN
Pose EstimationHO-3D v2PA-MPJPE (mm)8.8SemGCN
Pose EstimationDexYCBAverage MPJPE (mm)13.2SemGCN
Pose EstimationDexYCBMPVPE12.4SemGCN
Pose EstimationDexYCBPA-MPVPE5.4SemGCN
Pose EstimationDexYCBProcrustes-Aligned MPJPE5.6SemGCN
Hand Pose EstimationHO-3D v2PA-MPJPE (mm)8.8SemGCN
Hand Pose EstimationDexYCBAverage MPJPE (mm)13.2SemGCN
Hand Pose EstimationDexYCBMPVPE12.4SemGCN
Hand Pose EstimationDexYCBPA-MPVPE5.4SemGCN
Hand Pose EstimationDexYCBProcrustes-Aligned MPJPE5.6SemGCN
3DHO-3D v2PA-MPJPE (mm)8.8SemGCN
3DDexYCBAverage MPJPE (mm)13.2SemGCN
3DDexYCBMPVPE12.4SemGCN
3DDexYCBPA-MPVPE5.4SemGCN
3DDexYCBProcrustes-Aligned MPJPE5.6SemGCN
3D Hand Pose EstimationHO-3D v2PA-MPJPE (mm)8.8SemGCN
3D Hand Pose EstimationDexYCBAverage MPJPE (mm)13.2SemGCN
3D Hand Pose EstimationDexYCBMPVPE12.4SemGCN
3D Hand Pose EstimationDexYCBPA-MPVPE5.4SemGCN
3D Hand Pose EstimationDexYCBProcrustes-Aligned MPJPE5.6SemGCN
1 Image, 2*2 StitchiHO-3D v2PA-MPJPE (mm)8.8SemGCN
1 Image, 2*2 StitchiDexYCBAverage MPJPE (mm)13.2SemGCN
1 Image, 2*2 StitchiDexYCBMPVPE12.4SemGCN
1 Image, 2*2 StitchiDexYCBPA-MPVPE5.4SemGCN
1 Image, 2*2 StitchiDexYCBProcrustes-Aligned MPJPE5.6SemGCN

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