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Papers/Efficient Virtual View Selection for 3D Hand Pose Estimation

Efficient Virtual View Selection for 3D Hand Pose Estimation

Jian Cheng, Yanguang Wan, Dexin Zuo, Cuixia Ma, Jian Gu, Ping Tan, Hongan Wang, Xiaoming Deng, yinda zhang

2022-03-293D Hand Pose EstimationPose EstimationHand Pose Estimation
PaperPDFCode(official)

Abstract

3D hand pose estimation from single depth is a fundamental problem in computer vision, and has wide applications.However, the existing methods still can not achieve satisfactory hand pose estimation results due to view variation and occlusion of human hand. In this paper, we propose a new virtual view selection and fusion module for 3D hand pose estimation from single depth.We propose to automatically select multiple virtual viewpoints for pose estimation and fuse the results of all and find this empirically delivers accurate and robust pose estimation. In order to select most effective virtual views for pose fusion, we evaluate the virtual views based on the confidence of virtual views using a light-weight network via network distillation. Experiments on three main benchmark datasets including NYU, ICVL and Hands2019 demonstrate that our method outperforms the state-of-the-arts on NYU and ICVL, and achieves very competitive performance on Hands2019-Task1, and our proposed virtual view selection and fusion module is both effective for 3D hand pose estimation.

Results

TaskDatasetMetricValueModel
HandICVL HandsAverage 3D Error4.79Virtual View Selection
HandHANDS 2019Average 3D Error12.51Ours-15views
HandICVLError (mm)4.76Ours-15views
HandNYU HandsAverage 3D Error6.4Virtual View Selection
Pose EstimationICVL HandsAverage 3D Error4.79Virtual View Selection
Pose EstimationHANDS 2019Average 3D Error12.51Ours-15views
Pose EstimationICVLError (mm)4.76Ours-15views
Pose EstimationNYU HandsAverage 3D Error6.4Virtual View Selection
Hand Pose EstimationICVL HandsAverage 3D Error4.79Virtual View Selection
Hand Pose EstimationHANDS 2019Average 3D Error12.51Ours-15views
Hand Pose EstimationICVLError (mm)4.76Ours-15views
Hand Pose EstimationNYU HandsAverage 3D Error6.4Virtual View Selection
3DICVL HandsAverage 3D Error4.79Virtual View Selection
3DHANDS 2019Average 3D Error12.51Ours-15views
3DICVLError (mm)4.76Ours-15views
3DNYU HandsAverage 3D Error6.4Virtual View Selection
1 Image, 2*2 StitchiICVL HandsAverage 3D Error4.79Virtual View Selection
1 Image, 2*2 StitchiHANDS 2019Average 3D Error12.51Ours-15views
1 Image, 2*2 StitchiICVLError (mm)4.76Ours-15views
1 Image, 2*2 StitchiNYU HandsAverage 3D Error6.4Virtual View Selection

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