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Papers/HandFoldingNet: A 3D Hand Pose Estimation Network Using Mu...

HandFoldingNet: A 3D Hand Pose Estimation Network Using Multiscale-Feature Guided Folding of a 2D Hand Skeleton

Wencan Cheng, Jae Hyun Park, Jong Hwan Ko

2021-08-12ICCV 2021 103D Hand Pose EstimationPose EstimationHand Pose Estimation
PaperPDFCode(official)

Abstract

With increasing applications of 3D hand pose estimation in various human-computer interaction applications, convolution neural networks (CNNs) based estimation models have been actively explored. However, the existing models require complex architectures or redundant computational resources to trade with the acceptable accuracy. To tackle this limitation, this paper proposes HandFoldingNet, an accurate and efficient hand pose estimator that regresses the hand joint locations from the normalized 3D hand point cloud input. The proposed model utilizes a folding-based decoder that folds a given 2D hand skeleton into the corresponding joint coordinates. For higher estimation accuracy, folding is guided by multi-scale features, which include both global and joint-wise local features. Experimental results show that the proposed model outperforms the existing methods on three hand pose benchmark datasets with the lowest model parameter requirement. Code is available at https://github.com/cwc1260/HandFold.

Results

TaskDatasetMetricValueModel
HandMSRA HandsAverage 3D Error7.34HandFoldingNet
HandICVL HandsAverage 3D Error5.95HandFoldingNet
HandNYU HandsAverage 3D Error8.58HandFoldingNet
Pose EstimationMSRA HandsAverage 3D Error7.34HandFoldingNet
Pose EstimationICVL HandsAverage 3D Error5.95HandFoldingNet
Pose EstimationNYU HandsAverage 3D Error8.58HandFoldingNet
Hand Pose EstimationMSRA HandsAverage 3D Error7.34HandFoldingNet
Hand Pose EstimationICVL HandsAverage 3D Error5.95HandFoldingNet
Hand Pose EstimationNYU HandsAverage 3D Error8.58HandFoldingNet
3DMSRA HandsAverage 3D Error7.34HandFoldingNet
3DICVL HandsAverage 3D Error5.95HandFoldingNet
3DNYU HandsAverage 3D Error8.58HandFoldingNet
1 Image, 2*2 StitchiMSRA HandsAverage 3D Error7.34HandFoldingNet
1 Image, 2*2 StitchiICVL HandsAverage 3D Error5.95HandFoldingNet
1 Image, 2*2 StitchiNYU HandsAverage 3D Error8.58HandFoldingNet

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