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Papers/Two-hand Global 3D Pose Estimation Using Monocular RGB

Two-hand Global 3D Pose Estimation Using Monocular RGB

Fanqing Lin, Connor Wilhelm, Tony Martinez

2020-06-013D Hand Pose Estimation3D Canonical Hand Pose EstimationPose Estimation3D Pose EstimationVocal Bursts Valence PredictionHand Pose Estimation
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Abstract

We tackle the challenging task of estimating global 3D joint locations for both hands via only monocular RGB input images. We propose a novel multi-stage convolutional neural network based pipeline that accurately segments and locates the hands despite occlusion between two hands and complex background noise and estimates the 2D and 3D canonical joint locations without any depth information. Global joint locations with respect to the camera origin are computed using the hand pose estimations and the actual length of the key bone with a novel projection algorithm. To train the CNNs for this new task, we introduce a large-scale synthetic 3D hand pose dataset. We demonstrate that our system outperforms previous works on 3D canonical hand pose estimation benchmark datasets with RGB-only information. Additionally, we present the first work that achieves accurate global 3D hand tracking on both hands using RGB-only inputs and provide extensive quantitative and qualitative evaluation.

Results

TaskDatasetMetricValueModel
HandEgo3DHandsAUC0.681
HandSTBAUC0.995
HandRHPAUC0.942
Pose EstimationEgo3DHandsAUC0.681
Pose EstimationSTBAUC0.995
Pose EstimationRHPAUC0.942
Hand Pose EstimationEgo3DHandsAUC0.681
Hand Pose EstimationSTBAUC0.995
Hand Pose EstimationRHPAUC0.942
3DEgo3DHandsAUC0.681
3DSTBAUC0.995
3DRHPAUC0.942
3D Canonical Hand Pose EstimationEgo3DHandsAUC0.681
3D Canonical Hand Pose EstimationSTBAUC0.995
3D Canonical Hand Pose EstimationRHPAUC0.942
3D Hand Pose EstimationEgo3DHandsAUC0.681
3D Hand Pose EstimationSTBAUC0.995
3D Hand Pose EstimationRHPAUC0.942
1 Image, 2*2 StitchiEgo3DHandsAUC0.681
1 Image, 2*2 StitchiSTBAUC0.995
1 Image, 2*2 StitchiRHPAUC0.942

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