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Papers/Weakly Supervised 3D Hand Pose Estimation via Biomechanica...

Weakly Supervised 3D Hand Pose Estimation via Biomechanical Constraints

Adrian Spurr, Umar Iqbal, Pavlo Molchanov, Otmar Hilliges, Jan Kautz

2020-03-20ECCV 2020 83D Hand Pose EstimationOpen-Ended Question AnsweringPose EstimationPose PredictionHand Pose Estimation
PaperPDF

Abstract

Estimating 3D hand pose from 2D images is a difficult, inverse problem due to the inherent scale and depth ambiguities. Current state-of-the-art methods train fully supervised deep neural networks with 3D ground-truth data. However, acquiring 3D annotations is expensive, typically requiring calibrated multi-view setups or labor intensive manual annotations. While annotations of 2D keypoints are much easier to obtain, how to efficiently leverage such weakly-supervised data to improve the task of 3D hand pose prediction remains an important open question. The key difficulty stems from the fact that direct application of additional 2D supervision mostly benefits the 2D proxy objective but does little to alleviate the depth and scale ambiguities. Embracing this challenge we propose a set of novel losses. We show by extensive experiments that our proposed constraints significantly reduce the depth ambiguity and allow the network to more effectively leverage additional 2D annotated images. For example, on the challenging freiHAND dataset using additional 2D annotation without our proposed biomechanical constraints reduces the depth error by only $15\%$, whereas the error is reduced significantly by $50\%$ when the proposed biomechanical constraints are used.

Results

TaskDatasetMetricValueModel
HandDexYCBAverage MPJPE (mm)17.3BMC
HandDexYCBProcrustes-Aligned MPJPE6.83BMC
Pose EstimationDexYCBAverage MPJPE (mm)17.3BMC
Pose EstimationDexYCBProcrustes-Aligned MPJPE6.83BMC
Hand Pose EstimationDexYCBAverage MPJPE (mm)17.3BMC
Hand Pose EstimationDexYCBProcrustes-Aligned MPJPE6.83BMC
3DDexYCBAverage MPJPE (mm)17.3BMC
3DDexYCBProcrustes-Aligned MPJPE6.83BMC
3D Hand Pose EstimationDexYCBAverage MPJPE (mm)17.3BMC
3D Hand Pose EstimationDexYCBProcrustes-Aligned MPJPE6.83BMC
1 Image, 2*2 StitchiDexYCBAverage MPJPE (mm)17.3BMC
1 Image, 2*2 StitchiDexYCBProcrustes-Aligned MPJPE6.83BMC

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