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Pose Guided Structured Region Ensemble Network for Cascaded Hand Pose Estimation

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abstract

Hand pose estimation from a single depth image is an essential topic in computer vision and human computer interaction. Despite recent advancements in this area promoted by convolutional neural network, accurate hand pose estimation is still a challenging problem. In this paper we propose a Pose guided structured Region Ensemble Network (Pose-REN) to boost the performance of hand pose estimation. The proposed method extracts regions from the feature maps of convolutional neural network under the guide of an initially estimated pose, generating more optimal and representative features for hand pose estimation. The extracted feature regions are then integrated hierarchically according to the topology of hand joints by employing tree-structured fully connections. A refined estimation of hand pose is directly regressed by the proposed network and the final hand pose is obtained by utilizing an iterative cascaded method. Comprehensive experiments on public hand pose datasets demonstrate that our proposed method outperforms state-of-the-art algorithms.

fields

cs.CV 1

years

2019 1

verdicts

UNVERDICTED 1

representative citing papers

Dual Grid Net: hand mesh vertex regression from single depth maps

cs.CV · 2019-07-24 · unverdicted · novelty 6.0

Dual Grid Net is a two-stage FCN that regresses 3D hand mesh vertices and dense correspondences from single depth maps, achieving SOTA keypoint accuracy on NYU under supervision and competitive results via self-supervision without annotations.

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Showing 1 of 1 citing paper.

  • Dual Grid Net: hand mesh vertex regression from single depth maps cs.CV · 2019-07-24 · unverdicted · none · ref 8 · internal anchor

    Dual Grid Net is a two-stage FCN that regresses 3D hand mesh vertices and dense correspondences from single depth maps, achieving SOTA keypoint accuracy on NYU under supervision and competitive results via self-supervision without annotations.