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Human Pose Regression by Combining Indirect Part Detection and Contextual Information

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In this paper, we propose an end-to-end trainable regression approach for human pose estimation from still images. We use the proposed Soft-argmax function to convert feature maps directly to joint coordinates, resulting in a fully differentiable framework. Our method is able to learn heat maps representations indirectly, without additional steps of artificial ground truth generation. Consequently, contextual information can be included to the pose predictions in a seamless way. We evaluated our method on two very challenging datasets, the Leeds Sports Poses (LSP) and the MPII Human Pose datasets, reaching the best performance among all the existing regression methods and comparable results to the state-of-the-art detection based approaches.

Diogo C. Luvizon, Hedi Tabia, David Picard• 2017

Related benchmarks

TaskDatasetResultRank
Human Pose EstimationMPII (test)
Shoulder PCK96.6
314
Human Pose EstimationLSP (test)
Head Accuracy97.5
102
Articulated Human Pose EstimationLSP (test)
Upper Arms Accuracy85.8
28
Human Pose EstimationLSP PC annotations (test)
Torso Accuracy0.982
16
Human Pose EstimationMPII pose 03/15/2018 (full)
Head Accuracy98.1
11
Human Pose EstimationLSP original (test)
Head Acc97.4
9
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