Dual Path Networks for Multi-Person Human Pose Estimation
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The task of multi-person human pose estimation in natural scenes is quite challenging. Existing methods include both top-down and bottom-up approaches. The main advantage of bottom-up methods is its excellent tradeoff between estimation accuracy and computational cost. We follow this path and aim to design smaller, faster, and more accurate neural networks for the regression of keypoints and limb association vectors. These two regression tasks are naturally dependent on each other. In this work, we propose a dual-path network specially designed for multi-person human pose estimation, and compare our performance with the openpose network in aspects of model size, forward speed, and estimation accuracy.
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Cited by 1 Pith paper
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Large Area 3D Human Pose Detection Via Stereo Reconstruction in Panoramic Cameras
3D human pose estimation from pairs of panoramic cameras via fisheye-to-rectilinear image transformation followed by stereo reconstruction.
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