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UV R-CNN: Stable and Efficient Dense Human Pose Estimation

4 November 2022
Wenhe Jia
Yilin Zhou
Xuhan Zhu
Mengjie Hu
Chun Liu
Qing-Huang Song
    3DH
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Abstract

Dense pose estimation is a dense 3D prediction task for instance-level human analysis, aiming to map human pixels from an RGB image to a 3D surface of the human body. Due to a large amount of surface point regression, the training process appears to be easy to collapse compared to other region-based human instance analyzing tasks. By analyzing the loss formulation of the existing dense pose estimation model, we introduce a novel point regression loss function, named Dense Points} loss to stable the training progress, and a new balanced loss weighting strategy to handle the multi-task losses. With the above novelties, we propose a brand new architecture, named UV R-CNN. Without auxiliary supervision and external knowledge from other tasks, UV R-CNN can handle many complicated issues in dense pose model training progress, achieving 65.0% APgpsAP_{gps}APgps​ and 66.1% APgpsmAP_{gpsm}APgpsm​ on the DensePose-COCO validation subset with ResNet-50-FPN feature extractor, competitive among the state-of-the-art dense human pose estimation methods.

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