Human Shape Capture and Tracking at Home

2018 IEEE Winter Conference on Applications of Computer Vision (WACV)(2018)

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摘要
Human body tracking typically requires specialized capture set-ups. Although pose tracking is available in consumer devices like Microsoft Kinect, it is restricted to stick figures visualizing body part detection. In this paper, we propose a method for full 3D human body shape and motion capture of arbitrary movements from the depth channel of a single Kinect, when the subject wears casual clothes. We do not use the RGB channel or an initialization procedure that requires the subject to move around in front of the camera. This makes our method applicable for arbitrary clothing textures and lighting environments, with minimal subject intervention. Our method consists of 3D surface feature detection and articulated motion tracking, which is regularized by a statistical human body model [26]. We also propose the idea of a Consensus Mesh (CMesh) which is the 3D template of a person created from a single view point. We demonstrate tracking results on challenging poses and argue that using CMesh along with statistical body models can improve tracking accuracies. Quantitative evaluation of our dense body tracking shows that our method has very little drift which is improved by the usage of CMesh.
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关键词
single Kinect,casual clothes,RGB channel,arbitrary clothing textures,lighting environments,minimal subject intervention,3D surface feature detection,articulated motion tracking,statistical human body model,CMesh,single view point,tracking results,statistical body models,tracking accuracies,dense body tracking,human shape capture,human body tracking,specialized capture set-ups,consumer devices,Microsoft Kinect,body part detection,motion capture,arbitrary movements,depth channel
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