Unconstrained Monocular 3D Human Pose Estimation by Action Detection and Cross-Modality Regression Forest

Computer Vision and Pattern Recognition(2013)

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摘要
This work addresses the challenging problem of unconstrained 3D human pose estimation (HPE) from a novel perspective. Existing approaches struggle to operate in realistic applications, mainly due to their scene-dependent priors, such as background segmentation and multi-camera network, which restrict their use in unconstrained environments. We therfore present a framework which applies action detection and 2D pose estimation techniques to infer 3D poses in an unconstrained video. Action detection offers spatiotemporal priors to 3D human pose estimation by both recognising and localising actions in space-time. Instead of holistic features, e.g. silhouettes, we leverage the flexibility of deformable part model to detect 2D body parts as a feature to estimate 3D poses. A new unconstrained pose dataset has been collected to justify the feasibility of our method, which demonstrated promising results, significantly outperforming the relevant state-of-the-arts.
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关键词
unconstrained video,video signal processing,action detection,human pose estimation,approaches struggle,unconstrained pose dataset,scene-dependent priors,spatiotemporal priors,deformable part model,2d body part detection,estimation technique,regression analysis,body part,unconstrained monocular,2d pose estimation technique,spatiotemporal phenomena,pose estimation,cross-modality regression forest,random forest,challenging problem,regression forest,object recognition,natural scenes,action localisation,hough forest,background segmentation,unconstrained 3d hpe,deformable part model flexibility,action recognition,unconstrained monocular 3d human pose estimation,unconstrained environment,localising action,estimation,vectors,solid modeling,feature extraction
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