Deep Kinematic Pose Regression

@inproceedings{Zhou2016DeepKP,
  title={Deep Kinematic Pose Regression},
  author={Xingyi Zhou and Xiao Sun and Wei Zhang and Shuang Liang and Yichen Wei},
  booktitle={ECCV Workshops},
  year={2016}
}
Overview Goal Estimate object joint locations from a single image. Pose Representation •Pictorial Structure Model •Linear Dictionary •Linear Feature Embedding • Implicit Representation by Retrieval •Explicit Geometric Model Our Approach We propose to directly embed a kinematic object model into the deep neutral network learning for general articulated object pose estimation [4]. Method Kinematic Model 
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