Heterogeneous Multi-task Learning for Human Pose Estimation with Deep Convolutional Neural Network

13 Jun 2014  ·  Sijin Li, Zhi-Qiang Liu, Antoni B. Chan ·

We propose an heterogeneous multi-task learning framework for human pose estimation from monocular image with deep convolutional neural network. In particular, we simultaneously learn a pose-joint regressor and a sliding-window body-part detector in a deep network architecture. We show that including the body-part detection task helps to regularize the network, directing it to converge to a good solution. We report competitive and state-of-art results on several data sets. We also empirically show that the learned neurons in the middle layer of our network are tuned to localized body parts.

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