Improvement Multi-Stage Model for Human Pose Estimation

02/21/2019
by   Zhihui Su, et al.
0

Multi-stage methods are widely used in detection task, and become more competitive than single-stage. This paper studed the improvement both in single and multi stage model. Training methods is also metioned in this paper, like multi σ of kernel sizes for different stages, and training steps to improve the stability of convergance. The resulting multi-stage network outperforms all previous works and obtains the best performance on single person task of MPII.

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