资源论文Exploring the Spatial Hierarchy of Mixture Models for Human Pose Estimation

Exploring the Spatial Hierarchy of Mixture Models for Human Pose Estimation

2020-04-02 | |  55 |   52 |   0

Abstract

Human pose estimation requires a versatile yet well- constrained spatial model for grouping locally ambiguous parts together to produce a globally consistent hypothesis. Previous works either use lo- cal deformable models deviating from a certain template, or use a global mixture representation in the pose space. In this paper, we propose a new hierarchical spatial model that can capture an exponential number of poses with a compact mixture representation on each part. Using la- tent nodes, it can represent high-order spatial relationship among parts with exact inference. Different from recent hierarchical models that asso- ciate each latent node to a mixture of appearance templates (like HoG), we use the hierarchical structure as a pure spatial prior avoiding the large and often confounding appearance space. We verify the effectiveness of this model in three ways. First, samples representing human-like poses can be drawn from our model, showing its ability to capture high-order dependencies of parts. Second, our model achieves accurate reconstruc- tion of unseen poses compared to a nearest neighbor pose representation. Finally, our model achieves state-of-art performance on three challenging datasets, and substantially outperforms recent hierarchical models.

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