Example-Based Methods for Estimating 3D Human Pose from Silhouette Image using Approximate Chamfer Distance and Kernel Subspace
نویسنده
چکیده
منابع مشابه
Spatio-temporal Human poSe Detection
This thesis proposes a Chamfer-based method for human body pose detection that combines silhouette matching, motion information, and statistical relevance estimates in an original way. We demonstrate that our method can not only detect people but also recover their full 3D pose when they are seen from different viewpoints and at different scales, when the background is cluttered and background ...
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