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Predicting People's 3D Poses from Short Sequences
Predicting People's 3D Poses from Short Sequences
Bugra Tekin Xiaolu Sun Xinchao Wang Vincent Lepetit Pascal Fua
Abstract
We propose an efficient approach to exploiting motion information from consecutive frames of a video sequence to recover the 3D pose of people. Instead of computing candidate poses in individual frames and then linking them, as is often done, we regress directly from a spatio-temporal block of frames to a 3D pose in the central one. We will demonstrate that this approach allows us to effectively overcome ambiguities and to improve upon the state-of-the-art on challenging sequences.