Real-time human pose recognition in parts from single depth images

Jamie Shotton(Microsoft Research (United Kingdom)), Andrew Fitzgibbon(Microsoft Research (United Kingdom)), Mat Cook(Microsoft Research (United Kingdom)), Toby Sharp(Microsoft Research (United Kingdom)), Mark Finocchio(Microsoft Research (United Kingdom)), Richard B. Moore(Microsoft Research (United Kingdom)), Alex Kipman(Microsoft Research (United Kingdom)), Andrew Blake(Microsoft Research (United Kingdom))
Unknown
June 1, 2011
Cited by 3,507

Abstract

We propose a new method to quickly and accurately predict 3D positions of body joints from a single depth image, using no temporal information. We take an object recognition approach, designing an intermediate body parts representation that maps the difficult pose estimation problem into a simpler per-pixel classification problem. Our large and highly varied training dataset allows the classifier to estimate body parts invariant to pose, body shape, clothing, etc. Finally we generate confidence-scored 3D proposals of several body joints by reprojecting the classification result and finding local modes. The system runs at 200 frames per second on consumer hardware. Our evaluation shows high accuracy on both synthetic and real test sets, and investigates the effect of several training parameters. We achieve state of the art accuracy in our comparison with related work and demonstrate improved generalization over exact whole-skeleton nearest neighbor matching.


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