Publication | Open Access
3D human pose from silhouettes by relevance vector regression
389
Citations
17
References
2004
Year
Unknown Venue
EngineeringMachine LearningHuman Pose Estimation3D Pose EstimationBiometricsBody Problem3D Body ScanningRelevance Vector Regression3D Computer VisionImage AnalysisPattern RecognitionHuman MotionHuman BodyMachine VisionStructure From MotionMedical Image ComputingDeep LearningComputer VisionPrior LabellingMulti-view Geometry
We describe a learning based method for recovering 3D human body pose from single images and monocular image sequences. Our approach requires neither an explicit body model nor prior labelling of body pans in the image. Instead, it recovers pose by direct nonlinear regression against shape descriptor vectors extracted automatically from image silhouettes. For robustness against local silhouette segmentation errors, silhouette shape is encoded by histogram-of-shape-contexts descriptors. For the main regression, we evaluate both regularized least squares and relevance vector machine (RVM) regressors over both linear and kernel bases. The RVM's provide much sparser regressors without compromising performance, and kernel bases give a small but worthwhile improvement in performance. For realism and good generalization with respect to viewpoints, we train the regressors on images resynthesized from real human motion capture data, and test it both quantitatively on similar independent test data, and qualitatively on a real image sequence. Mean angular errors of 6-7 degrees are obtained - a factor of 3 better than the current state of the art for the much simpler upper body problem.
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