3D Hand Pose Reconstruction Using Specialized Mappings
Data(s) |
20/10/2011
20/10/2011
04/12/2000
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Resumo |
A system for recovering 3D hand pose from monocular color sequences is proposed. The system employs a non-linear supervised learning framework, the specialized mappings architecture (SMA), to map image features to likely 3D hand poses. The SMA's fundamental components are a set of specialized forward mapping functions, and a single feedback matching function. The forward functions are estimated directly from training data, which in our case are examples of hand joint configurations and their corresponding visual features. The joint angle data in the training set is obtained via a CyberGlove, a glove with 22 sensors that monitor the angular motions of the palm and fingers. In training, the visual features are generated using a computer graphics module that renders the hand from arbitrary viewpoints given the 22 joint angles. We test our system both on synthetic sequences and on sequences taken with a color camera. The system automatically detects and tracks both hands of the user, calculates the appropriate features, and estimates the 3D hand joint angles from those features. Results are encouraging given the complexity of the task. Office of Naval Research (Young Investigator Award, N00014-96-1-0661); National Science Foundation (IIS-991257, EIA-980934) |
Identificador |
Rosales, Romer; Athitsos, Vassilis; Sclaroff, Stan. "3D Hand Pose Reconstruction Using Specialized Mappings", Technical Report BUCS-2000-022, Computer Science Department, Boston University, December 4, 2000. [Available from: http://hdl.handle.net/2144/1815] |
Idioma(s) |
en_US |
Publicador |
Boston University Computer Science Department |
Relação |
BUCS Technical Reports;BUCS-TR-2000-022 |
Tipo |
Technical Report |