Learning dynamics for exemplar-based gesture recognition
Title | Learning dynamics for exemplar-based gesture recognition |
Publication Type | Conference Papers |
Year of Publication | 2003 |
Authors | Elgammal A, Shet V, Yacoob Y, Davis LS |
Conference Name | Computer Vision and Pattern Recognition, 2003. Proceedings. 2003 IEEE Computer Society Conference on |
Date Published | 2003/06// |
Keywords | arbitrary, body, by, Computer, constraint;, detection;, discrete, distribution, dynamics;, edge, estimation;, example;, exemplar, exemplar-based, extraction;, feature, framework;, gesture, gesture;, hidden, HMM;, human, image, learning, Markov, matching;, model;, models;, motion;, nonparametric, pose, probabilistic, recognition;, sequence;, space;, state;, statistics;, system, temporal, tool;, view-based, vision; |
Abstract | This paper addresses the problem of capturing the dynamics for exemplar-based recognition systems. Traditional HMM provides a probabilistic tool to capture system dynamics and in exemplar paradigm, HMM states are typically coupled with the exemplars. Alternatively, we propose a non-parametric HMM approach that uses a discrete HMM with arbitrary states (decoupled from exemplars) to capture the dynamics over a large exemplar space where a nonparametric estimation approach is used to model the exemplar distribution. This reduces the need for lengthy and non-optimal training of the HMM observation model. We used the proposed approach for view-based recognition of gestures. The approach is based on representing each gesture as a sequence of learned body poses (exemplars). The gestures are recognized through a probabilistic framework for matching these body poses and for imposing temporal constraints between different poses using the proposed non-parametric HMM. |
DOI | 10.1109/CVPR.2003.1211405 |