Abstract
This paper presents a new learning method for Gaussian mixture models (GMMs) to improve their generalization ability. A traditional maximum a posterior (MAP) parameter estimate is used to achieve regularization based on conjugate priors. Plus, a model order selection criterion is derived from BayesianLaplace approaches, using the conjugate priors to measure the uncertainty of the estimated parameters. As a result, the proposed learning method avoids the possibility of convergence toward the boundary of the parameter space, and is also capable of selecting the optimal order for a GMM with more enhanced stability than conventional methods using a flat prior. When applying the proposed learning method to construct a GMM classifier for electromyogram (EMG) pattern recognition, the proposed GMM classifier achieves a high generalization ability and outperforms conventional classifiers in terms of recognition accuracy.
Original language | English |
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Pages (from-to) | 287-297 |
Number of pages | 11 |
Journal | IEEE Transactions on Neural Systems and Rehabilitation Engineering |
Volume | 17 |
Issue number | 3 |
DOIs | |
State | Published - Jun 2009 |
Keywords
- Bayesian laplace approaches
- Conjugate priors
- Electromyogram patternrecognition
- Gaussian mixture models
- Maximum a posterior (MAP) estimates
- Multifunction myoelectric hand