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http://hdl.handle.net/10553/75513
Title: | An extension of the Chernoff-based transformation matrix estimation method for on-line learning in Bayesian binary hypothesis tests | Authors: | Lorenzo-García, F. D. Navarro Mesa, J. L. Ravelo-Garcia, A. G. |
UNESCO Clasification: | 3307 Tecnología electrónica | Keywords: | Recognition Learning Algorithm Chernoff Bound Transformation Matrix Cost Function, et al |
Issue Date: | 2007 | Conference: | 7th WSEAS International Conference on Signal Processing, Computational Geometry and Artificial Vision | Abstract: | In a previous paper [8] we have proposed a method to improve the classification between two classes in a new transformed space using the Chernoff similarity measure. The key idea is to estimate a transformation matrix such that the overlap between the pdf associated to the competing classes is minimum thus leading to a minimization of the classification error. Starting from a surrogate cost function we review the previous method from the consideration that in many practical applications the (online) learning examples come in a sample-by-sample manner instead of a batch manner. Then we propose a new formulation of the learning algorithm in online mode and we derive the corresponding formulation. We arrive to iterative formulations of the estimation processes. The classes are modeled by a Gaussian mixture model with a varying number of components and we investigate the new method for several dimensionalities of the transformed subspace. The experiments are carried out over a database of speech with and without pathology and we show that the performance of the online approach compares favorably with respect to the batch mode and outperforms some reference methods. | URI: | http://hdl.handle.net/10553/75513 | ISBN: | 978-960-8457-97-3 | Source: | Proceedings of The 7Th Wseas International Conference On Signal Processing, Computational Geometry And Artificial Vision (Iscgav'-07), p. 41-49, (2007) |
Appears in Collections: | Actas de congresos |
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