Entrenamiento Discriminativo Maximizando una Distancia entre Modelos de Clases

  • Milton O. Sarria-Paja M.Sc. Ingeniero Electrónico, Docente Ocasional Instituto Tecnológico Metropolitano, Grupo MIRP, Medellín
  • Cesar G. Castellanos-Domínguez Ph. D. Ingeniero en Telecomunicaciones, Docente asociado al departamento de Ingeniería Eléctrica, Electrónica y Computación de la Universidad Nacional de Colombia – Manizales, Grupo de control y procesamiento digital de señales, Medellín
Keywords: Hidden Markov Models, Detection of pathology, Discriminative training, Performance curves.

Abstract

This paper presents an approach that improves discriminative training criterion for Hidden Markov Models, and it is oriented to voice pathological identification. This technique aims at maximizing the Area under the Receiver Operating Characteristic curve by adjusting the model parameters using as objective function the distance between the means of the underlying probability densities functions associated with each class. As result we obtain an improvement in the performance of the classification system compared with different training criteria.
How to Cite
[1]
M. O. Sarria-Paja and C. G. Castellanos-Domínguez, “Entrenamiento Discriminativo Maximizando una Distancia entre Modelos de Clases”, TecnoL., pp. 113–132, Jun. 2010.

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Published
2010-06-23
Section
Articles

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