Evaluation of incremental learning algorithms for HMM in the recognition of alphanumeric characters

Evaluation of incremental learning algorithms for HMM in the recognition of alphanumeric characters

Cavalin, Paulo R. and Sabourin, Robert and Suen, Ching Y. and Britto, Alceu S.

Pattern Recognition 2009

Abstract : We present an evaluation of incremental learning algorithms for the estimation of hidden Markov model (HMM) parameters. The main goal is to investigate incremental learning algorithms that can provide as good performances as traditional batch learning techniques, but incorporating the advantages of incremental learning for designing complex pattern recognition systems. Experiments on handwritten characters have shown that a proposed variant of the ensemble training algorithm, employing ensembles of HMMs, can lead to very promising performances. Furthermore, the use of a validation dataset demonstrated that it is possible to reach better performances than the ones presented by batch learning. © 2008 Elsevier Ltd. All rights reserved.