Title
Discriminative Bernoulli HMMs for isolated handwritten word recognition
Abstract
Bernoulli HMMs (BHMMs) have been successfully applied to handwritten text recognition (HTR) tasks such as continuous and isolated handwritten words. BHMMs belong to the generative model family and, hence, are usually trained by (joint) maximum likelihood estimation (MLE) by means of the Baum-Welch algorithm. Despite the good properties of the MLE criterion, there are better training criteria such as maximum mutual information (MMI). The MMI is the most widespread criterion to train discriminative models such as log-linear (or maximum entropy) models. Inspired by a BHMM classifier, in this work, a log-linear HMM (LLHMM) for binary data is proposed. The proposed model is proved to be equivalent to the BHMM classifier, and, in this way, a discriminative training framework for BHMM classifiers is defined. The behavior of the proposed discriminative training framework is deeply studied in a well known task of isolated word recognition, the RIMES database.
Year
DOI
Venue
2014
10.1016/j.patrec.2013.05.016
Pattern Recognition Letters
Keywords
Field
DocType
maximum mutual information,discriminative model,mle criterion,maximum likelihood estimation,proposed discriminative training framework,bhmm classifier,better training criterion,maximum entropy,isolated handwritten word recognition,discriminative bernoulli hmms,discriminative training framework
Pattern recognition,Computer science,Word recognition,Speech recognition,Artificial intelligence,Mutual information,Binary data,Principle of maximum entropy,Classifier (linguistics),Hidden Markov model,Discriminative model,Generative model
Journal
Volume
ISSN
Citations 
35,
0167-8655
2
PageRank 
References 
Authors
0.39
13
3
Name
Order
Citations
PageRank
Adrií Giménez1130.94
Jesús Andrés-Ferrer2737.52
alfons juan357261.45