Title :
Hidden Markov model with nonstationary states
Author :
Mahjou, Mohamed Ali ; Ellouze, Noureddine
Author_Institution :
LSTS, ENIT, Tunis, Tunisia
Abstract :
In this paper we explore the nonstationarity of Markov model and we propose a nonstationary Hidden Markov Model (NSHMM) which is defined with a set of dynamic transitions probability parameters A(t)={aij (t)} that depend on the time t already spent in state i. When compared to traditional models, this NSHMM is defined as generalization of the DHMM. The model was applied to on line recognition of handwritten arabie characters. The characters are represented by a radial sequence which is independent of translation, orientation and homothetie. The complete symbol-generation procedure includes sampling, size normalization and quantization phases. In the training, the model parameters are estimated with Baum-welch algorithm from a set of characters. Experiments have been conducted, and a good classification score has been obtained. The discrimination between characters models has been improved. Experiments showed that this approach can better capture the dynamic nature of arabie script.
Keywords :
handwritten character recognition; hidden Markov models; image classification; image sampling; image sequences; parameter estimation; probability; Baum-welch algorithm; DHMM; NSHMM; dynamic transition probability parameter estimation; handwritten arabic character recognition; image classification; image sampling; nonstationary hidden Markov model; quantization phase; radial sequence representation; size normalization; symbol-generation procedure; Character recognition; Computational modeling; Handwriting recognition; Hidden Markov models; Silicon; Speech recognition; Standards; Hidden Markov Model; Nonstationary HMM; on line arabic character recognition; state duration;
Conference_Titel :
Signal Processing Conference (EUSIPCO 1998), 9th European
Conference_Location :
Rhodes
Print_ISBN :
978-960-7620-06-4