Handwritten Farsi Word Recognition Using NN-Based Fusion of HMM Classifiers with Different Types of Features
Handwritten Farsi Word Recognition Using NN-Based Fusion of HMM Classifiers with Different Types of Features
Seyed Ali Asghar AbbasZadeh Arani,E. Kabir,R. Ebrahimpour
TLDR
An off-line method, based on hidden Markov model, HMM, is used for holistic recognition of handwritten words of a limited vocabulary, using three feature sets based on image gradient, black–white transition and contour chain code.
Abstract
In this paper, an off-line method, based on hidden Markov model, HMM, is used for holistic recognition of handwritten words of a limited vocabulary. Three feature sets based on image gradient, black–white transition and contour chain code are used. For each feature set an HMM is trained for each word. In the recognition step, the outputs of these classifiers are combined through a multilayer perceptron, MLP. High number of connections in this network causes a computational complexity in the training. To avoid this problem, a new method is proposed. In the experiments on 16000 images of 200 names of Iranian cities, from “Iranshahr 3” dataset, the results of the proposed method are presented and compared with some similar methods. An error analysis on these results is also provided.
