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Performance of hidden Markov model and dynamic Bayesian network classifiers on handwritten Arabic word recognition
Authors:Jawad H AlKhateeb  Olivier Pauplin  Jinchang Ren  Jianmin Jiang
Affiliation:1. University of Applied Sciences and Arts Northwestern Switzerland, Institute for Information Systems, Olten 4600, Switzerland;2. University of Fribourg, Department of Informatics, Fribourg 1700, Switzerland;3. University of Applied Sciences and Arts Western Switzerland, Institute of Complex Systems, Fribourg 1705, Switzerland;4. University of Pretoria, Department of Informatics, Pretoria, South Africa
Abstract:This paper presents a comparative study of two machine learning techniques for recognizing handwritten Arabic words, where hidden Markov models (HMMs) and dynamic Bayesian networks (DBNs) were evaluated. The work proposed is divided into three stages, namely preprocessing, feature extraction and classification. Preprocessing includes baseline estimation and normalization as well as segmentation. In the second stage, features are extracted from each of the normalized words, where a set of new features for handwritten Arabic words is proposed, based on a sliding window approach moving across the mirrored word image. The third stage is for classification and recognition, where machine learning is applied using HMMs and DBNs. In order to validate the techniques, extensive experiments were conducted using the IFN/ENIT database which contains 32,492 Arabic words. Experimental results and quantitative evaluations showed that HMM outperforms DBN in terms of higher recognition rate and lower complexity.
Keywords:
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