Hopfield-multilayer-perceptron serial combination for accurate degraded printed character recognition

被引:1
|
作者
Namane, Abderrahmane
Soubari, El Houssine
Guessoum, Abderrezak
Djebari, Mustapha
Meyrueis, Patrick
Bruynooghe, Michel
机构
[1] Univ Strasbourg, Ecole Natl Super Phys, Lab Syst Photon, F-67400 Strasbourg, France
[2] Univ Saad Dahleb, Fac Sci Ingn, Dept Elect, LATSI, Blida, Algeria
关键词
Hopfield model; associative memory; degraded printed characters; character recognition; MLP; OCR; serial combination;
D O I
10.1117/1.2345056
中图分类号
O43 [光学];
学科分类号
070207 ; 0803 ;
摘要
Degraded printed character recognition is a hard and ever-present problem in optical character recognition. Previous work has explored serial combination of multilayer perceptron (MLP) and autoassociators networks for printed character recognition. The MLP is used as a first step classifier for its discrimination capability and is not very well suited for rejection. On the other hand, the autoassociator used as a second step classifier is more appropriate when a very small error and rejection are required. Unfortunately, this better behavior with respect to rejection is either paid in terms of rejection error or in terms of computational complexity, particularly when the number of classes is high. In this paper, we propose a serial combination of the Hopfield and MLP networks in order to achieve accurate recognition of degraded printed characters. We introduce a relative distance and use it as a quality measurement of the degraded character, which makes the Hopfield-based classifier very powerful and very well-suited for rejection. This relative distance is compared to a rejection threshold in order to accept or reject the incoming degraded character by the Hopfield model used as a first classifier. Due to its discrimination capability, the MLP network is used as a second classifier to avoid rejection error and to diminish computational complexity. The proposed method is devoted to solving the problem of recognition of single font characters collected from poor quality bank checks. We report experimental results from a comparison of three neural architectures: the Hopfield network, the MLP-based classifier, and the proposed combined architecture. The proposed method is also compared to five other recognition systems. It is shown that the proposed architecture exhibits the best performance, with no significant increase in the computational burden. In this paper, we propose also a bank check processing procedure for account check number (ACN) detection, localization, and character retrieval. The recognition system is applied to ACNs that are doubly printed in two serial numbers on each side of poor quality bank checks and to verify if they are identical, showing an achievement of 98.33% recognition rate. Experimental results related to the proposed method with various added Gaussian noise levels, as well as tests with broken and incomplete characters, are presented. They confirm that the proposed method can be successfully used for effective recognition of even extremely degraded printed characters. (c) 2006 Society of Photo-Optical Instrumentation Engineers.
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页数:15
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