Recognition of Printed Arabic Characters

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Date

2022-06-10

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UNIVERSITY of M'SILA

Abstract

Many languages have made great progress in the field of character recognition, including: Latin, Chinese, Japanese ... where high rates of recognition reach 100%, while the recognition of Arabic letters is witnessing low rates, due to some characteristics in the Arabic language that hinder It is difficult to identify. Therefore, the work carried out in the framework of this memorandum was related to the development of the system for the recognition of printed Arabic characters. In this regard, a study on the structure of the Arabic language was presented, followed by a presentation of the convolutional neural network technique, which proved its efficiency in rapid recognition and obtaining more reliable results. Where two models CNN1 and CNN2 are proposed to measure the recognition accuracy and monitor the effect of the depth of convolution layers on the recognition performance. CNN1 consists of two convolutional layers (3x3) and CNN2 consists of three convolutional layers. Where the weights are adjusted after entering all the examples (Bath training), in contrast to the weights are adjusted after each example is entered (online training). The results showed that the CNN2 model was distinguished to get better accuracy and loss Less.

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Keywords

recognition of printed Arabic characters; neural networks convolutional; processing; feature extraction; classification;

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