Document Type : Review Article

Authors

1 Islamic Azad University Bardsir

2 Azad Islamic University Bardsir

Abstract

One of the most important stages in Character Recognition Systems is “Segmentation”, because any mistake will affect to all other tasks, especially to character recognition. This operation is more complex in Persian/Arabic writing than other Latin writing like English, and there has been an ongoing research on it. Other algorithms, that has been used as base as proposed algorithm, show 85% accuracy. In this paper, a new improved method has been presented by analyzing the visual features of the Persian/Arabic language. The proposed algorithm is able to segment existing fonts up to 98.5% accuracy or even 100% on some cases. The remaining error could be refined by applying a good character recognition technique and a precise vocabulary.

Keywords

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Biography
Mahboubeh Shamsi is a Lecturer of Computer Science at Islamic Azad University, Bardsir, Iran. She is also a Ph.D. candidate at University of Technology, Malaysia. She has Master’s degrees in Computer Science from Islamic Azad University, Najafabad, Iran and a Bachelor’s degree in Applied Mathematics from Isfahan University, Iran. Her research interests include Security, Image Processing, Biometrics, Handwriting recognition, and Mathematic.
Abdolreza rasouli Kenari is a Lecturer of Computer Science at Islamic Azad University, Bardsir, Iran. He is also a Ph.D. candidate at University of Technology, Malaysia. He has Master’s degrees in Computer Science from Islamic Azad University, Najafabad, Iran and a Bachelor’s degree in Mathematics from Isfahan University, Iran. His research interests include Cryptography, Security, Data Mining, Distributed Database, Web App, Image Processing, Algorithms, and Mathematic.
Soudeh Shadravan is an Associate Lecturer of Computer Science at Islamic Azad University, Bardsir, Iran. She is also a Ms.C. student at University of Technology, Malaysia. She has Bachelor’s degrees from Islamic Azad University, Meybod, Iran and an Adv Diploma’s degree from Islamic Azad University, Bardsir, Iran in Computer Science. Her research interests include Network, Logical Phase, and Graphic.