Printed Arabic Text Recognition using Linear and Nonlinear Regression
Ashraf A. Shahin

TL;DR
This paper introduces an automatic printed Arabic text recognition method using linear and ellipse regression, achieving an average recognition rate of 86% across various fonts and over 14,000 words.
Contribution
It presents a novel approach combining linear and ellipse regression for recognizing printed Arabic text, with a unique coding system for character forms and font fingerprinting.
Findings
Achieved 86% average recognition rate.
Effective for multiple fonts and large dataset.
Introduced a character coding and font fingerprinting method.
Abstract
Arabic language is one of the most popular languages in the world. Hundreds of millions of people in many countries around the world speak Arabic as their native speaking. However, due to complexity of Arabic language, recognition of printed and handwritten Arabic text remained untouched for a very long time compared with English and Chinese. Although, in the last few years, significant number of researches has been done in recognizing printed and handwritten Arabic text, it stills an open research field due to cursive nature of Arabic script. This paper proposes automatic printed Arabic text recognition technique based on linear and ellipse regression techniques. After collecting all possible forms of each character, unique code is generated to represent each character form. Each code contains a sequence of lines and ellipses. To recognize fonts, a unique list of codes is identified to…
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