基于特征组合的手写体阿拉伯文字符识别

Fitriyatul Qomariyah, Fitri Utaminingrum, M. Muchlas
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引用次数: 1

摘要

阿拉伯语笔迹的识别是一个需要解决的具有挑战性的问题。字体之间的相似性在识别处理中表现为一个问题。各种风格、形状和尺寸都是个人的,而且每个人都不同,这使得阿拉伯语的笔迹识别过程更加困难。在本文中,使用的数据是具有101个样本字符的阿拉伯手写图像,每个样本字符由15个相同大小(81x81像素)的不同手写字符(总样本101x15)书写。精心选择的特征对于获得良好的识别结果至关重要。在这项研究中,研究人员提出了一种新的特征提取方法来识别阿拉伯语笔迹。特征提取是通过抓取不同类型字体书写中相似特征的值来完成的,以用作字体的新特征。然后,使用City Block将获得的特征与样本的其他特征进行比较以进行分类。本研究中获得的平均准确度值高达82%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Handwriting Arabic Character Recognition Using Features Combination
The recognition of Arabic handwriting is a challenging problem to solve. The similarity among the fonts appears as a problem in the recognition processing. Various styles, shapes, and sizes which are personal and different across individuals make the Arabic handwriting recognition process even harder. In this paper, the data used are Arabic handwritten images with 101 sample characters, each of which is written by 15 different handwritten characters (total sample 101x15) with the same size (81x81 pixels). A well-chosen feature is crucial for making good recognition results. In this study, the researcher proposed a method of new features extraction to recognize Arabic handwriting. The features extraction was done by grabbing the value of similar features among various types of font writing, to be used as a new feature of the font. Then, City Block was used to compare the obtained feature to other features of the sample for classification. The Average accuracy value obtained in this study was up to 82%.
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