使用支持向量机分类器识别阿拉伯手写体

M. Elleuch, Houssem Lahiani, M. Kherallah
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引用次数: 17

摘要

手写识别是模式识别领域中应用最广泛、最成功的领域之一。尽管是一个发达的领域,许多查询仍然需要,仍然代表主要是对阿拉伯手写体(AHS)的蔑视。近年来,支持向量机(SVM)分类器在文字识别领域受到越来越多的关注。然而,与ANN、CNN、RNN、HMM等方法相比,该方法尚未应用于手写阿拉伯语领域。本文研究了支持向量机在AHS识别中的应用。手工制作的特征被建议的方法作为输入处理,并开始使用监督学习算法。我们选择了带有RBF内核的多类支持向量机,并在手写阿拉伯字符数据库(HACDB)上进行了测试。仿真结果证明了该方法的有效性。我们将这种方法的良好功能与来自最先进的阿拉伯OCR的字符识别可靠性进行了比较,结果令人满意。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recognizing Arabic Handwritten Script using Support Vector Machine classifier
Handwriting recognition ranks among the highest and the most triumphant applications in the pattern recognition domain. Despite being a developed field, many enquiries are still needed and still represent a defiance mainly for the Arabic Handwritten Script (AHS). Recently, more regard has been given to Support Vector Machines (SVM) classifier for script recognition. Nevertheless, it has not been put in application yet to the handwritten Arabic field if compared with the other methods like ANN, CNN, RNN and HMM. SVMs for AHS recognition is examined in this paper. Handcrafted feature is handled as input by the suggested method and gets going with a supervised learning algorithm. We chose the Multi-class Support Vector Machine with an RBF kernel and we tested it on Handwritten Arabic Characters Database (HACDB) as well. It was proven that the proposed method was effective thanks to the simulation results. We compared the well-functioning of this method with character recognition reliabilities coming from state-of-the-art Arabic OCR which resulted in commendatory outcomes.
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