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Multi-Language Handwritten Digits Recognition based on Novel Structural Features

机译:基于新型结构特征的多语言手写数字识别

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摘要

Automated handwritten script recognition is an important task for several applications. In this article, a multi-language handwritten numeral recognition system is proposed using novel structural features. A total of 65 local structural features are extracted and several classifiers are used for testing numeral recognition. Random Forest was found to achieve the best results with an average recognition of 96.73%. The proposed method is tested on six different popular languages, including Arabic Western, Arabic Eastern, Persian, Urdu, Devanagari, and Bangla. In recent studies, single language digits or multiple languages with digits that resemble each other are targeted. In this study, the digits in the languages chosen do not resemble each other. Yet using the novel feature extraction method a high recognition accuracy rate is achieved. Experiments are performed on well-known available datasets of each language. A dataset for Urdu language is also developed in this study and introduced as PMU-UD. Results indicate that the proposed method gives high recognition accuracy as compared to other methods. Low error rates and low confusion rates were also observed using the novel method proposed in this study. (C) 2019 Society for Imaging Science and Technology.
机译:自动手写脚本识别是几个应用程序的重要任务。在本文中,使用新颖的结构特征提出了一种多语言手写数字识别系统。提取总共65个局部结构特征,并且若干分类器用于测试数字识别。发现随机森林实现了平均识别的最佳效果96.73%。该方法在六种不同的流行语言中进行了测试,包括阿拉伯语西方,阿拉伯东,波斯语,乌尔都语,Devanagari和Bangla。在最近的研究中,针对单个语言数字或多种语言,其与彼此类似的数字。在这项研究中,所选择的语言的数字不会彼此类似。然而,使用新颖的特征提取方法实现了高识别精度率。对每种语言的众所周知的可用数据集进行实验。该研究还开发了乌尔都语语言的数据集,并作为PMU-UD介绍。结果表明,与其他方法相比,该方法提供了高识别精度。使用本研究中提出的新方法也观察到低误差率和低混淆率。 (c)2019年成像科技协会。

著录项

  • 来源
    《Journal of Imaging Science and Technology》 |2019年第2期|28-37|共10页
  • 作者单位

    Prince Mohammad Bin Fand Univ Coll Comp Engn & Sci Khobar Saudi Arabia;

    Prince Mohammad Bin Fand Univ Coll Comp Engn & Sci Khobar Saudi Arabia|Univ Malaysia Fac Comp Sci & Informat Technol Sarawak Malaysia;

    Prince Mohammad Bin Fand Univ Coll Comp Engn & Sci Khobar Saudi Arabia;

    Princess Sumaya Univ Technol King Hussein Sch Comp Sci Amman Jordan;

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  • 正文语种 eng
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