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Global vs. local features for gender identification using Arabic and English handwriting

机译:使用阿拉伯语和英语手写的全球对阵性别识别的本地特征

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The focus of this paper is off-line analysis of handwriting for the purpose of identifying a writer's gender. An example application of such identification is forensic analysis, in which gender could be combined with other biometric attributes for identification or exclusion. Studies have shown that handwriting by males and females tend to exhibit distinctive characteristics, even across different languages and cultures. We have explored these differences by developing classifiers based on support vector machines (SVM). These were trained using a database in which 282 individuals provided handwriting samples in both Arabic and English. The paper compares results obtained using local features and global features. For classifiers using global features trained using handwriting samples for both languages, an accuracy of 81% was observed. When local features were also used, however, an accuracy of 94.7% was observed. These results highlight the importance of local feature analysis for gender identification from handwriting.
机译:本文的重点是对手写的离线分析,以确定作者的性别。这种识别的示例应用是法医分析,其中性别可以与其他生物识别属性组合以进行识别或排除。研究表明,雄性和女性的手写倾向于表现出独特的特征,即使在不同的语言和文化中也是如此。我们通过基于支持向量机(SVM)开发分类器来探讨了这些差异。这些数据库培训,其中282个个人在阿拉伯语和英语中提供了手写样本。该论文比较了使用本地特征和全局功能获得的结果。对于使用使用手写样本进行培训的全局功能的分类器,观察到81%的准确性。然而,当使用局部特征时,观察到94.7%的准确性。这些结果突出了本地特征分析对手写性别识别的重要性。

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