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A multi-feature selection approach for gender identification of handwriting based on kernel mutual information

机译:基于核互信息的笔迹性别识别多特征选择方法

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This paper presents a new flexible approach to predict the gender of the writers from their handwriting samples. Handwriting features like slant, curvature, line separation, chain code, character shapes, and more, can be extracted from different methods. Therefore, the multi-feature sets are irrelevant and redundant. The conflict of the features exists in the sets, which affects the accuracy of classification and the computing cost. This paper proposes an approach, named kernel mutual information (KMI), that focuses on feature selection. The KMI approach can decrease redundancies and conflicts. In addition, it extracts an optimal subset of features from the writing samples produced by male and female writers. To ensure that KMI can apply the various features, this paper describes the handwriting segmentation and handwritten text recognition technology used. The classification is carried out using a Support Vector Machine (SVM) on two databases. The first database comes from the ICDAR 2013 competition on gender prediction, which provides the samples in both Arabic and English. The other database contains the Registration-Document-Form (RDF) database in Chinese. The proposed and compared methods were evaluated on both databases. Results from the methods highlight the importance of feature selection for gender prediction from handwriting. (c) 2018 Elsevier B.V. All rights reserved.
机译:本文提出了一种新的灵活方法,可以根据笔迹样本预测作家的性别。可以从不同的方法中提取手写功能,例如倾斜,曲率,行距,链码,字符形状等。因此,多功能集是不相关且多余的。集合中存在特征冲突,这影响了分类的准确性和计算成本。本文提出了一种称为内核互信息(KMI)的方法,该方法侧重于特征选择。 KMI方法可以减少冗余和冲突。另外,它从男女作家产生的写作样本中提取特征的最佳子集。为了确保KMI可以应用各种功能,本文介绍了手写分割和手写文本识别技术。使用两个数据库上的支持向量机(SVM)进行分类。第一个数据库来自ICDAR 2013性别预测竞赛,该竞赛以阿拉伯语和英语提供样本。另一个数据库包含中文注册文件(RDF)数据库。在两个数据库上评估了提出和比较的方法。这些方法的结果凸显了特征选择对于手写体性别预测的重要性。 (c)2018 Elsevier B.V.保留所有权利。

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