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Data Driven Feature Extraction for Gender Classification using Multi-Script Handwritten Texts

机译:使用多脚本手写文本的性别分类数据驱动功能提取

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This paper presents a study on assessing the effectiveness of machine learned features to predict gender of writers from images of handwriting. Pre-trained Convolutional Neural Networks have been employed as feature extractors to discriminate male and female handwriting while classification is carried out using a number of classifiers, Linear Discriminant Analysis (LDA) being the most effective. Feature extraction is carried out by changing the scale of observation using word, patch and page images. Experiments are carried out on English and Arabic handwriting samples of the QUWI database and the realized results demonstrate the effectiveness of machine learned features in predicting gender from handwriting.
机译:本文介绍了评估机器学习功能的有效性,以预测手写图像图像的性别。已经使用预先训练的卷积神经网络作为特征提取器,以区分雄性和女性手写,同时使用许多分类器进行分类,线性判别分析(LDA)是最有效的。通过使用Word,Patch和Page Images改变观察规模来执行特征提取。对Quwi数据库的英语和阿拉伯语手写样本进行了实验,并实现了从手写预测性别的机器学习功能的有效性。

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