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Gender Classification from Offline Handwriting Images Using Textural Features

机译:使用纹理特征从离线手写图像中进行性别分类

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Prediction of gender and other demographic attributes of individuals from handwriting samples offers an interesting basic, as well as applied research problem. The correlation between gender and the visual appearance of handwriting has been validated by a number of studies and the present study is based on the same idea. We exploit the textural measurements as the discriminating attribute between male and female writings. The textural information in a writing is captured by applying a bank of Gabor filters to the image of handwriting. The mean and standard deviation values of the filter responses are collected in matrix and the Fourier transform of the matrix is used as a feature. Classification is carried out using a feed forward neural network. The proposed technique evaluated on a subset of the QUWI database realized promising results under different experimental settings.
机译:从笔迹样本中预测个人的性别和其他人口统计属性提供了一个有趣的基础以及应用研究问题。性别与笔迹的视觉外观之间的相关性已通过许多研究得到验证,并且本研究基于相同的想法。我们利用质地测量作为男性和女性作品之间的区别属性。通过将一堆Gabor过滤器应用于笔迹图像,可以捕获笔迹中的纹理信息。滤波器响应的平均值和标准偏差值被收集在矩阵中,矩阵的傅里叶变换被用作特征。使用前馈神经网络进行分类。在QUWI数据库的子集上评估的拟议技术在不同的实验设置下实现了可喜的结果。

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