A machine learning approach for fingerprint based gender identification

K. Arun, K. Sarath
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引用次数: 25

Abstract

This paper deals with the problem of gender classification using fingerprint images. Our attempt to gender identification follows the use of machine learning to determine the differences between fingerprint images. Each image in the database was represented by a feature vector consisting of ridge thickness to valley thickness ratio (RTVTR) and the ridge density values. By using a support vector machine trained on a set of 150 male and 125 female images, we obtain a robust classifying function for male and female feature vector patterns.
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基于指纹的性别识别机器学习方法
本文研究了基于指纹图像的性别分类问题。我们对性别识别的尝试遵循了使用机器学习来确定指纹图像之间的差异。数据库中的每张图像由脊厚谷厚比(RTVTR)和脊密度值组成的特征向量表示。通过对150张男性和125张女性图像进行训练的支持向量机,我们获得了男性和女性特征向量模式的鲁棒分类函数。
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