基于fishface和支持向量机的人脸性别分类

Muhammad Noor Fatkhannudin, A. Prahara
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引用次数: 2

摘要

计算机视觉技术已广泛应用于许多涉及生物特征识别的应用和设备中。其中之一是性别分类,这在处理人类独特的面部特征时面临着显著的挑战。更不用说来自各种面部姿势和照明条件的挑战。为了进行性别分类,我们调整了人脸图像的大小并将其转换为灰度,然后使用fishface提取其特征。使用主成分分析(PCA)将特征简化为100个分量,然后使用线性支持向量机(SVM)将其分类为男性和女性类别。在1014张不同人种的人脸图像上进行的测试中,使用标准k-NN分类器的准确率为86%,而我们提出的方法显示出更好的结果,准确率为88%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gender Classification using Fisherface and Support Vector Machine on Face Image
Computer vision technology has been widely used in many applications and devices that involves biometric recognition. One of them is gender classification which has notable challenges when dealing with unique facial characteristics of human races. Not to mention the challenges from various poses of face and the lighting conditions. To perform gender classification, we resize and convert the face image into grayscale then extract its features using Fisherface. The features are reduced into 100 components using Principal Component Analysis (PCA) then classified into male and female category using linear Support Vector Machine (SVM). The test that conducted on 1014 face images from various human races resulted in 86% of accuracy using standard k-NN classifier while our proposed method shows better result with 88% of accuracy.
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