基于支持向量机的性别分类

B. Moghaddam, Ming-Hsuan Yang
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引用次数: 330

摘要

利用FERET人脸数据库中的1755张低分辨率“缩略图”人脸(21 × 12像素),研究了支持向量机(SVM)的视觉性别分类。支持向量机的性能(误差3.4%)优于传统的模式分类器(线性,二次,Fisher线性判别,最近邻)以及更现代的技术,如径向基函数(RBF)分类器和大型集成-RBF网络。SVM在同样的任务上也优于人类测试对象:在一项由30名年龄在25岁到40岁之间的人类测试对象组成的感知研究中,发现“缩略图”的平均错误率为32%,而更高分辨率图像的平均错误率为6.7%。支持向量机的低分辨率和高分辨率测试之间的性能差异仅为1%,证明了视觉分类的鲁棒性和相对尺度不变性。
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 with support vector machines
Support vector machines (SVM) are investigated for visual gender classification with low-resolution "thumbnail" faces (21-by-12 pixels) processed from 1755 images from the FERET face database. The performance of SVM (3.4% error) is shown to be superior to traditional pattern classifiers (linear, quadratic, Fisher linear discriminant, nearest-neighbor) as well as more modern techniques such as radial basis function (RBF) classifiers and large ensemble-RBF networks. SVM also out-performed human test subjects at the same task: in a perception study with 30 human test subjects, ranging in age from mid-20s to mid-40s, the average error rate was found to be 32% for the "thumbnails" and 6.7% with higher resolution images. The difference in performance between low- and high-resolution tests with SVM was only 1%, demonstrating robustness and relative scale invariance for visual classification.
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