基于核的Fisher判别分析在人脸检测中的改进

Takio Kurita, Toshiharu Taguchi
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引用次数: 24

摘要

提出了一种改进的基于核的Fisher判别分析(FDA)人脸检测方法。在人脸检测问题中,设计一个两类分类器来判断给定的子图像是否为人脸是很重要的。训练这样的两类分类器有一个困难,因为“非人脸”类包含许多不同种类物体的图像,很难将它们全部视为一个类。另外,对于两类分类,通常的FDA构建的判别空间的维数被限制为1。为了克服常规FDA的这些问题,对常规FDA的判别准则进行了修改,使“人脸”类的协方差最小化,而“人脸”类的中心与“非人脸”类的每个训练样本之间的差异最大化。通过这种修改,我们可以得到一个更高维的判别空间,适合于“人脸/非人脸”的分类。通过对现有人脸数据库和网络上大量人脸图像的“人脸/非人脸”分类实验,表明该方法优于支持向量机(SVM)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A modification of kernel-based Fisher discriminant analysis for face detection
Presents a modification of kernel-based Fisher discriminant analysis (FDA) for face detection. In a face detection problem, it is important to design a two-category classifier which can decide whether the given input sub-image is a face or not. There is a difficulty with training such two-category classifiers because the "non-face" class includes many images of different kinds of objects, and it is difficult to treat them all as a single class. Also, the dimension of the discriminant space constructed by the usual FDA is limited to one for two-category classification. To overcome these problems with the usual FDA, the discriminant criterion of the usual FDA is modified such that the covariance of the "face" class is minimized while the differences between the center of the "face" class and each training sample of the "non-face" class are maximized. By this modification, we can obtain a higher-dimensional discriminant space which is suitable for "face/non-face" classification. It is shown that the proposed method can outperform a support vector machine (SVM) by "face/non-face" classification experiments using the face images gathered from the available face databases and the many face images on the Web.
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