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A method for detecting human face region based on generation and selection of kernel features

机译:一种基于生成和选择内核特征的人脸区域检测方法

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Recent researches for detecting face regions from images have paid attention to high dimensional kernel features (KFs), which are obtained by a non-linear transformation of original features extracted from images. A support vector machine (SVM) is one of the most prominent learning algorithms for KFs. However, SVM is time-consuming because of needing a large number of KFs to improve the accuracy of the classification. This paper proposes a new method that constructs a classifier between face and non-face regions by generating and choosing KFs based on Kullback-Leibler divergence (KLD). The KLD means a distance between two distributions of face and non-face data under a given KF, and some KFs of large KLDs are selected for the face detection. Moreover, the use of KLD enables us to generate new KFs. and to deal with different kinds of KFs concurrently. Some experiments show that our method can reduce the number of KFs much more than SVM, and achieve almost equal or better detection rate than that of SVM.
机译:最近检测图像面部区域的研究已经注意到通过从图像中提取的原始特征的非线性变换来获得高维内核特征(KFS)。支持向量机(SVM)是KFS最突出的学习算法之一。然而,SVM是耗时的,因为需要大量的KF来提高分类的准确性。本文提出了一种通过基于Kullback-Leibler发散(KLD)产生和选择KF来构造面部和非面积之间的分类器的新方法。 KLD表示在给定KF下的两个面和非面部数据分布之间的距离,并且选择面部检测的一些大KLD的KFS。此外,使用KLD使我们能够生成新的KFS。并同时处理不同类型的KFS。一些实验表明,我们的方法可以减少多于SVM的KF数量,并且达到比SVM的几乎相等或更好的检测率。

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