人脸匹配通过信息理论的关注点及其在人脸检测和分类中的应用

K. Hotta, T. Mishima, Takio Kurita, S. Umeyama
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引用次数: 27

摘要

本文提出了一种基于信息理论的人脸匹配方法。选择注意点作为Gabor滤波器应用于对比滤波图像的输出(Gabor特征)具有丰富信息的点。将某点的Gabor特征的信息值作为权重,将相关的加权和作为匹配的相似度度量。为了应对人脸尺度的变化,对输入图像进行插值生成不同尺度的图像,并寻找最佳匹配。利用信息论给出的注意点,使匹配在各种环境下都具有鲁棒性。将这种匹配方法应用于人脸检测和人脸分类中。利用多年来在不同环境下采集的人脸图像进行实验,验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Face matching through information theoretical attention points and its applications to face detection and classification
This paper presents a face matching method through information theoretical attention points. The attention points are selected as the points where the outputs of Gabor filters applied to the contrast-filtered image (Gabor features) have rich information. The information value of Gabor features of the certain point is used as the weight and the weighed sum of the correlations is used as the similarity measure for the matching. To cope with the scale changes of a face, several images with different scales are generated by interpolation from the input image and the best match is searched. By using the attention points given from the information theoretical point of view, the matching becomes robust under various environments. This matching method is applied to face detection of a known person and face classification. The effectiveness of the proposed method is confirmed by experiments using the face images captured over years under the different environments.
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