人脸识别中的局部特征匹配

E. F. Ersi, J. Zelek
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引用次数: 22

摘要

本文提出了一种新的人脸识别技术。采用统计局部特征分析(LFA)方法,在与期望偏差最大的位置提取一组人脸图像特征点。每个特征点由一系列局部直方图来描述,这些直方图是从特征点周围不同频率和方向的Gabor响应中捕获的。直方图相交是用来比较Gabor直方图序列,以找到两个人脸之间匹配的特征点。识别是基于最佳匹配点之间的平均相似度,在探针面和每个画廊面。在FERET人脸集上的几个实验表明,所提出的技术优于所有考虑的最先进的方法(弹性束图匹配,LDA+PCA,贝叶斯内部/外部分类器,boosting Haar分类器),并验证了我们的方法对面部表情变化和光照变化的鲁棒性。
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Local Feature Matching For Face Recognition
In this paper a novel technique for face recognition is proposed. Using the statistical Local Feature Analysis (LFA) method, a set of feature points is extracted for each face image at locations with highest deviations from the expectation. Each feature point is described by a sequence of local histograms captured from the Gabor responses at different frequencies and orientations around the feature point. Histogram intersection is used to compare the Gabor histogram sequences in order to find the matched feature points between two faces. Recognition is performed based on the average similarity between the best matched points, in the probe face and each of the gallery faces. Several experiments on the FERET set of faces show the superiority of the proposed technique over all considered state-of-the-art methods (Elastic Bunch Graph Matching, LDA+PCA, Bayesian Intra/extrapersonal Classifier, Boosted Haar Classifier), and validate the robustness of our method against facial expression variation and illumination variation.
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