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Extended local binary patterns for face recognition

机译:扩展的本地二进制模式用于人脸识别

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摘要

This paper presents a simple and novel, yet highly effective approach for robust face recognition. Using LBP-like descriptors based on local accumulated pixel differences Angular Differences and Radial Differences, the local differences were decomposed into complementary components of signs and magnitudes. Based on these descriptors we developed labeled dominant patterns where the most frequently occurring patterns and their labels were learned to capture discriminative textural information. Six histogram features were obtained from each given face image by concatenating spatial histograms extracted from non-overlapping subregions. A whitened PCA technique was used for dimensionality reduction to produce more compact, robust and discriminative features, which were then fused using the nearest neighbor classifier, with Euclidean distance as the similarity measure.
机译:本文提出了一种简单而新颖但高效的方法来进行鲁棒的人脸识别。使用基于局部累积的像素差异角度差异和径向差异的类LBP描述符,将局部差异分解为符号和幅度的互补分量。基于这些描述符,我们开发了标记的优势模式,在其中学习了最频繁出现的模式及其标签,以捕获判别性纹理信息。通过串联从非重叠子区域提取的空间直方图,从每个给定的面部图像中获得六个直方图特征。使用增白的PCA技术进行降维,以生成更紧凑,更健壮和更具区别性的特征,然后使用最近邻分类器以欧氏距离作为相似性度量对其进行融合。

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