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Learning Multi-scale Block Local Binary Patterns for Face Recognition

机译:学习多尺度块本地二进制模式用于面部识别

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In this paper, we propose a novel representation, called Multi-scale Block Local Binary Pattern (MB-LBP), and apply it to face recognition. The Local Binary Pattern (LBP) has been proved to be effective for image representation, but it is too local to be robust. In MB-LBP, the computation is done based on average values of block subregions, instead of individual pixels. In this way, MB-LBP code presents several advantages: (1) It is more robust than LBP; (2) it encodes not only microstructures but also macrostructures of image patterns, and hence provides a more complete image representation than the basic LBP operator; and (3) MB-LBP can be computed very efficiently using integral images. Furthermore, in order to reflect the uniform appearance of MB-LBP, we redefine the uniform patterns via statistical analysis. Finally, AdaBoost learning is applied to select most effective uniform MB-LBP features and construct face classifiers. Experiments on Face Recognition Grand Challenge (FRGC) ver2.0 database show that the proposed MB-LBP method significantly outperforms other LBP based face recognition algorithms.
机译:在本文中,我们提出了一种新颖的表示,称为多尺度块局部二进制模式(MB-LBP),并将其应用于面部识别。本地二进制模式(LBP)已被证明对图像表示有效,但它太局部才能稳健。在MB-LBP中,基于块子区域的平均值而不是单独的像素来完成计算。通过这种方式,MB-LBP代码具有以下几个优点:(1)它比LBP更强大; (2)它不仅编码微结构,而且编码图像模式的宏观结构,因此提供比基本LBP操作员更完整的图像表示; (3)MB-LBP可以使用整体图像非常有效地计算。此外,为了反映MB-LBP的均匀外观,我们通过统计分析重新定义均匀的图案。最后,应用Adaboost学习来选择最有效的统一MB-LBP特征和构建面部分类器。面部识别大挑战(FRGC)Ver2.0数据库的实验表明,所提出的MB-LBP方法显着优于其他基于LBP的面部识别算法。

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