HJDLBP: A novel texture descriptor and its application in face recognition

S. M. Tabatabaei, Abdollah Chalechale
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引用次数: 2

Abstract

Local binary pattern (LBP) is a simple and computationally efficient texture descriptor which has been attracting many attentions since its introduction; due to the extensive research done in this regard, diverse variants of LBP have been introduced in recent years. While original form of this operator encodes structures like spots, edges, and corners in form of a binary code, a more recent type of LBP called high order directional derivative LBP (DLBP) reveals some alternative structures such as convexities and concavities. Even though these structures are important features in the images, another significant consideration is the relationship between them. For instance, there is a high probability that an edge structure be present near another one. In this paper, we have introduced a novel texture descriptor named HJDLBP (high order joint DLBP) which is able to encode relationships between micro patterns in addition to the prevalent structures. To evaluate the proposed descriptor, we have considered two renowned JAFFE and YALE facial image databases and then exploited the proposed texture descriptor for face recognition issues. The experiments are implemented in software in the following manner: as a first step, the face part of each image is segmented from its background using Viola and Jones algorithm. Afterward, the micro patterns and relationships between them are extracted from rectangularly partitioned face images; and their histograms are constructed as well. Finally, a group of SVMs are trained for classification. We have compared obtained results using the new operator with the results attained when conventional LBP and high order DLBP are applied for feature extraction from image blocks. The comparative results show the efficacy of the proposed operator as a texture descriptor.
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HJDLBP:一种新的纹理描述子及其在人脸识别中的应用
局部二值模式(LBP)是一种简单、计算效率高的纹理描述符,自提出以来一直受到人们的关注;由于在这方面进行了广泛的研究,近年来出现了多种LBP变体。虽然该算子的原始形式以二进制编码的形式编码点、边和角等结构,但最近一种称为高阶方向导数LBP (DLBP)的LBP揭示了一些替代结构,如凸和凹。尽管这些结构是图像中的重要特征,但另一个重要的考虑是它们之间的关系。例如,一个边缘结构很有可能出现在另一个边缘结构附近。本文提出了一种新的纹理描述符HJDLBP (high order joint DLBP),该描述符除了可以编码流行结构外,还可以编码微图案之间的关系。为了评估所提出的描述符,我们考虑了两个著名的JAFFE和YALE面部图像数据库,然后利用所提出的纹理描述符进行人脸识别问题。实验在软件中实现的方式如下:第一步,使用Viola和Jones算法将每张图像的人脸部分从背景中分割出来。然后,从矩形分割的人脸图像中提取微模式及其相互关系;它们的直方图也被构造出来了。最后,训练一组支持向量机进行分类。我们将使用新算子获得的结果与使用传统LBP和高阶DLBP从图像块中提取特征的结果进行了比较。对比结果表明了该算子作为纹理描述符的有效性。
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