Fuzzy local binary patterns: A comparison between Min-Max and Dot-Sum operators in the application of facial expression recognition

M. Mohammadi, E. Fatemizadeh
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引用次数: 11

Abstract

The Local Binary Patterns (LBP) feature extraction method is a theoretically and computationally simple and efficient methodology for texture analysis. The LBP operator is used in many applications such as facial expression recognition and face recognition. The original LBP is based on hard thresholding the neighborhood of each pixel, which makes texture representation sensitive to noise. In addition, LBP cannot distinguish between a strong and a weak pattern. In order to enhance the LBP approach, Fuzzy Local Binary Patterns (FLBP) is proposed. In FLBP, any neighborhood does not represented only by one code, but, it is represented by all existing codes with different degrees. In FLBP, any fuzzy Intersection and Union operators may be used. In this study, the following operators are applied and their results are compared together: Dot-Sum, Min-Max and normalized Min-Max. Based on the extensive experiments, the fuzzy Min-Max operators are more useful and can improve the accuracy in the application of Facial Expression Recognition (FER) about 4% (i.e., form 82.98% to 86.88%).
模糊局部二值模式:最小-最大和点和算子在面部表情识别中的应用比较
局部二值模式(LBP)特征提取方法是一种理论上和计算上简单有效的纹理分析方法。LBP算子被广泛应用于面部表情识别和人脸识别等领域。原始的LBP基于每个像素邻域的硬阈值,使得纹理表示对噪声敏感。此外,LBP不能区分强和弱模式。为了改进LBP方法,提出了模糊局部二值模式(FLBP)。在FLBP中,任何邻域都不是只用一个码来表示,而是由现有的所有不同程度的码来表示。在FLBP中,可以使用任何模糊交算子和模糊联合算子。在本研究中,使用了以下算子,并将它们的结果进行了比较:Dot-Sum、Min-Max和归一化Min-Max。经过大量的实验,模糊最小-最大算子在面部表情识别(FER)的应用中更有用,可以将准确率提高约4%(即从82.98%提高到86.88%)。
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