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An Empirical Evaluation of the Local Texture Description Framework-Based Modified Local Directional Number Pattern with Various Classifiers for Face Recognition

机译:基于具有各种分类器的人脸识别的基于局部纹理描述框架的修正局部方向数字模式的实证评估

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ABSTRACT Texture is one of the chief characteristics of an image. In recent years, local texture descriptors have garnered attention among researchers in describing effective texture patterns to demarcate facial images. A feature descriptor titled Local Texture Description Framework-based Modified Local Directional Number pattern (LTDF_MLDN), capable of encoding texture patterns with pixels that lie at dissimilar regions, has been proposed recently to describe effective features for face images. However, the role of the descriptor can differ with different classifiers and distance metrics for diverse issues in face recognition. Hence, in this paper, an extensive evaluation of the LTDF_MLDN is carried out with an Extreme Learning Machine (ELM), a Support Vector Machine (SVM) and a Nearest Neighborhood Classifier (NNC) which uses Euclidian, Manhattan, Minkowski, G-statistics and chi-square dissimilarity metrics to illustrate differences in performance with respect to assorted issues in face recognition using six benchmark databases. Experimental results depict that the proposed descriptor is best suited with NNC for general case and expression variation, whereas, for the other facial variations ELM is found to produce better results.
机译:摘要纹理是图像的主要特征之一。近年来,局部纹理描述符在描述有效的纹理图案以划分面部图像时引起了研究人员的关注。最近已经提出了一种名为“基于局部纹理描述框架的经修改的局部方向数字图案”(LTDF_MLDN)的特征描述符,该特征描述符能够利用位于不同区域的像素对纹理图案进行编码,以描述面部图像的有效特征。但是,对于人脸识别中的各种问题,描述符的作用可能因不同的分类器和距离度量而有所不同。因此,在本文中,使用极端学习机(ELM),支持向量机(SVM)和最近邻分类器(NNC)对LTDF_MLDN进行了广泛的评估,其中使用了Euclidian,Manhattan,Minkowski,G-statistics和卡方差异指标用于说明使用六个基准数据库在面部识别方面对各种问题的性能差异。实验结果表明,针对一般情况和表情变化,建议的描述符最适合NNC,而对于其他面部变化,发现ELM可以产生更好的结果。

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