Combination of Local Binary Pattern and Face Geometric Features for Gender Classification from Face Images

H. K. Omer, H. Jalab, A. M. Hasan, N. E. Tawfiq
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引用次数: 6

Abstract

In the recent time bioinformatics take wide field in image processing and computer vision. Gender classification is essentially the task of identifying the person gender based on the facial image. Currently the gender classification by facial images becomes very popular due to the current visual instruments. There are different algorithms of gender classification, and each algorithm has a different approach to extract the facial feature from the input image and perform the classification. However, the single type face feature cannot be enough to represent the detailed in facial images. In this paper, we propose a new approach which consists in combining the local binary patterns (LBP) and the face geometric features to classify gender from the face images. The Histogram equalization is used to adjust the contrast of the input image. For encoding the gray level pixel, the LBP is used as a binary quantization, then the face GLCMs are used to extract the geometric structure of the face image. For gender classification, the Support Vector Machine is used as the classifier. The face images from AT&T face dataset is used to perform the experiments. The experimental results show that the application of both LBP, and the GLCMs features improves the performance the classification of gender in face images.
结合局部二值模式和人脸几何特征的人脸图像性别分类
近年来,生物信息学在图像处理和计算机视觉等领域得到了广泛的应用。性别分类本质上是根据人脸图像识别人的性别。目前,由于视觉工具的发展,基于面部图像的性别分类非常流行。性别分类有不同的算法,每种算法从输入图像中提取人脸特征并进行分类的方法也不同。然而,单一类型的人脸特征不足以代表人脸图像中的细节。本文提出了一种将局部二值模式(LBP)与人脸几何特征相结合的人脸性别分类方法。直方图均衡化用于调整输入图像的对比度。在对灰度像素进行编码时,首先使用LBP作为二值量化,然后使用人脸glcm提取人脸图像的几何结构。对于性别分类,使用支持向量机作为分类器。使用AT&T人脸数据集的人脸图像进行实验。实验结果表明,LBP和glcm特征的结合提高了人脸图像性别分类的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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