Neural network face recognition using statistical feature and skin texture parameters

S. El-Khamy, O. Abdel-Alim, M. Saii
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引用次数: 7

Abstract

The virtual texture is due to regular or random variation in the gray level or color in an image. Features based on texture are often useful in automatically distinguishing between objects and in finding boundaries between regions. New features that are based on texture analysis of the face skin are proposed as efficient tools for face recognition. In the preprocessing step, the analyzed face region is detected. Then, the texture features of this region, namely, energy, entropy and homogeneity, are extracted. In order to test the performance of the skin texture based features in face recognition we combine them with our previously introduced statistical features that are extracted from a coded image which is obtained from the edge detection of a binary version of the original gray scale image. The statistical features and skin texture parameters are fed to a FBP neural network for face recognition. Computer simulation results with 100 test images of 10 persons (the images of each person in various poses, facial expression, and facial details) show that the proposed skin texture features highly enhance the recognition rate.
基于统计特征和皮肤纹理参数的神经网络人脸识别
虚拟纹理是由于图像中灰度或颜色的规则或随机变化而产生的。基于纹理的特征通常在自动区分物体和寻找区域之间的边界方面很有用。提出了基于皮肤纹理分析的人脸特征作为人脸识别的有效工具。在预处理步骤中,检测分析后的人脸区域。然后,提取该区域的纹理特征,即能量、熵和均匀性。为了测试基于皮肤纹理的特征在人脸识别中的性能,我们将它们与之前介绍的从原始灰度图像的二值版本的边缘检测中提取的编码图像中提取的统计特征相结合。将统计特征和皮肤纹理参数送入FBP神经网络进行人脸识别。10个人的100张测试图像(每个人在各种姿势、面部表情和面部细节的图像)的计算机仿真结果表明,所提出的皮肤纹理特征大大提高了识别率。
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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