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Face feature extraction and recognition via local binary pattern and two-dimensional locality preserving projection

机译:面部特征提取和识别局部二进制图案和二维位置保存投影

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摘要

In this paper, we propose a novel face feature extraction approach based on Local Binary Pattern (LBP) and Two Dimensional Locality Preserving Projections (2DLPP) to enhance the texture features and preserve the space structure properties of a face image. LBP is firstly used to remove the effect of illumination and noise, which would enhance the detailed texture characteristics of face images. Then 2DLPP is performed to extract some prominent features and decrease the image dimension with space structure information. The Nearest Neighborhood Classifier (NNC) is used to recognize a face image at the end. In addition, the rule for dimension selection is studied from the results of experiments about choosing an appropriate feature dimension by 2DLPP computation. The experimental results on the Yale, the extended Yale B and CMU PIE C09 benchmark datasets showed that the proposed face feature extraction and recognition method achieves a better performance in comparison with similar techniques, and the proposed dimension selection rule can give an appropriate feature dimension in 2DLPP.
机译:在本文中,我们提出了一种基于局部二进制图案(LBP)的新面部特征提取方法,以及二维位置保存投影(2DLPP),以增强纹理特征并保留面部图像的空间结构特性。首先用于去除照明和噪声的效果,这将增强面部图像的详细纹理特征。然后执行2DLPP以提取一些突出特征并通过空间结构信息降低图像维度。最近的邻域分类器(NNC)用于识别最后的脸部图像。此外,从关于选择适当的特征维度的实验结果,研究了维度选择的规则。耶鲁的实验结果,延伸的耶鲁B和CMU派C09基准数据集显示,所提出的面部特征提取和识别方法与类似技术相比,实现了更好的性能,并且所提出的尺寸选择规则可以给出适当的特征维度2DLPP。

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