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Face recognition based on an improved center symmetric local binary pattern

机译:基于改进中心对称局部二进制模式的人脸识别

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摘要

This paper proposes a local texture feature descriptor which fuses the center pixel information into the Center-Symmetric Local Binary Pattern (CS-LBP) for the purpose of face recognition. Because of its tolerance to illumination changes, and computational efficiency, the CS-LBP is widely used in face recognition. But this operator completely ignores the center pixel information which may affect the discriminative result in some applications. In order to take advantage of more useful information, this paper fuses the center pixel information into CS-LBP descriptor, namely CS-LBP/Center. In face recognition, the face image is first divided into small blocks from which CS-LBP/Center histograms are extracted and then weighted by image entropy. Finally, all the weighted histograms are connected serially to create a final texture descriptor for face recognition. The experimental results on some face datasets show that a higher recognition accuracy can be obtained by employing the proposed method with nearest neighbor classification.
机译:本文提出了一个本地纹理特征描述符,其将中心像素信息融合到中心对称的本地二进制模式(CS-LBP)以进行面部识别。由于其对照明变化和计算效率的耐受性,CS-LBP广泛用于人脸识别。但是该操作员完全忽略了可能影响某些应用中的鉴别结果的中心像素信息。为了利用更有用的信息,本文将中心像素信息融为CS-LBP描述符,即CS-LBP / Center。在人面上,首先将面部图像分成小块,从中提取CS-LBP /中心直方图,然后通过图像熵加权。最后,所有加权直方图都串联连接以创建用于面部识别的最终纹理描述符。一些面部数据集的实验结果表明,通过采用具有最近邻分类的提出的方法,可以获得更高的识别精度。

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