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Ojala, T., Pietikäinen, M. and Harwood, D. (1994) Performance evaluation of texture measures with classification based on Kullback discrimination of distributions. Proceedings of the 12th IAPR International Conference on Pattern Recognition (ICPR 1994), 1, pp. 582-585.

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  • 标题: 基于鲁棒的局部二值模式人脸识别算法A Novel Face Recognition Algorithm Based on Robust Local Binary Pattern

    作者: 程雷鸣, 其木苏荣, 靳薇

    关键字: 人脸识别, 鲁棒的局部二值模式, Robust函数, 马氏距离Face Recognition; Robust Local Binary Pattern; Robust Function; Mahalanobis Distance

    期刊名称: 《Computer Science and Application》, Vol.3 No.8, 2013-11-28

    摘要: 本文针对LBP算法特征包含outlier和维度过高的问题提出了一种基于鲁棒的局部二值模式(RobustLBP)的快速有效的人脸识别算法。RobustLBP算法的思想是在LBP算法的基础上加上一个Robust函数除去outlier达到降维的目的。首先通过计算LBP特征各个维度和中心元素的马氏距离作为Robust函数的输入,使得Robust函数收敛估算出重要信息。然后利用这些信息求出变换矩阵除去原始LBP特征的outlier。最后比对降维后特征间的卡方距离实现人脸识别。在FERET、CAS-PEAL-R1、LFW人脸数据库上的实验证明本文提出方法在是人脸识别上具有优越性。This paper is aimed at solving the problems that LBP feature contains outlier and the dimension of LBP fea- ture is too high, and a fast and effective face recognition algorithm based on Robust Local Binary Pattern is proposed. The main idea of RobustLBP is setting a Robust function on the basis of original LBP. First, it calculates the Maha- lanobis distance between the mean vector and every dimension as the argument of Robust function and estimates a set of important information by making Robust function convergence. Then, it obtains a transformation matrix which is used to reject outlier of original feature by using the information. Lastly, it compares the Chi-square distance among the features after reducing dimension in order to complete face recognition. Extensive experiments on FERET, CAS- PEAL-R1 and LFW face databases validate the effectiveness of face recognition.

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