二维直接判别保局域投影分析用于人脸识别

Hengjian Li, J. Dong, Jinping Li
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引用次数: 2

摘要

为了在判别局部保持投影(DLPP)实现过程中利用类内零空间中包含的信息,本文提出了一种非常高效的人脸识别特征提取算法二维直接判别LPP (2D-DDLPP)算法。通过修改同时对角化过程,可以丢弃类间矩阵的零空间,因为它不携带判别信息;保留类内矩阵的零空间,因为它包含对分类非常重要的信息。此外,2D- ddlpp算法在特征提取之前不需要将二维图像矩阵转换为矢量,因此在提取面部特征方面比传统的一维算法更高效、更准确。因此,2D-DDLPP的性能得到了很大的提高。使用UMIST和AR人脸数据库进行了广泛的实验来测试和评估新算法。实验结果表明,本文提出的二维DDLPP方法不仅计算效率更高,而且在提取人脸特征用于人脸识别方面也比2DLPP方法更准确。
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Two-dimensional direct discriminant locality preserving projection analysis for face recognition
To make use of information contained in the null space of withinclass during the implementation of discriminant locality preserving projection(DLPP), a very efficient feature extraction algorithm called two-dimensional direct discriminant LPP (2D-DDLPP) algorithm is proposed for face recognition in this paper. By modifying the simultaneous diagonalization procedure, the null space of the interclass matrix can be discarded for it carries no discriminative information and the null space of intraclass matrix is preserved for it contains very important information for classification. Also, the 2D-DDLPP algorithm does not need to transform 2D image matrix into a vector prior to feature extraction so that it can be implemented more efficient and accurate than the 1D traditional in extracting the facial features. Therefore, the performance of 2D-DDLPP has been greatly improved. Extensive experiments are performed to test and evaluate the new algorithm using the UMIST and the AR face databases. The experimental results indicate that our proposed 2D DDLPP method is not only computationally more efficiently but also more accurate than the 2DLPP method in extracting the facial features for face recognition.
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