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Double linear regression classification for face recognition

机译:双重线性回归分类用于人脸识别

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摘要

A new classifier designed based on linear regression classification (LRC) classifier and simple-fast representation-based classifier (SFR), named double linear regression classification (DLRC) classifier, is proposed for image recognition in this paper. As we all know, the traditional LRC classifier only uses the distance between test image vectors and predicted image vectors of the class subspace for classification. And the SFR classifier uses the test image vectors and the nearest image vectors of the class subspace to classify the test sample. However, the DLRC classifier computes out the predicted image vectors of each class subspace and uses all the predicted vectors to construct a novel robust global space. Then, the DLRC utilizes the novel global space to get the novel predicted vectors of each class for classification. A mass number of experiments on AR face database, JAFFE face database, Yale face database, Extended YaleB face database, and PIE face database are used to evaluate the performance of the proposed classifier. The experimental results show that the proposed classifier achieves better recognition rate than the LRC classifier, SFR classifier, and several other classifiers.
机译:提出了一种基于线性回归分类器和基于简单快速表示的分类器设计的分类器,称为双重线性回归分类器,用于图像识别。众所周知,传统的LRC分类器仅使用分类子空间的测试图像矢量和预测图像矢量之间的距离进行分类。 SFR分类器使用类别子空间的测试图像矢量和最近的图像矢量对测试样本进行分类。然而,DLRC分类器计算出每个类子空间的预测图像矢量,并使用所有预测矢量来构建新颖的鲁棒全局空间。然后,DLRC利用新的全局空间来获得每个类别的新的预测矢量进行分类。在AR人脸数据库,JAFFE人脸数据库,Yale人脸数据库,扩展YaleB人脸数据库和PIE人脸数据库上进行了大量实验,以评估该分类器的性能。实验结果表明,与LRC分类器,SFR分类器和其他几种分类器相比,该分类器具有更高的识别率。

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