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Ensemble local fractional LDA for face recognition

机译:合奏局部分数LDA用于人脸识别

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The classification performance of traditional LDA is often degraded by the fact that its separability criteria are not directly related to the classification accuracy in the output space. The fractional LDA (F-LDA) can solve the problem by more heavily weighting classes that are closer together. This paper proposes a novel face recognition method based on an ensemble of local F-LDA (ELF-LDA) classifiers. Firstly, an effective preprocessing scheme is employed incorporating a Logarithmic transformation and a local normalization procedure. Then the local block Gabor features are extracted by applying Gab or filters to each spatial block of preprocessed facial images. After that, multiple F-LDA classifiers are obtained on each local block of Gabor features. Finally, all the classifiers are fused to an ensemble classifier. The experimental results on CAS-PEAL-R1 face database show that our method significantly outperforms state-of-art face identification techniques. And it is noticeable that EFL-LDA obtains the best performance reported in the literature to the best of our knowledge.
机译:传统LDA的分类性能通常因其可分离标准与输出空间中的分类准确性直接相关而退化。分数LDA(F-LDA)可以通过更加靠近在一起的加权类别来解决问题。本文提出了一种基于局部F-LDA(ELF-LDA)分类器的集合的新型人脸识别方法。首先,采用有效的预处理方案,包括对数转换和局部归一化过程。然后通过将GAB或滤波器应用于预处理的面部图像的每个空间块来提取本地块Gabor特征。之后,在每个局部Gabor特征上获得多个F-LDA分类器。最后,所有分类器都融合到集合分类器。 CAS-PEAL-R1面部数据库的实验结果表明,我们的方法显着优于最先进的面部识别技术。它非常明显,EFL-LDA以我们的知识获得文献中报告的最佳表现。

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