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Multiple classifier implementation of a divide-and-conquer approach using appearance-based statistical methods for face recognition

机译:使用基于外观的统计方法进行人脸识别的分治法的多分类器实现

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This paper presents a multiple classifier system for the face recognition problem-based on a novel divide-and-conquer approach using appearance-based statistical methods, namely principal component analysis (PCA), linear discriminant analysis (LDA) and independent component analysis (ICA). A facial image is divided into a number of horizontal segments and the associated local features are extracted using a particular statistical method. Using a simple distance measure and an appropriate classifier combination method, facial images are successfully classified. The standard FERET database and the FERET evaluation methodology are used in all experimental evaluations. Computational and storage space efficiencies and experimental recognition performance of the proposed approach indicate that significant achievements are obtained compared to individual classifiers.
机译:本文提出了一种基于人脸识别的多分类器系统,该系统基于新颖的分治方法,采用基于外观的统计方法,即主成分分析(PCA),线性判别分析(LDA)和独立成分分析(ICA) )。将面部图像划分为多个水平段,并使用特定的统计方法提取关联的局部特征。使用简单的距离度量和适当的分类器组合方法,可以成功分类面部图像。在所有实验评估中均使用标准的FERET数据库和FERET评估方法。计算和存储空间效率以及所提出方法的实验识别性能表明,与单个分类器相比,获得了重大成就。

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