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DECISION-LEVEL FUSION OF PCA AND LDA-BASED FACE RECOGNITION ALGORITHMS

机译:PCA和基于LDA的人脸识别算法的决策层融合

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摘要

In this paper, a face recognition system based on the fusion of two well-known appearance-based algorithms, namely Principal Component Analysis (PCA) and Linear Discriminant Analysis (LDA), is proposed. Fusion is performed at the decision-level, that is, the outputs of the individual face recognition algorithms are combined. Two main benefits of such fusion are shown. First, the reduction of the dependence on the environmental conditions with respect to the best individual recognizer. Secondly, the overall performance improvement over the best individual recognizer. To this end, fusion is investigated under different environmental conditions, namely, "ideal" conditions, characterized by a very limited variability of environmental parameters, and "real" conditions with large variability of lighting and face expressions.
机译:本文提出了一种基于融合两种著名的基于外观的算法,即主成分分析(PCA)和线性判别分析(LDA)的面部识别系统。融合是在决策级别执行的,也就是说,将各个面部识别算法的输出进行组合。显示了这种融合的两个主要优点。首先,相对于最佳个人识别器,减少了对环境条件的依赖。其次,总体性能比最佳个人识别器高。为此,在不同的环境条件下研究融合,即“理想”条件,其特征是环境参数的变化非常有限,而“真实”条件的照明和面部表情变化很大。

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