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Noise-Removal Markers to Improve PCA-Based Face Recognition

机译:噪声消除标记可改善基于PCA的人脸识别

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In this paper an approach based on insertion of "markers" is proposed to increase the performance of face recognition based on principal component analysis (PCA). The markers represent zero-valued pixels which are expected to remove information likely to affect classification (noisy pixels). The patterns of the markers was optimized with a genetic algorithm (GA) in contrast to other noise generation techniques. Experiments performed with a well known face database showed that the technique was able to achieve significant improvements on PCA particularly when data for training was small in comparison with the size of testing sets. This was also observed when the number of eigenfaces used for classification was small.
机译:在本文中,提出了一种基于“标记”插入的方法来提高基于主成分分析(PCA)的面部识别性能。标记表示零值像素,这些像素应会删除可能影响分类的信息(噪点像素)。与其他噪声生成技术相比,使用遗传算法(GA)对标记的图案进行了优化。使用众所周知的面部数据库进行的实验表明,该技术能够在PCA上实现显着改进,尤其是与训练集相比,用于训练的数据较小时。当用于分类的特征脸数量较少时,也可以观察到这一点。

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