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首页> 外文期刊>Applied Soft Computing >Face recognition by generalized two-dimensional FLD method and multi-class support vector machines
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Face recognition by generalized two-dimensional FLD method and multi-class support vector machines

机译:广义二维FLD方法和多类支持向量机的人脸识别

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摘要

This paper presents a novel scheme for feature extraction, namely, the generalized two-dimensional Fisher's linear discriminant (G-2DFLD) method and its use for face recognition using multi-class support vector machines as classifier. The G-2DFLD method is an extension of the 2DFLD method for feature extraction. Like 2DFLD method, G-2DFLD method is also based on the original 2D image matrix. However, unlike 2DFLD method, which maximizes class separability either from row or column direction, the G-2DFLD method maximizes class separability from both the row and column directions simultaneously. To realize this, two alter native Fisher's criteria have been defined corresponding to row and column-wise projection directions. Unlike 2DFLD method, the principal components extracted from an image matrix in G-2DFLD method are scalars; yielding much smaller image feature matrix. The proposed G-2DFLD method was evaluated on two popular face recognition databases, the AT&T (formerly ORL) and the UMIST face databases. The experimental results using different experimental strategies show that the new G-2DFLD scheme outperforms the PCA, 2DPCA, FLD and 2DFLD schemes, not only in terms of computation times, but also for the task of face recognition using multi-class support vector machines (SVM) as classifier. The proposed method also outperforms some of the neural networks and other SVM-based methods for face recognition reported in the literature.
机译:本文提出了一种新颖的特征提取方案,即广义二维费舍尔线性判别法(G-2DFLD)及其在以多类支持向量机为分类器的人脸识别中的应用。 G-2DFLD方法是2DFLD方法用于特征提取的扩展。与2DFLD方法一样,G-2DFLD方法也基于原始2D图像矩阵。但是,与2DFLD方法不同,它使行或列方向的类可分离性最大化,而G-2DFLD方法却使行和列方向的类可分离性同时最大化。为了实现这一点,已定义了两个与行和列投影方向相对应的本机Fisher准则。与2DFLD方法不同,G-2DFLD方法从图像矩阵中提取的主要成分是标量。产生更小的图像特征矩阵。在两个流行的人脸识别数据库AT&T(以前称为ORL)和UMIST人脸数据库上对提出的G-2DFLD方法进行了评估。使用不同实验策略的实验结果表明,新的G-2DFLD方案不仅在计算时间方面,而且在使用多类支持向量机的人脸识别任务方面也优于PCA,2DPCA,FLD和2DFLD方案( SVM)作为分类器。所提出的方法也优于文献中报道的某些神经网络和其他基于SVM的人脸识别方法。

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