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Three-dimensional modular discriminant analysis (3DMDA): A new feature extraction approach for face recognition

机译:三维模块化判别分析(3DMDA):用于面部识别的新特征提取方法

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摘要

In this paper, we present a novel multilinear algebra based feature extraction approach for face recognition which preserves some implicit structural or locally-spatial information among elements of the original images. We call this method three-dimensional modular discriminant analysis (3DMDA). Our approach uses a new data model called third-order tensor model (3TM) for representing the face images. In this model, each image is partitioned into the several equal size local blocks, and the local blocks are combined to represent the image as a third-order tensor. Then, a new optimization algorithm called direct mode (d-mode) is introduced for learning three optimal projection axes. Extensive experimental results conducted on four benchmark face image databases, demonstrate that 3DMDA is much more effective and robust than state-of-the-art facial feature extraction methods on both classification accuracies and computational complexities.
机译:在本文中,我们提出了一种新颖的基于人脸识别的基于多线性代数的特征提取方法,该方法保留了原始图像元素之间的一些隐式结构或局部空间信息。我们将此方法称为三维模块化判别分析(3DMDA)。我们的方法使用称为三阶张量模型(3TM)的新数据模型来表示人脸图像。在该模型中,每个图像被划分为几个相等大小的局部块,并且这些局部块被组合以将图像表示为三阶张量。然后,引入了一种新的优化算法,称为直接模式(d模式),用于学习三个最佳投影轴。在四个基准人脸图像数据库上进行的大量实验结果表明,在分类准确性和计算复杂性方面,3DMDA比最新的人脸特征提取方法更加有效和强大。

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