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Orthogonal Maximum Margin Projection for Face Recognition

机译:面部识别的正交最大边距投影

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—Dimensionality reduction techniques that can introduce low-dimensional feature representation with enhanced discriminatory power are of paramount importance in face recognition. In this paper, a novel subspace learning algorithm called orthogonal maximum margin projection(OMMP) is proposed. The OMMP algorithm is based on the maximum margin projection (MMP), which aims at discovering both geometrical and discriminant structures of the face manifold. First, OMMP considers both the local manifold structure and class label information by using the within-class and between-class graphs, as well as characterizing the separability of different classes with the margin criterion, then OMMP orthogonalizes the basis vectors of the face subspace. Experimental results on three databases show the effectiveness of the proposed OMMP algorithm.
机译:- 可以引入具有增强鉴别力的低维特征表示的降低技术对人脸识别至关重要。在本文中,提出了一种名为正交最大边距投影(OMMP)的新型子空间学习算法。 OMMP算法基于最大裕度投影(MMP),其目的在于发现面歧管的几何和判别结构。首先,OMMP通过使用类内和类图形来考虑本地歧管结构和类标签信息,以及对边距标准的不同类别的可分离性,然后OMMP正交的基础子空间的基础向量。三个数据库的实验结果显示了所提出的OMMP算法的有效性。

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