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Two-Dimensional Discriminant Locality Preserving Projection Based on l(1)-norm Maximization

机译:基于l(1)范数最大化的二维判别局部性保留投影

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In this paper, a new linear dimensionality reduction method named Two-Dimensional Discriminant Locality Preserving Projection Based on l(1)-norm Maximization (2DDLPP-L1) is proposed for preprocessing of image data. 2DDLPP-L1 makes full use of the robustness of l(1)-norm to noises and outliers. Furthermore, 2DDLPP-L1 is a 2D-based method which extracts image features directly from image matrices, avoiding instability and high complexity of matrix computation. Two graphs, separation graph and cohesiveness graph, are constructed with feature vectors as vertices to represent the inter-class separation and intra-class cohesiveness. An iterative algorithm with proof of convergence is proposed to solve the optimal projection matrix. Experiments on several face image databases demonstrate that the performance and robustness of 2DDLPP-L1 are better than its related methods. (C) 2016 Elsevier B.V. All rights reserved.
机译:本文提出了一种新的线性降维方法,即基于l(1)范数最大化(2DDLPP-L1)的二维判别局部性保留投影方法,用于图像数据的预处理。 2DDLPP-L1充分利用了l(1)-范数对噪声和异常值的鲁棒性。此外,2DDLPP-L1是基于2D的方法,可直接从图像矩阵中提取图像特征,从而避免了矩阵计算的不稳定性和高复杂度。用特征向量作为顶点构造两个图,即分离图和内聚力图,以表示类间分离和类内内聚力。提出了一种具有收敛性的迭代算法来求解最优投影矩阵。在多个面部图像数据库上进行的实验表明,2DDLPP-L1的性能和鲁棒性优于其相关方法。 (C)2016 Elsevier B.V.保留所有权利。

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