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Dual subspace discriminative projection learning

机译:双子空间辨别投影学习

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摘要

In this paper, we propose a dual subspace discriminative projection learning (DSDPL) framework for multi-category image classification. Our approach reflects the notion that images are composed of class shared information, class-specific information, and sparse noise. Unlike traditional subspace learning methods, DSDPL serves to decompose original high dimensional data, via learned projection matrices, into class-shared and class-specific subspaces. The learned projection matrices are jointly constrained with l(2,1) sparse norm and LDA terms while the reconstructive properties of DSDPL reduce information loss, leading to greater stability within low dimensional subspaces. Regression-based terms are also included to facilitate a more robust classification approach, using extracted class-specific features for better classification. Our approach is examined on five different datasets for face, object and scene classifications. Experimental results demonstrate not only the superiority and versatility of DSDPL over current benchmark approaches, but also a more robust classification approach with low sample size training data. (C) 2020 Elsevier Ltd. All rights reserved.
机译:本文提出了一种用于多类别图像分类的双子空间判别投影学习(DSDPL)框架。我们的方法反映了图像由类共享信息、类特定信息和稀疏噪声组成的概念。与传统的子空间学习方法不同,DSDPL通过学习的投影矩阵将原始高维数据分解为类共享子空间和类特定子空间。学习到的投影矩阵被l(2,1)稀疏范数和LDA项联合约束,而DSDPL的重构特性减少了信息损失,从而在低维子空间内获得更大的稳定性。还包括基于回归的术语,以促进更稳健的分类方法,使用提取的特定于类的特征进行更好的分类。我们的方法在五个不同的人脸、物体和场景分类数据集上进行了检验。实验结果不仅证明了DSDPL相对于现有基准方法的优越性和通用性,而且证明了DSDPL在低样本训练数据的情况下具有更强的鲁棒性。(C) 2020爱思唯尔有限公司版权所有。

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