scholarly journals Dimensionality reduction and classification based on lower rank tensor analysis for hyperspectral imagery

2013 ◽  
Vol 32 (6) ◽  
pp. 569
Author(s):  
Zhao CHEN ◽  
Bin WANG ◽  
Li-Ming ZHANG
2014 ◽  
Vol 26 (4) ◽  
pp. 761-780 ◽  
Author(s):  
Guoqiang Zhong ◽  
Mohamed Cheriet

We present a supervised model for tensor dimensionality reduction, which is called large margin low rank tensor analysis (LMLRTA). In contrast to traditional vector representation-based dimensionality reduction methods, LMLRTA can take any order of tensors as input. And unlike previous tensor dimensionality reduction methods, which can learn only the low-dimensional embeddings with a priori specified dimensionality, LMLRTA can automatically and jointly learn the dimensionality and the low-dimensional representations from data. Moreover, LMLRTA delivers low rank projection matrices, while it encourages data of the same class to be close and of different classes to be separated by a large margin of distance in the low-dimensional tensor space. LMLRTA can be optimized using an iterative fixed-point continuation algorithm, which is guaranteed to converge to a local optimal solution of the optimization problem. We evaluate LMLRTA on an object recognition application, where the data are represented as 2D tensors, and a face recognition application, where the data are represented as 3D tensors. Experimental results show the superiority of LMLRTA over state-of-the-art approaches.


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