Multi-view features-based HRRP classification via sparsity preserving projection

Author(s):  
Bangzhen Xu ◽  
Yiqin Chen ◽  
Hong Gu ◽  
Weimin Su
2017 ◽  
Vol 77 (1) ◽  
pp. 1069-1092 ◽  
Author(s):  
Jun Yin ◽  
Zhihui Lai ◽  
Weiming Zeng ◽  
Lai Wei

2013 ◽  
Vol 760-762 ◽  
pp. 1615-1620 ◽  
Author(s):  
Xiao Yuan Jing ◽  
Wen Qian Li ◽  
Hao Gao ◽  
Yong Fang Yao ◽  
Jiang Yue Man

As one of the most popular research topics, sparse representation (SR) technique has been successfully employed to solve face recognition task. Though current SR based methods prove to achieve high classification accuracy, they implicitly assume that the losses of all misclassifications are the same. However, in many real-world face recognition applications, this assumption may not hold as different misclassifications could lead to different losses. Driven by this concern, in this paper, we propose a cost-sensitive sparsity preserving projections (CSSPP) for face recognition. CSSPP considers the cost information of sparse representation while calculating the sparse structure of the training set. Then, CSSPP employs the sparsity preserving projection method to achieve the projection transform and keeps the sparse structure in the low-dimensional space. Experimental results on the public AR and FRGC face databases are presented to demonstrate that both of the proposed approaches can achieve high recognition rate and low misclassification loss, which validate the efficacy of the proposed approach.


2018 ◽  
Vol 38 (9) ◽  
pp. 0910001
Author(s):  
童莹 Tong Ying ◽  
魏以民 Wei Yimin ◽  
沈越泓 Shen Yuehong

2016 ◽  
Vol 216 ◽  
pp. 286-295 ◽  
Author(s):  
Huibing Wang ◽  
Lin Feng ◽  
Laihang Yu ◽  
Jing Zhang

2019 ◽  
Vol 9 (17) ◽  
pp. 3583
Author(s):  
Fen Cai ◽  
Miao-Xia Guo ◽  
Li-Fang Hong ◽  
Ying-Yi Huang

Dimensionality reduction is an important research area for hyperspectral remote sensing images due to the redundancy of spectral information. Sparsity preserving projection (SPP) is a dimensionality reduction (DR) algorithm based on the l1-graph, which establishes the relations of samples by sparse representation. However, SPP is an unsupervised algorithm that ignores the label information of samples and the objective function of SPP; instead, it only considers the reconstruction error, which means that the classification effect is constrained. In order to solve this problem, this paper proposes a dimensionality reduction algorithm called the supervised sparse embedded preserving projection (SSEPP) algorithm. SSEPP considers the manifold structure information of samples and makes full use of the label information available in order to enhance the discriminative ability of the projection subspace. While maintaining the sparse reconstruction error, the algorithm also minimizes the error between samples of the same class. Experiments were performed on an Indian Pines hyperspectral dataset and HJ1A-HSI remote sensing images from the Zhangjiang estuary in Southeastern China, respectively. The results show that the proposed method effectively improves its classification accuracy.


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