scholarly journals Blind Super-Resolution for Single Remote Sensing Image via Sparse Representation and Transformed Self-Similarity

2020 ◽  
Vol 1575 ◽  
pp. 012115
Author(s):  
Yuhang Liu ◽  
Weidong Sun
2018 ◽  
Vol 232 ◽  
pp. 02037
Author(s):  
Fuzhen Zhu ◽  
Yue Liu ◽  
Xin Huang ◽  
Haitao Zhu

In order to obtain higher resolution remote sensing images with more details, an improved sparse representation remote sensing image super-resolution reconstruction(SRR) algorithm is proposed. First, remote sensing image is preprocessed to obtain the required training sample image; then, the KSVD algorithm is used for dictionary training to obtain the high-low resolution dictionary pairs; finally, the image feature extraction block is represented, which is improved by using adaptive filtering method. At the same time, the mean value filtering method is used to improve the super-resolution reconstruction iterative calculation. Experiment results show that, compared with the most advanced sparse representation super-resolution algorithm, the improved sparse representation super-resolution method can effectively avoid the loss of edge information of SRR image and obtain a better super-resolution reconstruction effect. The texture details are more abundant in subjective vision, the PSNR is increased about 1 dB, and the structure similarity (SSIM) is increased about 0.01.


2019 ◽  
Vol 27 (3) ◽  
pp. 718-725
Author(s):  
朱福珍 ZHU Fu-zhen ◽  
刘 越 LIU Yue ◽  
黄 鑫 HUANG Xin ◽  
白鸿一 BAI Hong-yi ◽  
巫 红 WU Hong

Sensors ◽  
2020 ◽  
Vol 20 (5) ◽  
pp. 1276
Author(s):  
Lingli Fu ◽  
Chao Ren ◽  
Xiaohai He ◽  
Xiaohong Wu ◽  
Zhengyong Wang

Remote sensing images have been widely used in many applications. However, the resolution of the obtained remote sensing images may not meet the increasing demands for some applications. In general, the sparse representation-based super-resolution (SR) method is one of the most popular methods to solve this issue. However, traditional sparse representation SR methods do not fully exploit the complementary constraints of images. Therefore, they cannot accurately reconstruct the unknown HR images. To address this issue, we propose a novel adaptive joint constraint (AJC) based on sparse representation for the single remote sensing image SR. First, we construct a nonlocal constraint by using the nonlocal self-similarity. Second, we propose a local structure filter according to the local gradient of the image and then construct a local constraint. Next, the nonlocal and local constraints are introduced into the sparse representation-based SR framework. Finally, the parameters of the joint constraint model are selected adaptively according to the level of image noise. We utilize the alternate iteration algorithm to tackle the minimization problem in AJC. Experimental results show that the proposed method achieves good SR performance in preserving image details and significantly improves the objective evaluation indices.


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