Total-variation-regularized local spectral unmixing for hyperspectral image super-resolution

2019 ◽  
Vol 27 (12) ◽  
pp. 2683-2692
Author(s):  
张少磊 ZHANG Shao-lei ◽  
付光远 FU Guang-yuan ◽  
汪洪桥 WANG Hong-qiao ◽  
赵玉清 ZHAO Yu-qing
Author(s):  
A. Valli Bhasha ◽  
B. D. Venkatramana Reddy

The image super-resolution methods with deep learning using Convolutional Neural Network (CNN) have been producing admirable advancements. The proposed image resolution model involves the following two main analyses: (i) analysis using Adaptive Discrete Wavelet Transform (ADWT) with Deep CNN and (ii) analysis using Non-negative Structured Sparse Representation (NSSR). The technique termed as NSSR is used to recover the high-resolution (HR) images from the low-resolution (LR) images. The experimental evaluation involves two phases: Training and Testing. In the training phase, the information regarding the residual images of the dataset are trained using the optimized Deep CNN. On the other hand, the testing phase helps to generate the super resolution image using the HR wavelet subbands (HRSB) and residual images. As the main novelty, the filter coefficients of DWT are optimized by the hybrid Fire Fly-based Spotted Hyena Optimization (FF-SHO) to develop ADWT. Finally, a valuable performance evaluation on the two benchmark hyperspectral image datasets confirms the effectiveness of the proposed model over the existing algorithms.


Sign in / Sign up

Export Citation Format

Share Document