Abstract

The fusion of low spatial resolution hyperspectral images and high spatial resolution multispectral images in the same scenario is important for the super-resolution of hyperspectral images. The spectral response function (SRF) and the point spread function (PSF) are two crucial prior pieces of information in fusion, and most of the current algorithms need to provide these two preliminary pieces of information in advance, even for semi-blind fusion algorithms at least the SRF. This causes limitations in the application of fusion algorithms. This paper aims to solve the dependence of the fusion method on the point spread function and proposes a method to estimate the spectral response function from the images involved in the fusion to achieve blind fusion. We conducted experiments on simulated datasets Pavia University, CAVE, and the remote sensing images acquired by two spectral cameras, Sentinel 2 and Hyperion. The experimental results show that our proposed SRF estimation method can improve the PSNR value by 5 dB on average compared with other state-of-the-art SRF estimation results. The proposed blind fusion method can improve the PSNR value of fusion results by 3–15 dB compared with other blind fusion methods.

Highlights

  • State Key Laboratory of High Performance Computing, College of Computer Science and Technology, National University of Computer Science and Technology, National University of Defense Technology, Citation: Jian, L.; Yuanxi, P

  • We will examine the superior performance of our proposed spectral response function (SRF) estimation using two state-of-the-art semi-blind fusion methods

  • We label the two SRFs used in this paper as SRF1 and SRF2, where SRF1 denotes the IKONOS class reflection spectral response filter [27] and SRF2 denotes the spectral response function produced using the Gf-1-16m multispectral camera response

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Summary

Introduction

State Key Laboratory of High Performance Computing, College of Computer Science and Technology, National University of Computer Science and Technology, National University of Defense Technology, Citation: Jian, L.; Yuanxi, P. The spectral response function (SRF) and the point spread function (PSF) are two crucial prior pieces of information in fusion, and most of the current algorithms need to provide these two preliminary pieces of information in advance, even for semi-blind fusion algorithms at least the SRF. This causes limitations in the application of fusion algorithms. Two important a priori pieces of information are usually involved, the point spread function (PSF): a fuzzy matrix used to model the spatial blur from the target HR-HSI to the LR-HSI; and the spectral response function (SRF):

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