Abstract

Since hyperspectral satellite images (HSIs) usually hold low spatial resolution, improving the spatial resolution of hyperspectral imaging (HSI) is an effective solution to explore its potential for remote sensing applications, such as land cover mapping over urban and coastal areas. The fusion of HSIs with high spatial resolution multispectral images (MSIs) and panchromatic (PAN) images could be a solution. To address the challenging work of fusing HSIs, MSIs and PAN images, a novel easy-to-implement stepwise fusion approach was proposed in this study. The fusion of HSIs and MSIs was decomposed into a set of simple image fusion tasks through spectral grouping strategy. HSI, MSI and PAN images were fused step by step using existing image fusion algorithms. According to different fusion order, two strategies ((HSI+MSI)+PAN and HSI+(MSI+PAN)) were proposed. Using simulated and real Gaofen-5 (GF-5) HSI, MSI and PAN images from the Gaofen-1 (GF-1) PMS sensor as experimental data, we compared the proposed stepwise fusion strategies with the traditional fusion strategy (HSI+PAN), and compared the performances of six fusion algorithms under three fusion strategies. We comprehensively evaluated the fused results through three aspects: spectral fidelity, spatial fidelity and computation efficiency evaluation. The results showed that (1) the spectral fidelity of the fused images obtained by stepwise fusion strategies was better than that of the traditional strategy; (2) the proposed stepwise strategies performed better or comparable spatial fidelity than traditional strategy; (3) the stepwise strategy did not significantly increase the time complexity compared to the traditional strategy; and (4) we also provide suggestions for selecting image fusion algorithms using the proposed strategy. The study provided us with a reference for the selection of fusion strategies and algorithms in different application scenarios, and also provided an easy-to-implement solution and useful references for fusing HSI, MSI and PAN images.

Highlights

  • Two groups of hyperspectral images (HSIs), multispectral images (MSIs) and PAN images were used in this study

  • Following the above stepwise approaches, 2 m HSI can be obtained by fusing GF-5 HSI, GF-1 MSI and PAN images

  • We aim to evaluate the performances of these algorithms in fusing HSI, MSI and PAN images, while other comparative analyses are generally focused on their performances fusing two images [11,36]

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Summary

Introduction

With the launches of various hyperspectral satellites [1], hyperspectral images (HSIs) have been frequently used in many applications, such as coastal wetland mapping, species classification of mangrove forests, and so on. HSIs with detailed spectral information are important in the analysis of the land-cover for coastal environmental monitoring, disaster monitoring, precision agriculture, forestry surveying and urban planning [1], because HSIs with high spectral resolution can provide better performance for qualitative and quantitative analysis of geographic entities. Limited by the sensitivity of photoelectric sensors and transmission capability, the spatial resolution of HSIs is not sufficient for some applications [2], such as the monitoring of air pollution [3], Remote Sens. The development of accurate remote sensing applications has increased the requirement for images with both high spatial and spectral resolution

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