FUSION OF HYPERSPECTRAL AND PANCHROMATIC DATA BY SPECTRAL UNMIXING IN THE REFLECTIVE DOMAIN

被引:0
|
作者
Constans Y. [1 ,2 ]
Fabre S. [1 ]
Brunet H. [1 ]
Seymour M. [3 ]
Crombez V. [3 ]
Chanussot J. [4 ]
Briottet X. [1 ]
Deville Y. [2 ]
机构
[1] ONERA, DOTA, Toulouse
[2] Université de Toulouse, UPS-CNRS-OMP-CNES, IRAP, Toulouse
[3] AIRBUS Defence and Space, Toulouse
[4] Grenoble INP, GIPSA-LAB, Grenoble
关键词
hyperspectral; Image fusion; panchromatic; pansharpening; SOSU; spectral unmixing;
D O I
10.52638/RFPT.2022.508
中图分类号
学科分类号
摘要
Earth observation at a local scale requires images having both high spatial and spectral resolutions. As sensors cannot simultaneously provide such characteristics, a solution is combining images jointly acquired by two different optical instruments. Notably, hyperspectral pansharpening methods combine a panchromatic image, providing a high spatial resolution, with a hyperspectral image, providing a high spectral resolution, to generate an image with both high spatial and spectral resolutions. Nevertheless, these methods suffer from some limitations, including managing mixed pixels. This article introduces a new hyperspectral pansharpening method designed to deal with mixed pixels, which is called Spatially Organized Spectral Unmixing (SOSU). The performance of this method is measured on synthetic then real data (simulated from airborne acquisitions), using spatial, spectral and global criteria, to evaluate the contributions of the SOSU algorithm to mixed pixel processing. In particular, this contribution is confirmed in the case of a peri-urban area via a nearly ten percent increase in the rate of improved mixed pixels with SOSU, in comparison with the method used as a reference. © 2022 Soc. Francaise de Photogrammetrie et de Teledetection. All rights reserved.
引用
收藏
页码:59 / 74
页数:15
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