期刊论文详细信息
REMOTE SENSING OF ENVIRONMENT 卷:176
Automated lithological mapping using airborne hyperspectral thermal infrared data: A case study from Anchorage Island, Antarctica
Article
Black, Martin1,2  Riley, Teal R.1  Ferrier, Graham2  Fleming, Andrew H.1  Fretwell, Peter T.1 
[1] British Antarctic Survey, Madingley Rd, Cambridge CB3 0ET, England
[2] Univ Hull, Dept Geog Environm & Earth Sci, Cottingham Rd, Kingston Upon Hull HU6 7RX, N Humberside, England
关键词: Hyperspectral;    Thermal infrared;    Geology;    Automated;    Mapping;    Antarctica;   
DOI  :  10.1016/j.rse.2016.01.022
来源: Elsevier
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【 摘 要 】

The thermal infrared portion of the electromagnetic spectrum has considerable potential for mineral and lithological mapping of the most abundant rock-forming silicates that do not display diagnostic features at visible and shortwave infrared wavelengths. Lithological mapping using visible and shortwave infrared hyperspectral data is well developed and established processing chains are available, however there is a paucity of such methodologies for hyperspectral thermal infrared data. Here we present a new fully automated processing chain for deriving lithological maps from hyperspectral thermal infrared data and test its applicability using the first ever airborne hyperspectral thermal data collected in the Antarctic. A combined airborne hyperspectral survey, targeted geological field mapping campaign and detailed mineralogical and geochemical datasets are applied to small test site in West Antarctica where the geological relationships are representative of continental margin arcs. The challenging environmental conditions and cold temperatures in the Antarctic meant that the data have a significantly lower signal to noise ratio than is usually attained from airborne hyperspectral sensors. We applied preprocessing techniques to improve the signal to noise ratio and convert the radiance images to ground leaving emissivity. Following preprocessing we developed and applied a fully automated processing chain to the hyperspectral imagery, which consists of the following six steps: (1) superpixel segmentation, (2) determine the number of endmembers, (3) extract endmembers from superpixels, (4) apply fully constrained linear unmixing, (5) generate a predictive classification map, and (6) automatically label the predictive classes to generate a lithological map. The results show that the image processing chain was successful, despite the low signal to noise ratio of the imagery; reconstruction of the hyperspectral image from the endmembers and their fractional abundances yielded a root mean square error of 0.58%. The results are encouraging with the thermal imagery allowing clear distinction between granitoid types. However, the distinction of fine grained, intermediate composition dykes is not possible due to the close geochemical similarity with the country rock. (C) 2016 Elsevier Inc. All rights reserved.

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