2023
DOI: 10.3390/min13060754
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Region Expansion of a Hyperspectral-Based Mineral Map Using Random Forest Classification with Multispectral Data

Hideki Tsubomatsu,
Hideyuki Tonooka

Abstract: Observation images from hyperspectral (HS) sensors on satellites and aircraft can be used to map minerals in greater detail than those from multispectral (MS) sensors. However, the coverage of HS images is much less than that of MS images, so there are often cases where MS images cover the entire area of interest while HS images cover only a part of it. In this study, we propose a new method to more reasonably expand the mineral map of an HS image with an MS image in such cases. The method uses various mineral… Show more

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