[MGI37-P05] Improvement of mineral mapping accuracy by increasing spectral band and spatial resolutions of multispectral optical sensor imagery
Keywords:Hyperspectral imagery, Hydrothermal alteration mineral, Multiple regression model, Short-wave infrared region, Cuprite, Goldfield
As for the first hyperspectral transformation, we use PHITA developed by the authors (Pseudo-Hyperspectral Image Transformation Algorithm: Hoang and Koike, 2017; 2018). This method is based on multiple regression model for correlations between MS and HP band reflectance data, and selects the best model through Bayesian model averaging. One pixel of MS image consists of several pixels of overlapped HP image (e.g., one pixel of ASTER = 4×4 pixels of WV-3 image). As for the second hyperresolution transformation, an assumption that a radiance at one pixel of MS image is summation of radiances at several, corresponding pixels of HSR image is set, and their relationship is quantified by a generalized additive model (Stasinopoulos et al., 2018) that is more versatile and rigorous than traditional multiple regression model.
A part of the Cuprite hydrothermal alteration area in the western United States for which ASTER, WV-3, and AVIRIS images were available was selected as training area for the two methods, and a principle of machine learning was adopted for the targeted Goldfield near Cuprite, a world-famous epithermal deposit area. An ASTER image in Cuprite was transformed into a pseudo-AVIRIS image by PHITA and their regression model was applied to an ASTER image of Goldfield. As the result, detection accuracies of hydrothermal alteration minerals such as alunite and kaolinite were largely increased. Four SWIR bands whose wavelengths were common between ASTER and WV-3 were used for the hyperresolution. By applying a correlation rule between the ASTER and WV-3 images obtained for Cuprite to Goldfield, the ASTER image of Goldfield was downscaled to the WV-3 resolution and consequently, mapping of minerals such as alunite was achieved more in detailed than the ASTER resolution. These two outcomes were verified by a ground-truth survey in 2018 and an XRD analysis of the samples by it, which demonstrates correctness and effectiveness of the proposed hyperspectral and hyperresolution methods.
Hoang, N. T., Koike, K. (2018) Comparison of hyperspectral transformation accuracies of multispectral Landsat TM, ETM+, OLI and EO-1 ALI images for detecting minerals in a geothermal prospect area. ISPRS J. Photogramm. Remote Sens., v. 137, pp. 15-28.
Hoang, N. T., Koike, K. (2017) Transformation of Landsat imagery into pseudo-hyperspectral imagery by a multiple regression-based model with application to metal deposit-related minerals mapping. ISPRS J. Photogramm. Remote Sens., v. 133, pp. 157-173.
Stasinopoulos, M. D., Rigby, R. A., Bastiani, F. D. (2018) GAMLSS: A distributional regression approach. Stat. Modelling, v. 18, pp. 248-273.