Connecting Meteorite Spectra to Lunar Surface Composition Using Hyperspectral Imaging and Machine Learning
Fatemeh Fazel Hesar, Mojtaba Raouf, Amirmohammad Chegeni, Peyman Soltani, Bernard Foing, Elias Chatzitheodoridis, Michiel J. A. de Dood, Fons J. Verbeek

TL;DR
This paper introduces a machine learning framework combining laboratory and ground-based hyperspectral imaging to accurately map lunar surface minerals, demonstrating high classification accuracy and potential for detailed lunar mineralogy studies.
Contribution
It presents a novel integrated hyperspectral imaging and machine learning approach for lunar mineral mapping, achieving high accuracy and identifying key spectral features.
Findings
Support Vector Machine achieved 93.7% accuracy in mineral classification.
Key wavelengths identified for olivine and pyroxene differentiation.
K-means clustering validated against Chandrayaan-1 data with 88% accuracy.
Abstract
We present an innovative, cost-effective framework integrating laboratory Hyperspectral Imaging (HSI) of the Bechar010 Lunar meteorite with ground-based lunar HSI and supervised Machine Learning(ML) to generate high-fidelity mineralogical maps. A 3mm thin section of Bechar010 was imaged under a microscope with a 30mm focal length lens at 150mm working distance, using 6x binning to increase the signal-to-noise ratio, producing a data cube (X Y = , 0.24mm 0.2mm resolution) across 400-1000}nm (224 bands, 2.7nm spectral sampling, 5.5nm full width at half maximum spectral resolution) using a Specim FX10 camera. Ground-based lunar HSI was captured with a Celestron 8SE telescope (3km/pixel), yielded a data cube (). Solar calibration was performed using a Spectralon reference ({99}\% reflectance {<2}\%…
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Taxonomy
TopicsPlanetary Science and Exploration · Astro and Planetary Science · Geochemistry and Geologic Mapping
