Document
Generalized unsupervised clustering of hyperspectral images of geological targets in the near infrared.
Identifier
DOI: 10.1109/CVPRW53098.2021.00485
Source
IEEE Computer Society Conference on Computer Vision and Pattern Recognition Workshops, p. 4289-4298
Contributors
Rasmussen, Brandon., Author
Kulits, Peter., Author
Scheller, Eva L. , Author
Greenberger, Rebecca., Author
Ehlmann, Bethany L. , Author
Country
United States.
Publisher
IEEE Computer Society.
Gregorian
2021-06-01
Language
English
Extent
p. 4289-4298
English abstract
The application of infrared hyperspectral imagery to geological problems is becoming more popular as data become more accessible and cost-effective. Clustering and classifying spectrally similar materials is often a first step in applications ranging from economic mineral exploration on Earth to planetary exploration on Mars. Semi-manual classification guided by expertly developed spectral parameters can be time consuming and biased, while supervised methods require abundant labeled data and can be difficult to generalize. Here we develop a fully unsupervised workflow for feature extraction and clustering informed by both expert spectral geologist input and quantitative metrics. Our pipeline uses a lightweight autoencoder followed by Gaussian mixture modeling to map the spectral diversity within any image. We validate the performance of our pipeline at submillimeter-scale with expert-labelled data from the Oman ophiolite drill core and evaluate performance at meters-scale with partially classified orbital data of Jezero Crater on Mars (the landing site for the Perseverance rover). We additionally examine the effects of various preprocessing techniques used in traditional analysis of hyperspectral imagery. This pipeline provides a fast and accurate clustering map of similar geological materials and consistently identifies and separates major mineral classes in both laboratory imagery and remote sensing imagery. We refer to our pipeline as "Generalized Pipeline for Spectroscopic Unsupervised clustering of Minerals (GyPSUM)."
Description
2021 IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops, CVPRW 2021; Virtual, Online; United States; 19 June 2021 through 25 June 2021; Category numberCFP2188A-ART; Code 171537
Member of
ISSN
2160-7508
Resource URL
Category
Conferences & workshops