Probabilistic Super Resolution of Remote Mineral Spectroscopy - Robotics Institute Carnegie Mellon University

Probabilistic Super Resolution of Remote Mineral Spectroscopy

A. Candela, D. Thompson, D. Wettergreen, K. Cawse-Nicholson, S. Geier, M. Eastwood, and R. Green
Conference Paper, Proceedings of 34th AAAI Conference on Artificial Intelligence (AAAI '20), Vol. 34, No. 8, pp. 13241 - 13247, February, 2020

Abstract

Earth and planetary sciences often rely upon the detailed examination of spectroscopic data for rock and mineral identification. This typically requires the collection of high resolution spectroscopic measurements. However, they tend to be scarce, as compared to low resolution remote spectra. This work addresses the problem of inferring high-resolution mineral spectroscopic measurements from low resolution observations using probability models. We present the Deep Gaussian Conditional Model, a neural network that performs probabilistic super resolution via maximum likelihood estimation. It also provides insight into learned correlations between measurements and spectroscopic features, allowing for the tractability and interpretability that scientists often require for mineral identification. Experiments using remote spectroscopic data demonstrate that our method compares favorably to other analogous probabilistic methods. Finally, we show and discuss how our method provides human-interpretable results, making it a compelling analysis tool for scientists.

BibTeX

@conference{Candela-2020-120377,
author = {A. Candela and D. Thompson and D. Wettergreen and K. Cawse-Nicholson and S. Geier and M. Eastwood and R. Green},
title = {Probabilistic Super Resolution of Remote Mineral Spectroscopy},
booktitle = {Proceedings of 34th AAAI Conference on Artificial Intelligence (AAAI '20)},
year = {2020},
month = {February},
volume = {34},
pages = {13241 - 13247},
}