Machine Learning for Semi-Automated Meteorite Recovery [EPA]

http://arxiv.org/abs/2009.13852


We present a novel methodology for recovering meteorite falls observed and constrained by fireball networks, using drones and machine learning algorithms. This approach uses images of the local terrain for a given fall site to train an artificial neural network, designed to detect meteorite candidates. We have field tested our methodology to show a meteorite detection rate between 75-97%, while also providing an efficient mechanism to eliminate false-positives. Our tests at a number of locations within Western Australia also showcase the ability for this training scheme to generalize a model to learn localized terrain features. Our model-training approach was also able to correctly identify 3 meteorites in their native fall sites, that were found using traditional searching techniques. Our methodology will be used to recover meteorite falls in a wide range of locations within globe-spanning fireball networks.

Read this paper on arXiv…

S. Anderson, M. Towner, P. Bland, et. al.
Wed, 30 Sep 2020
37/86

Comments: 15 pages, 3 figures, 2 tables