4.1 Article

Recovery of meteorites using an autonomous drone and machine learning

Journal

METEORITICS & PLANETARY SCIENCE
Volume 56, Issue 6, Pages 1073-1085

Publisher

WILEY
DOI: 10.1111/maps.13663

Keywords

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Funding

  1. NASA Office of the Chief Technologist
  2. Australian Research Council
  3. NASA [80NSSC18K0854]

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This study aims to improve the efficiency of meteorite recovery by using machine learning techniques and an autonomous drone for meteorite location. Results show that a combination of convolutional neural networks can successfully identify meteorite candidates in images taken by drones.
The recovery of freshly fallen meteorites from tracked and triangulated meteors is critical to determining their source asteroid families. Even though our ability to locate meteorite falls continues to improve, the recovery of meteorites remains a challenge due to large search areas with terrain and vegetation obscuration. To improve the efficiency of meteorite recovery, we have tested the hypothesis that meteorites can be located using machine learning techniques and an autonomous drone. To locate meteorites autonomously, a quadcopter drone first conducts a grid survey acquiring top-down images of the strewn field from a low altitude. The drone-acquired images are then analyzed using a machine learning classifier to identify meteorite candidates for follow-up examination. Here, we describe a proof-of-concept meteorite classifier that deploys off-line a combination of different convolution neural networks to recognize meteorites from images taken by drones in the field. The system was implemented in a conceptual drone setup and tested in the suspected strewn field of a recent meteorite fall near Walker Lake, Nevada.

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