2023
DOI: 10.1111/maps.14054
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Planetary scientific target detection via deep learning: A case study for finding shatter cones in Mars rover images

Abstract: Past, present, and forthcoming planetary rover missions to Mars and other planetary bodies are equipped with a large number of scientific cameras. The very large number of images resulting from this, combined with tight time constraints for navigation, measurements, and analyses, pose a major challenge for the mission teams in terms of scientific target evaluation. Shatter cones are the only macroscopic evidence for impact‐induced shock metamorphism and therefore impact craters on Earth. The typical features o… Show more

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