2023
DOI: 10.1088/2632-2153/ad0e17
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Artificial intelligent identification of apatite fission tracks based on machine learning

Zuoting Ren,
Shichao Li,
Perry Xiao
et al.

Abstract: Over the past half century, apatite fission track (AFT) thermochronometry has been widely used in the studies of thermal histories of Earth’s uppermost crust. The acquired thermal histories in turn can be used to quantify many geologic processes such as erosion, sedimentary burial, and tectonic deformation. However, the current practice of acquiring AFT data has major limitations due to the use of traditional microscopes by human operators, which is slow and error-prone. This study uses the local binary patter… Show more

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