2024
DOI: 10.31223/x5mt1n
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MinDet1: A Deep Learning-enabled Approach for Plagioclase Textural Studies

Abstract: Textural information, such as crystal size distributions (CSDs) or crystal aspect ratios are powerful tools in igneous petrography for interrogating the thermal history of rocks. They facilitate the investigation of crystal nucleation, growth and mixing as well as the cooling rate of the rock. However, they require large volumes of crystal segmentations and measurements that are often obtained with manual methods. Here a deep learning-based computer vision technique, termed instance segmentation, is proposed t… Show more

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