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Abstract
Subsurface stratigraphic modeling is crucial for a variety of environmental, societal, and economic challenges. However, the need for specific sedimentological skills in sediment core analysis may constitute a limitation. Methods based on Machine Learning and Deep Learning can play a central role in automatizing this time-consuming procedure. In this work, using a robust dataset of high-resolution digital images from continuous sediment cores of Holocene age that reflect a wide spectrum of continental to shallow-marine depositional environments, we outline a novel deep-learning-based approach to perform automatic semantic segmentation directly on core images, leveraging the power of convolutional neural networks. To optimize the interpretation process and maximize scientific value, we use six sedimentary facies associations as target classes in lieu of ineffective classification methods based uniquely on lithology. We propose an automated model that can rapidly characterize sediment cores, allowing immediate guidance for stratigraphic correlation and subsurface reconstructions.
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Details
1 University of Bologna, Department of Biological, Geological and Environmental Sciences (BiGeA), Bologna, Italy (GRID:grid.6292.f) (ISNI:0000 0004 1757 1758)
2 University of Bologna, Department of Physics and Astronomy, Bologna, Italy (GRID:grid.6292.f) (ISNI:0000 0004 1757 1758)
3 University of Bologna, Department of Medical and Surgical Sciences, Bologna, Italy (GRID:grid.6292.f) (ISNI:0000 0004 1757 1758)