2020
DOI: 10.31223/osf.io/4ue5s
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Sedimentary structures discriminations with hyperspectral imaging on sediment cores

Abstract: Hyperspectral imaging (HSI) is a non-destructive high-resolution sensor, which is currently under significant development to analyze geological areas with remote devices or natural samples in a laboratory. In both cases, the hyperspectral image provides several sedimentary structures that need to be separated to temporally and spatially describe the sample. Sediment sequences are composed of successive deposits (strata, homogenite, flood) that can be visible or not depending on sample properties. The classical… Show more

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Cited by 2 publications
(2 citation statements)
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“…We selected an RGB image for this example because the two sediment structures on which we focused are different enough to be discriminated. Machine learning was used to separate two types of laminae, based on previous studies by Aymerich et al (2016) to detect tephra layers, and Jacq et al (2020) to discriminate instantaneous deposition events from continuous sedimentation. Creation of a classification model with Matlab (R2017a, MathWorks) was accomplished by selection of a few areas and their association to one of two classes of laminae, a step called labeling (Fig.…”
Section: Ortho-image For Image Processingmentioning
confidence: 99%
“…We selected an RGB image for this example because the two sediment structures on which we focused are different enough to be discriminated. Machine learning was used to separate two types of laminae, based on previous studies by Aymerich et al (2016) to detect tephra layers, and Jacq et al (2020) to discriminate instantaneous deposition events from continuous sedimentation. Creation of a classification model with Matlab (R2017a, MathWorks) was accomplished by selection of a few areas and their association to one of two classes of laminae, a step called labeling (Fig.…”
Section: Ortho-image For Image Processingmentioning
confidence: 99%
“…These deploy a vast variety of variables, including seismic reflection data, petrophysical logging data, hyperspectral imaging or geochemical measurements, to discriminate facies or classify sedimentary structures (e.g. Kuwatani et al, 2014;Bolandi et al, 2017;Wrona et al, 2018;Ai et al, 2019;Bolton et al, 2020;Jacq et al, 2020). These studies show that the application of machine learning in sedimentology is still at an early stage.…”
mentioning
confidence: 99%