2021
DOI: 10.1144/qjegh2020-183
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Machine learning applied to pore-space geometry in sandstones: a tool for evaluating grain-scale similarity?

Abstract: The ability to identify similar sandstones to a given sample is important where the provenance of the sample is unknown or the quarry of origin is no longer in operation. In the case of building stones from heritage buildings in protected areas, it may be mandatory. Here, a proof of concept for an automated similarity measure is presented by means of a convolutional autoencoder that is able to extract features from a sample thin section and use these features to identify the most similar sample in an existing … Show more

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