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Use of deep learning for structural analysis of computer tomography images of soil samples
Date Issued
2021-03
Date Available
2025-01-14T13:11:48Z
Abstract
Soil samples from several European countries were scanned using medical computer tomography (CT) device and are now available as CT images. The analysis of these samples was carried out using deep learning methods. For this purpose, a VGG16 network was trained with the CT images (X). For the annotation (y) a new method for automated annotation, ‘surrogate’ learning, was introduced. The generated neural networks (NNs) were subjected to a detailed analysis. Among other things, transfer learning was used to check whether the NN can also be trained to other y-values. Visually, the NN was verified using a gradient-based class activation mapping (grad-CAM) algorithm. These analyses showed that the NN was able to generalize, i.e. to capture the spatial structure of the soil sample. Possible applications of the models are discussed.
Type of Material
Journal Article
Publisher
The Royal Society
Journal
Royal Society Open Science
Volume
8
Issue
3
Copyright (Published Version)
2021 the Authors
Language
English
Status of Item
Peer reviewed
This item is made available under a Creative Commons License
File(s)
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Name
Wieland et al 2021 RSOS.pdf
Size
2.62 MB
Format
Adobe PDF
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