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Main Authors: Nowacka, Anna, Schladitz, Katja, Grzesiak, Szymon, Pahn, Matthias
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2501.18405
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author Nowacka, Anna
Schladitz, Katja
Grzesiak, Szymon
Pahn, Matthias
author_facet Nowacka, Anna
Schladitz, Katja
Grzesiak, Szymon
Pahn, Matthias
contents Cracks in concrete structures are very common and are an integral part of this heterogeneous material. Characteristics of cracks induced by standardized tests yield valuable information about the tested concrete formulation and its mechanical properties. Observing cracks on the surface of the concrete structure leaves a wealth of structural information unused. Computed tomography enables looking into the sample without interfering or destroying the microstructure. The reconstructed tomographic images are 3d images, consisting of voxels whose gray values represent local X-ray absorption. In order to identify voxels belonging to the crack, so to segment the crack structure in the images, appropriate algorithms need to be developed. Convolutional neural networks are known to solve this type of task very well given enough and consistent training data. We adapted a 3d version of the well-known U-Net and trained it on semi-synthetic 3d images of real concrete samples equipped with simulated crack structures. Here, we explain the general approach. Moreover, we show how to teach the network to detect also real crack systems in 3d images of varying types of real concrete, in particular of fiber reinforced concrete.
format Preprint
id arxiv_https___arxiv_org_abs_2501_18405
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Segmentation of cracks in 3d images of fiber reinforced concrete using deep learning
Nowacka, Anna
Schladitz, Katja
Grzesiak, Szymon
Pahn, Matthias
Machine Learning
68T07
Cracks in concrete structures are very common and are an integral part of this heterogeneous material. Characteristics of cracks induced by standardized tests yield valuable information about the tested concrete formulation and its mechanical properties. Observing cracks on the surface of the concrete structure leaves a wealth of structural information unused. Computed tomography enables looking into the sample without interfering or destroying the microstructure. The reconstructed tomographic images are 3d images, consisting of voxels whose gray values represent local X-ray absorption. In order to identify voxels belonging to the crack, so to segment the crack structure in the images, appropriate algorithms need to be developed. Convolutional neural networks are known to solve this type of task very well given enough and consistent training data. We adapted a 3d version of the well-known U-Net and trained it on semi-synthetic 3d images of real concrete samples equipped with simulated crack structures. Here, we explain the general approach. Moreover, we show how to teach the network to detect also real crack systems in 3d images of varying types of real concrete, in particular of fiber reinforced concrete.
title Segmentation of cracks in 3d images of fiber reinforced concrete using deep learning
topic Machine Learning
68T07
url https://arxiv.org/abs/2501.18405