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Training neural networks on domain randomized simulations for ultrasonic inspection

To overcome the data scarcity problem of machine learning for nondestructive testing, data augmentation is a commonly used strategy. We propose a method to enable training of neural networks exclusively on simulated data. Simulations not only provide a scalable way to generate and access training da...

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Detalles Bibliográficos
Autores principales: Schlachter, Klaus, Felsner, Kastor, Zambal, Sebastian
Formato: Online Artículo Texto
Lenguaje:English
Publicado: F1000 Research Limited 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10446096/
https://www.ncbi.nlm.nih.gov/pubmed/37645298
http://dx.doi.org/10.12688/openreseurope.14358.2
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author Schlachter, Klaus
Felsner, Kastor
Zambal, Sebastian
author_facet Schlachter, Klaus
Felsner, Kastor
Zambal, Sebastian
author_sort Schlachter, Klaus
collection PubMed
description To overcome the data scarcity problem of machine learning for nondestructive testing, data augmentation is a commonly used strategy. We propose a method to enable training of neural networks exclusively on simulated data. Simulations not only provide a scalable way to generate and access training data, but also make it possible to cover edge cases which rarely appear in the real world. However, simulating data acquired from complex nondestructive testing methods is still a challenging task. Due to necessary simplifications and a limited accuracy of parameter identification, statistical models trained solely on simulated data often generalize poorly to the real world. Some effort has been made in the field to adapt pre-trained classifiers with a small set of real world data. A different approach for bridging the reality gap is domain randomization which was recently very successfully applied in different fields of autonomous robotics. In this study, we apply this approach for ultrasonic testing of carbon-fiber-reinforced plastics. Phased array captures of virtual specimens are simulated by approximating sound propagation via ray tracing. In addition to a variation of the geometric model of the specimen and its defects, we vary simulation parameters. Results indicate that this approach allows a generalization to the real world without applying any domain adaptation. Further, the trained network distinguishes correctly between ghost artifacts and defects. Although this study is tailored towards evaluation of ultrasound phased array captures, the presented approach generalizes to other nondestructive testing methods.
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spelling pubmed-104460962023-08-29 Training neural networks on domain randomized simulations for ultrasonic inspection Schlachter, Klaus Felsner, Kastor Zambal, Sebastian Open Res Eur Method Article To overcome the data scarcity problem of machine learning for nondestructive testing, data augmentation is a commonly used strategy. We propose a method to enable training of neural networks exclusively on simulated data. Simulations not only provide a scalable way to generate and access training data, but also make it possible to cover edge cases which rarely appear in the real world. However, simulating data acquired from complex nondestructive testing methods is still a challenging task. Due to necessary simplifications and a limited accuracy of parameter identification, statistical models trained solely on simulated data often generalize poorly to the real world. Some effort has been made in the field to adapt pre-trained classifiers with a small set of real world data. A different approach for bridging the reality gap is domain randomization which was recently very successfully applied in different fields of autonomous robotics. In this study, we apply this approach for ultrasonic testing of carbon-fiber-reinforced plastics. Phased array captures of virtual specimens are simulated by approximating sound propagation via ray tracing. In addition to a variation of the geometric model of the specimen and its defects, we vary simulation parameters. Results indicate that this approach allows a generalization to the real world without applying any domain adaptation. Further, the trained network distinguishes correctly between ghost artifacts and defects. Although this study is tailored towards evaluation of ultrasound phased array captures, the presented approach generalizes to other nondestructive testing methods. F1000 Research Limited 2022-05-11 /pmc/articles/PMC10446096/ /pubmed/37645298 http://dx.doi.org/10.12688/openreseurope.14358.2 Text en Copyright: © 2022 Schlachter K et al. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution Licence, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Method Article
Schlachter, Klaus
Felsner, Kastor
Zambal, Sebastian
Training neural networks on domain randomized simulations for ultrasonic inspection
title Training neural networks on domain randomized simulations for ultrasonic inspection
title_full Training neural networks on domain randomized simulations for ultrasonic inspection
title_fullStr Training neural networks on domain randomized simulations for ultrasonic inspection
title_full_unstemmed Training neural networks on domain randomized simulations for ultrasonic inspection
title_short Training neural networks on domain randomized simulations for ultrasonic inspection
title_sort training neural networks on domain randomized simulations for ultrasonic inspection
topic Method Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10446096/
https://www.ncbi.nlm.nih.gov/pubmed/37645298
http://dx.doi.org/10.12688/openreseurope.14358.2
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