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Automatic Annotation of Subsea Pipelines Using Deep Learning

Regulatory requirements for sub-sea oil and gas operators mandates the frequent inspection of pipeline assets to ensure that their degradation and damage are maintained at acceptable levels. The inspection process is usually sub-contracted to surveyors who utilize sub-sea Remotely Operated Vehicles...

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Autores principales: Stamoulakatos, Anastasios, Cardona, Javier, McCaig, Chris, Murray, David, Filius, Hein, Atkinson, Robert, Bellekens, Xavier, Michie, Craig, Andonovic, Ivan, Lazaridis, Pavlos, Hamilton, Andrew, Hossain, Md Moinul, Di Caterina, Gaetano, Tachtatzis, Christos
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7038356/
https://www.ncbi.nlm.nih.gov/pubmed/31991872
http://dx.doi.org/10.3390/s20030674
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author Stamoulakatos, Anastasios
Cardona, Javier
McCaig, Chris
Murray, David
Filius, Hein
Atkinson, Robert
Bellekens, Xavier
Michie, Craig
Andonovic, Ivan
Lazaridis, Pavlos
Hamilton, Andrew
Hossain, Md Moinul
Di Caterina, Gaetano
Tachtatzis, Christos
author_facet Stamoulakatos, Anastasios
Cardona, Javier
McCaig, Chris
Murray, David
Filius, Hein
Atkinson, Robert
Bellekens, Xavier
Michie, Craig
Andonovic, Ivan
Lazaridis, Pavlos
Hamilton, Andrew
Hossain, Md Moinul
Di Caterina, Gaetano
Tachtatzis, Christos
author_sort Stamoulakatos, Anastasios
collection PubMed
description Regulatory requirements for sub-sea oil and gas operators mandates the frequent inspection of pipeline assets to ensure that their degradation and damage are maintained at acceptable levels. The inspection process is usually sub-contracted to surveyors who utilize sub-sea Remotely Operated Vehicles (ROVs), launched from a surface vessel and piloted over the pipeline. ROVs capture data from various sensors/instruments which are subsequently reviewed and interpreted by human operators, creating a log of event annotations; a slow, labor-intensive and costly process. The paper presents an automatic image annotation framework that identifies/classifies key events of interest in the video footage viz. exposure, burial, field joints, anodes, and free spans. The reported methodology utilizes transfer learning with a Deep Convolutional Neural Network (ResNet-50), fine-tuned on real-life, representative data from challenging sub-sea environments with low lighting conditions, sand agitation, sea-life and vegetation. The network outputs are configured to perform multi-label image classifications for critical events. The annotation performance varies between 95.1% and 99.7% in terms of accuracy and 90.4% and 99.4% in terms of F1-Score depending on event type. The performance results are on a per-frame basis and corroborate the potential of the algorithm to be the foundation for an intelligent decision support framework that automates the annotation process. The solution can execute annotations in real-time and is significantly more cost-effective than human-only approaches.
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spelling pubmed-70383562020-03-09 Automatic Annotation of Subsea Pipelines Using Deep Learning Stamoulakatos, Anastasios Cardona, Javier McCaig, Chris Murray, David Filius, Hein Atkinson, Robert Bellekens, Xavier Michie, Craig Andonovic, Ivan Lazaridis, Pavlos Hamilton, Andrew Hossain, Md Moinul Di Caterina, Gaetano Tachtatzis, Christos Sensors (Basel) Article Regulatory requirements for sub-sea oil and gas operators mandates the frequent inspection of pipeline assets to ensure that their degradation and damage are maintained at acceptable levels. The inspection process is usually sub-contracted to surveyors who utilize sub-sea Remotely Operated Vehicles (ROVs), launched from a surface vessel and piloted over the pipeline. ROVs capture data from various sensors/instruments which are subsequently reviewed and interpreted by human operators, creating a log of event annotations; a slow, labor-intensive and costly process. The paper presents an automatic image annotation framework that identifies/classifies key events of interest in the video footage viz. exposure, burial, field joints, anodes, and free spans. The reported methodology utilizes transfer learning with a Deep Convolutional Neural Network (ResNet-50), fine-tuned on real-life, representative data from challenging sub-sea environments with low lighting conditions, sand agitation, sea-life and vegetation. The network outputs are configured to perform multi-label image classifications for critical events. The annotation performance varies between 95.1% and 99.7% in terms of accuracy and 90.4% and 99.4% in terms of F1-Score depending on event type. The performance results are on a per-frame basis and corroborate the potential of the algorithm to be the foundation for an intelligent decision support framework that automates the annotation process. The solution can execute annotations in real-time and is significantly more cost-effective than human-only approaches. MDPI 2020-01-26 /pmc/articles/PMC7038356/ /pubmed/31991872 http://dx.doi.org/10.3390/s20030674 Text en © 2020 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Stamoulakatos, Anastasios
Cardona, Javier
McCaig, Chris
Murray, David
Filius, Hein
Atkinson, Robert
Bellekens, Xavier
Michie, Craig
Andonovic, Ivan
Lazaridis, Pavlos
Hamilton, Andrew
Hossain, Md Moinul
Di Caterina, Gaetano
Tachtatzis, Christos
Automatic Annotation of Subsea Pipelines Using Deep Learning
title Automatic Annotation of Subsea Pipelines Using Deep Learning
title_full Automatic Annotation of Subsea Pipelines Using Deep Learning
title_fullStr Automatic Annotation of Subsea Pipelines Using Deep Learning
title_full_unstemmed Automatic Annotation of Subsea Pipelines Using Deep Learning
title_short Automatic Annotation of Subsea Pipelines Using Deep Learning
title_sort automatic annotation of subsea pipelines using deep learning
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7038356/
https://www.ncbi.nlm.nih.gov/pubmed/31991872
http://dx.doi.org/10.3390/s20030674
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