Video Image Enhancement and Machine Learning Pipeline for Underwater Animal Detection and Classification at Cabled Observatories

An understanding of marine ecosystems and their biodiversity is relevant to sustainable use of the goods and services they offer. Since marine areas host complex ecosystems, it is important to develop spatially widespread monitoring networks capable of providing large amounts of multiparametric info...

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Published in:Sensors
Main Authors: Lopez-vazquez, Vanesa, Lopez-guede, Jose Manuel, Marini, Simone, Fanelli, Emanuela, Johnsen, Espen, Aguzzi, J.
Format: Article in Journal/Newspaper
Language:English
Published: 2020
Subjects:
Online Access:https://hdl.handle.net/11250/2725733
https://doi.org/10.3390/s20030726
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spelling ftimr:oai:imr.brage.unit.no:11250/2725733 2023-05-15T15:39:02+02:00 Video Image Enhancement and Machine Learning Pipeline for Underwater Animal Detection and Classification at Cabled Observatories Lopez-vazquez, Vanesa Lopez-guede, Jose Manuel Marini, Simone Fanelli, Emanuela Johnsen, Espen Aguzzi, J. 2020 application/pdf https://hdl.handle.net/11250/2725733 https://doi.org/10.3390/s20030726 eng eng Sensors. 2020, 20 (3), 1-25. urn:issn:1424-8220 https://hdl.handle.net/11250/2725733 https://doi.org/10.3390/s20030726 cristin:1873152 1-25 20 Sensors 3 Peer reviewed Journal article 2020 ftimr https://doi.org/10.3390/s20030726 2021-09-23T20:14:32Z An understanding of marine ecosystems and their biodiversity is relevant to sustainable use of the goods and services they offer. Since marine areas host complex ecosystems, it is important to develop spatially widespread monitoring networks capable of providing large amounts of multiparametric information, encompassing both biotic and abiotic variables, and describing the ecological dynamics of the observed species. In this context, imaging devices are valuable tools that complement other biological and oceanographic monitoring devices. Nevertheless, large amounts of images or movies cannot all be manually processed, and autonomous routines for recognizing the relevant content, classification, and tagging are urgently needed. In this work, we propose a pipeline for the analysis of visual data that integrates video/image annotation tools for defining, training, and validation of datasets with video/image enhancement and machine and deep learning approaches. Such a pipeline is required to achieve good performance in the recognition and classification tasks of mobile and sessile megafauna, in order to obtain integrated information on spatial distribution and temporal dynamics. A prototype implementation of the analysis pipeline is provided in the context of deep-sea videos taken by one of the fixed cameras at the LoVe Ocean Observatory network of Lofoten Islands (Norway) at 260 m depth, in the Barents Sea, which has shown good classification results on an independent test dataset with an accuracy value of 76.18% and an area under the curve (AUC) value of 87.59%. publishedVersion Article in Journal/Newspaper Barents Sea Lofoten Institute for Marine Research: Brage IMR Barents Sea Lofoten Norway Sensors 20 3 726
institution Open Polar
collection Institute for Marine Research: Brage IMR
op_collection_id ftimr
language English
description An understanding of marine ecosystems and their biodiversity is relevant to sustainable use of the goods and services they offer. Since marine areas host complex ecosystems, it is important to develop spatially widespread monitoring networks capable of providing large amounts of multiparametric information, encompassing both biotic and abiotic variables, and describing the ecological dynamics of the observed species. In this context, imaging devices are valuable tools that complement other biological and oceanographic monitoring devices. Nevertheless, large amounts of images or movies cannot all be manually processed, and autonomous routines for recognizing the relevant content, classification, and tagging are urgently needed. In this work, we propose a pipeline for the analysis of visual data that integrates video/image annotation tools for defining, training, and validation of datasets with video/image enhancement and machine and deep learning approaches. Such a pipeline is required to achieve good performance in the recognition and classification tasks of mobile and sessile megafauna, in order to obtain integrated information on spatial distribution and temporal dynamics. A prototype implementation of the analysis pipeline is provided in the context of deep-sea videos taken by one of the fixed cameras at the LoVe Ocean Observatory network of Lofoten Islands (Norway) at 260 m depth, in the Barents Sea, which has shown good classification results on an independent test dataset with an accuracy value of 76.18% and an area under the curve (AUC) value of 87.59%. publishedVersion
format Article in Journal/Newspaper
author Lopez-vazquez, Vanesa
Lopez-guede, Jose Manuel
Marini, Simone
Fanelli, Emanuela
Johnsen, Espen
Aguzzi, J.
spellingShingle Lopez-vazquez, Vanesa
Lopez-guede, Jose Manuel
Marini, Simone
Fanelli, Emanuela
Johnsen, Espen
Aguzzi, J.
Video Image Enhancement and Machine Learning Pipeline for Underwater Animal Detection and Classification at Cabled Observatories
author_facet Lopez-vazquez, Vanesa
Lopez-guede, Jose Manuel
Marini, Simone
Fanelli, Emanuela
Johnsen, Espen
Aguzzi, J.
author_sort Lopez-vazquez, Vanesa
title Video Image Enhancement and Machine Learning Pipeline for Underwater Animal Detection and Classification at Cabled Observatories
title_short Video Image Enhancement and Machine Learning Pipeline for Underwater Animal Detection and Classification at Cabled Observatories
title_full Video Image Enhancement and Machine Learning Pipeline for Underwater Animal Detection and Classification at Cabled Observatories
title_fullStr Video Image Enhancement and Machine Learning Pipeline for Underwater Animal Detection and Classification at Cabled Observatories
title_full_unstemmed Video Image Enhancement and Machine Learning Pipeline for Underwater Animal Detection and Classification at Cabled Observatories
title_sort video image enhancement and machine learning pipeline for underwater animal detection and classification at cabled observatories
publishDate 2020
url https://hdl.handle.net/11250/2725733
https://doi.org/10.3390/s20030726
geographic Barents Sea
Lofoten
Norway
geographic_facet Barents Sea
Lofoten
Norway
genre Barents Sea
Lofoten
genre_facet Barents Sea
Lofoten
op_source 1-25
20
Sensors
3
op_relation Sensors. 2020, 20 (3), 1-25.
urn:issn:1424-8220
https://hdl.handle.net/11250/2725733
https://doi.org/10.3390/s20030726
cristin:1873152
op_doi https://doi.org/10.3390/s20030726
container_title Sensors
container_volume 20
container_issue 3
container_start_page 726
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