An open-source, citizen science and machine learning approach to analyse subsea movies.

Essential Biodiversity Variables artificial intelligence autonomous underwater vehicles big data biodiversity monitoring image analysis marine biodiversity participatory science remotely-operated vehicles research infrastructure

Journal

Biodiversity data journal
ISSN: 1314-2828
Titre abrégé: Biodivers Data J
Pays: Bulgaria
ID NLM: 101619899

Informations de publication

Date de publication:
2021
Historique:
received: 09 11 2020
accepted: 11 02 2021
entrez: 8 3 2021
pubmed: 9 3 2021
medline: 9 3 2021
Statut: epublish

Résumé

The increasing access to autonomously-operated technologies offer vast opportunities to sample large volumes of biological data. However, these technologies also impose novel demands on ecologists who need to apply tools for data management and processing that are efficient, publicly available and easy to use. Such tools are starting to be developed for a wider community and here we present an approach to combine essential analytical functions for analysing large volumes of image data in marine ecological research. This paper describes the Koster Seafloor Observatory, an open-source approach to analysing large amounts of subsea movie data for marine ecological research. The approach incorporates three distinct modules to: manage and archive the subsea movies, involve citizen scientists to accurately classify the footage and, finally, train and test machine learning algorithms for detection of biological objects. This modular approach is based on open-source code and allows researchers to customise and further develop the presented functionalities to various types of data and questions related to analysis of marine imagery. We tested our approach for monitoring cold water corals in a Marine Protected Area in Sweden using videos from remotely-operated vehicles (ROVs). Our study resulted in a machine learning model with an adequate performance, which was entirely trained with classifications provided by citizen scientists. We illustrate the application of machine learning models for automated inventories and monitoring of cold water corals. Our approach shows how citizen science can be used to effectively extract occurrence and abundance data for key ecological species and habitats from underwater footage. We conclude that the combination of open-source tools, citizen science systems, machine learning and high performance computational resources are key to successfully analyse large amounts of underwater imagery in the future.

Sections du résumé

BACKGROUND BACKGROUND
The increasing access to autonomously-operated technologies offer vast opportunities to sample large volumes of biological data. However, these technologies also impose novel demands on ecologists who need to apply tools for data management and processing that are efficient, publicly available and easy to use. Such tools are starting to be developed for a wider community and here we present an approach to combine essential analytical functions for analysing large volumes of image data in marine ecological research.
NEW INFORMATION CONCLUSIONS
This paper describes the Koster Seafloor Observatory, an open-source approach to analysing large amounts of subsea movie data for marine ecological research. The approach incorporates three distinct modules to: manage and archive the subsea movies, involve citizen scientists to accurately classify the footage and, finally, train and test machine learning algorithms for detection of biological objects. This modular approach is based on open-source code and allows researchers to customise and further develop the presented functionalities to various types of data and questions related to analysis of marine imagery. We tested our approach for monitoring cold water corals in a Marine Protected Area in Sweden using videos from remotely-operated vehicles (ROVs). Our study resulted in a machine learning model with an adequate performance, which was entirely trained with classifications provided by citizen scientists. We illustrate the application of machine learning models for automated inventories and monitoring of cold water corals. Our approach shows how citizen science can be used to effectively extract occurrence and abundance data for key ecological species and habitats from underwater footage. We conclude that the combination of open-source tools, citizen science systems, machine learning and high performance computational resources are key to successfully analyse large amounts of underwater imagery in the future.

Identifiants

pubmed: 33679174
doi: 10.3897/BDJ.9.e60548
pii: 60548
pmc: PMC7930014
doi:

Types de publication

Journal Article

Langues

eng

Pagination

e60548

Informations de copyright

Victor Anton, Jannes Germishuys, Per Bergström, Mats Lindegarth, Matthias Obst.

Références

Science. 2013 Jan 18;339(6117):277-8
pubmed: 23329036
PLoS One. 2015 Jul 08;10(7):e0130312
pubmed: 26154157
Biol Rev Camb Philos Soc. 2018 Feb;93(1):600-625
pubmed: 28766908
Sensors (Basel). 2020 Jan 28;20(3):
pubmed: 32012976

Auteurs

Victor Anton (V)

Wildlife.ai, New Plymouth, New Zealand Wildlife.ai New Plymouth New Zealand.

Jannes Germishuys (J)

Combine AB, Gothenburg, Sweden Combine AB Gothenburg Sweden.

Per Bergström (P)

Department of Marine Sciences, Göteborg University, Gothenburg, Sweden Department of Marine Sciences, Göteborg University Gothenburg Sweden.

Mats Lindegarth (M)

Department of Marine Sciences, Göteborg University, Gothenburg, Sweden Department of Marine Sciences, Göteborg University Gothenburg Sweden.

Matthias Obst (M)

Department of Marine Sciences, Göteborg University, Gothenburg, Sweden Department of Marine Sciences, Göteborg University Gothenburg Sweden.
SeAnalytics AB, Gothenburg, Sweden SeAnalytics AB Gothenburg Sweden.

Classifications MeSH