New interactive machine learning tool for marine image analysis

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Standard

New interactive machine learning tool for marine image analysis. / Clark, H. Poppy; Smith, Abraham George; McKay Fletcher, Daniel; Larsson, Ann I.; Jaspars, Marcel; De Clippele, Laurence H.

I: Royal Society Open Science, Bind 11, Nr. 5, 231678, 2024.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Clark, HP, Smith, AG, McKay Fletcher, D, Larsson, AI, Jaspars, M & De Clippele, LH 2024, 'New interactive machine learning tool for marine image analysis', Royal Society Open Science, bind 11, nr. 5, 231678. https://doi.org/10.1098/rsos.231678

APA

Clark, H. P., Smith, A. G., McKay Fletcher, D., Larsson, A. I., Jaspars, M., & De Clippele, L. H. (2024). New interactive machine learning tool for marine image analysis. Royal Society Open Science, 11(5), [231678]. https://doi.org/10.1098/rsos.231678

Vancouver

Clark HP, Smith AG, McKay Fletcher D, Larsson AI, Jaspars M, De Clippele LH. New interactive machine learning tool for marine image analysis. Royal Society Open Science. 2024;11(5). 231678. https://doi.org/10.1098/rsos.231678

Author

Clark, H. Poppy ; Smith, Abraham George ; McKay Fletcher, Daniel ; Larsson, Ann I. ; Jaspars, Marcel ; De Clippele, Laurence H. / New interactive machine learning tool for marine image analysis. I: Royal Society Open Science. 2024 ; Bind 11, Nr. 5.

Bibtex

@article{22e4c4bae56545d4add4be4823916e1d,
title = "New interactive machine learning tool for marine image analysis",
abstract = "Advancing imaging technologies are drastically increasing the rate of marine video and image data collection. Often these datasets are not analysed to their full potential as extracting information for multiple species is incredibly time-consuming. This study demonstrates the capability of the open-source interactive machine learning tool, RootPainter, to analyse large marine image datasets quickly and accurately. The ability of RootPainter to extract the presence and surface area of the cold-water coral reef associate sponge species, Mycale lingua, was tested in two datasets: 18 346 time-lapse images and 1420 remotely operated vehicle video frames. New corrective annotation metrics integrated with RootPainter allow objective assessment of when to stop model training and reduce the need for manual model validation. Three highly accurate M. lingua models were created using RootPainter, with an average dice score of 0.94 ± 0.06. Transfer learning aided the production of two of the models, increasing analysis efficiency from 6 to 16 times faster than manual annotation for time-lapse images. Surface area measurements were extracted from both datasets allowing future investigation of sponge behaviours and distributions. Moving forward, interactive machine learning tools and model sharing could dramatically increase image analysis speeds, collaborative research and our understanding of spatiotemporal patterns in biodiversity. ",
keywords = "automated area measurement, benthic ecology, computer vision, interactive machine learning, marine image analysis, RootPainter",
author = "Clark, {H. Poppy} and Smith, {Abraham George} and {McKay Fletcher}, Daniel and Larsson, {Ann I.} and Marcel Jaspars and {De Clippele}, {Laurence H.}",
note = "Publisher Copyright: {\textcopyright} 2024 The Authors.",
year = "2024",
doi = "10.1098/rsos.231678",
language = "English",
volume = "11",
journal = "Royal Society Open Science",
issn = "2054-5703",
publisher = "TheRoyal Society Publishing",
number = "5",

}

RIS

TY - JOUR

T1 - New interactive machine learning tool for marine image analysis

AU - Clark, H. Poppy

AU - Smith, Abraham George

AU - McKay Fletcher, Daniel

AU - Larsson, Ann I.

AU - Jaspars, Marcel

AU - De Clippele, Laurence H.

N1 - Publisher Copyright: © 2024 The Authors.

PY - 2024

Y1 - 2024

N2 - Advancing imaging technologies are drastically increasing the rate of marine video and image data collection. Often these datasets are not analysed to their full potential as extracting information for multiple species is incredibly time-consuming. This study demonstrates the capability of the open-source interactive machine learning tool, RootPainter, to analyse large marine image datasets quickly and accurately. The ability of RootPainter to extract the presence and surface area of the cold-water coral reef associate sponge species, Mycale lingua, was tested in two datasets: 18 346 time-lapse images and 1420 remotely operated vehicle video frames. New corrective annotation metrics integrated with RootPainter allow objective assessment of when to stop model training and reduce the need for manual model validation. Three highly accurate M. lingua models were created using RootPainter, with an average dice score of 0.94 ± 0.06. Transfer learning aided the production of two of the models, increasing analysis efficiency from 6 to 16 times faster than manual annotation for time-lapse images. Surface area measurements were extracted from both datasets allowing future investigation of sponge behaviours and distributions. Moving forward, interactive machine learning tools and model sharing could dramatically increase image analysis speeds, collaborative research and our understanding of spatiotemporal patterns in biodiversity.

AB - Advancing imaging technologies are drastically increasing the rate of marine video and image data collection. Often these datasets are not analysed to their full potential as extracting information for multiple species is incredibly time-consuming. This study demonstrates the capability of the open-source interactive machine learning tool, RootPainter, to analyse large marine image datasets quickly and accurately. The ability of RootPainter to extract the presence and surface area of the cold-water coral reef associate sponge species, Mycale lingua, was tested in two datasets: 18 346 time-lapse images and 1420 remotely operated vehicle video frames. New corrective annotation metrics integrated with RootPainter allow objective assessment of when to stop model training and reduce the need for manual model validation. Three highly accurate M. lingua models were created using RootPainter, with an average dice score of 0.94 ± 0.06. Transfer learning aided the production of two of the models, increasing analysis efficiency from 6 to 16 times faster than manual annotation for time-lapse images. Surface area measurements were extracted from both datasets allowing future investigation of sponge behaviours and distributions. Moving forward, interactive machine learning tools and model sharing could dramatically increase image analysis speeds, collaborative research and our understanding of spatiotemporal patterns in biodiversity.

KW - automated area measurement

KW - benthic ecology

KW - computer vision

KW - interactive machine learning

KW - marine image analysis

KW - RootPainter

U2 - 10.1098/rsos.231678

DO - 10.1098/rsos.231678

M3 - Journal article

AN - SCOPUS:85195287208

VL - 11

JO - Royal Society Open Science

JF - Royal Society Open Science

SN - 2054-5703

IS - 5

M1 - 231678

ER -

ID: 395154045