Artificial intelligence for fish behavior recognition may unlock fishing gear selectivity

被引:17
作者
Abangan, Alexa Sugpatan [1 ]
Kopp, Dorothee [1 ]
Faillettaz, Robin [1 ]
机构
[1] IFREMER, Inst Natl Rech Agr Alimentat & Environm INRAE, Lab Technol & Biol Halieut,Inst Agro, Dynam & Durabil Ecosyst DECOD, Lorient, France
基金
英国科研创新办公室;
关键词
fisheries; gear technology; underwater observation systems; deep learning; fish behavior tracking; POLLOCK THERAGRA-CHALCOGRAMMA; NEURAL-NETWORK; SPECIES CLASSIFICATION; INDIVIDUAL BEHAVIOR; HERDING BEHAVIOR; SIZE-SELECTIVITY; CLUPEA-HARENGUS; VIDEO TRACKING; GADUS-MORHUA; SYSTEM;
D O I
10.3389/fmars.2023.1010761
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Through the advancement of observation systems, our vision has far extended its reach into the world of fishes, and how they interact with fishing gears-breaking through physical boundaries and visually adapting to challenging conditions in marine environments. As marine sciences step into the era of artificial intelligence (AI), deep learning models now provide tools for researchers to process a large amount of imagery data (i.e., image sequence, video) on fish behavior in a more time-efficient and cost-effective manner. The latest AI models to detect fish and categorize species are now reaching human-like accuracy. Nevertheless, robust tools to track fish movements in situ are under development and primarily focused on tropical species. Data to accurately interpret fish interactions with fishing gears is still lacking, especially for temperate fishes. At the same time, this is an essential step for selectivity studies to advance and integrate AI methods in assessing the effectiveness of modified gears. We here conduct a bibliometric analysis to review the recent advances and applications of AI in automated tools for fish tracking, classification, and behavior recognition, highlighting how they may ultimately help improve gear selectivity. We further show how transforming external stimuli that influence fish behavior, such as sensory cues and gears as background, into interpretable features that models learn to distinguish remains challenging. By presenting the recent advances in AI on fish behavior applied to fishing gear improvements (e.g., Long Short-Term Memory (LSTM), Generative Adversarial Network (GAN), coupled networks), we discuss the advances, potential and limits of AI to help meet the demands of fishing policies and sustainable goals, as scientists and developers continue to collaborate in building the database needed to train deep learning models.
引用
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页数:23
相关论文
共 314 条
  • [1] Coastal observatories for monitoring of fish behaviour and their responses to environmental changes
    Aguzzi, J.
    Doya, C.
    Tecchio, S.
    De Leo, F. C.
    Azzurro, E.
    Costa, C.
    Sbragaglia, V.
    Del Rio, J.
    Navarro, J.
    Ruhl, H. A.
    Company, J. B.
    Favali, P.
    Purser, A.
    Thomsen, L.
    Catalan, I. A.
    [J]. REVIEWS IN FISH BIOLOGY AND FISHERIES, 2015, 25 (03) : 463 - 483
  • [2] Ahmed H., 2012, Technical Report
  • [3] Alaliyat S., 2014, P 28 EUROPEAN C MODE, DOI [10.7148/2014-0643, DOI 10.7148/2014-0643]
  • [4] Albawi S, 2017, I C ENG TECHNOL
  • [5] A deep learning-based method to identify and count pelagic and mesopelagic fishes from trawl camera images
    Allken, Vaneeda
    Rosen, Shale
    Handegard, Nils Olav
    Malde, Ketil
    Demer, David
    [J]. ICES JOURNAL OF MARINE SCIENCE, 2021, 78 (10) : 3780 - 3792
  • [6] A real-world dataset and data simulation algorithm for automated fish species identification
    Allken, Vaneeda
    Rosen, Shale
    Handegard, Nils Olav
    Malde, Ketil
    [J]. GEOSCIENCE DATA JOURNAL, 2021, 8 (02): : 199 - 209
  • [7] Fish species identification using a convolutional neural network trained on synthetic data
    Allken, Vaneeda
    Handegard, Nils Olav
    Rosen, Shale
    Schreyeck, Tiffanie
    Mahiout, Thomas
    Malde, Ketil
    [J]. ICES JOURNAL OF MARINE SCIENCE, 2019, 76 (01) : 342 - 349
  • [8] Improved deep learning framework for fish segmentation in underwater videos
    Alshdaifat, Nawaf Farhan Funkur
    Talib, Abdullah Zawawi
    Osman, Mohd Azam
    [J]. ECOLOGICAL INFORMATICS, 2020, 59
  • [9] Comparison of Visually Guided Flight in Insects and Birds
    Altshuler, Douglas L.
    Srinivasan, Mandyam V.
    [J]. FRONTIERS IN NEUROSCIENCE, 2018, 12
  • [10] Anantharajah K, 2014, IEEE WINT CONF APPL, P309, DOI 10.1109/WACV.2014.6836084