TY - JOUR
T1 - Using deep-learning for automatic identification of images of marine benthic macro-invertebrate bycatch
T2 - A proof of concept
AU - Martin, Alexis
AU - Rosset, Nicolas
AU - Blettery, Jonathan
AU - Gousseau, Yann
N1 - Publisher Copyright:
© 2023 Societe Francaise d'Ichtyologie. All rights reserved.
PY - 2023/7/1
Y1 - 2023/7/1
N2 - We applied a deep-learning approach in order to develop a neural network able to detect and iden¬tify macro-invertebrate organisms within images of benthos bycatch collected in the Southern Ocean. We used the Faster RCXX architecture and fine-tuning approach. To perform the transfer-learning, we used an annotated dataset of 59.756 images of organisms identified within 1,845 images of lots, covering eleven taxa: Echinoder-mata, Asteroidea, Arthropoda, Annelida, Chordata, Hemichordata, Cnidaria, Porifera, Bryozoa, Brachiopoda and Mollusca. The resulting network, not yet efficient enough to obtain precise identifications, is able to provide detection and classification of organisms with a good level of accuracy considering the limited quality of the images used for training. We present this study as a proof of concept for teams involved in the management of collections of macro-invertebrate images.
AB - We applied a deep-learning approach in order to develop a neural network able to detect and iden¬tify macro-invertebrate organisms within images of benthos bycatch collected in the Southern Ocean. We used the Faster RCXX architecture and fine-tuning approach. To perform the transfer-learning, we used an annotated dataset of 59.756 images of organisms identified within 1,845 images of lots, covering eleven taxa: Echinoder-mata, Asteroidea, Arthropoda, Annelida, Chordata, Hemichordata, Cnidaria, Porifera, Bryozoa, Brachiopoda and Mollusca. The resulting network, not yet efficient enough to obtain precise identifications, is able to provide detection and classification of organisms with a good level of accuracy considering the limited quality of the images used for training. We present this study as a proof of concept for teams involved in the management of collections of macro-invertebrate images.
KW - Deep-learning Benthos Macro-invertebrates Kerguelen Southern Ocean Bvcax:: Fisheries Automatic identification Images Annotated image collection
U2 - 10.26028/cybium/2023-021
DO - 10.26028/cybium/2023-021
M3 - Article
AN - SCOPUS:85166291900
SN - 0399-0974
VL - 47
SP - 335
EP - 341
JO - Cybium
JF - Cybium
IS - 3
ER -