Articolo in rivista, 2021, ENG, 10.3390/w13182512
Harrison, Dominica; De Leo, Fabio Cabrera; Gallin, Warren J.; Mir, Farin; Marini, Simone; Leys, Sally P.
Univ Alberta; Univ Victoria; Univ Victoria; Natl Res Council Italy; Stazione Zool Anton Dohrn SZN
Biological data sets are increasingly becoming information-dense, making it effective to use a computer science-based analysis. We used convolution neural networks (CNN) and the specific CNN architecture Unet to study sponge behavior over time. We analyzed a large time series of hourly high-resolution still images of a marine sponge, Suberites concinnus (Demospongiae, Suberitidae) captured between 2012 and 2015 using the NEPTUNE seafloor cabled observatory, off the west coast of Vancouver Island, Canada. We applied semantic segmentation with the Unet architecture with some modifications, including adapting parts of the architecture to be more applicable to three-channel images (RGB). Some alterations that made this model successful were the use of a dice-loss coefficient, Adam optimizer and a dropout function after each convolutional layer which provided losses, accuracies and dice scores of up to 0.03, 0.98 and 0.97, respectively. The model was tested with five-fold cross-validation. This study is a first step towards analyzing trends in the behavior of a demosponge in an environment that experiences severe seasonal and inter-annual changes in climate. The end objective is to correlate changes in sponge size (activity) over seasons and years with environmental variables collected from the same observatory platform. Our work provides a roadmap for others who seek to cross the interdisciplinary boundaries between biology and computer science.
Water (Basel) 13 (18)
convolutional neural networks (CNN), unet, machine learning, semantic segmentation, demosponge behavior, classification, time series, deep learning, image analysis
ID: 461962
Year: 2021
Type: Articolo in rivista
Creation: 2022-01-04 12:41:05.000
Last update: 2022-01-04 12:41:05.000
CNR authors
External IDs
CNR OAI-PMH: oai:it.cnr:prodotti:461962
DOI: 10.3390/w13182512
ISI Web of Science (WOS): 000701622600001
Scopus: 2-s2.0-85115036509