Authors
Sébastien Villon, David Mouillot, Marc Chaumont, Emily S Darling, Gérard Subsol, Thomas Claverie, Sébastien Villéger
Publication date
2018/11/1
Journal
Ecological informatics
Volume
48
Pages
238-244
Publisher
Elsevier
Description
Identifying and counting fish individuals on photos and videos is a crucial task to cost-effectively monitor marine biodiversity, yet it remains difficult and time-consuming. In this paper, we present a method to assist the identification of fish species on underwater images, and we compare our model performances to human ability in terms of speed and accuracy. We first tested the performance of a convolutional neural network (CNN) trained with different photographic databases while accounting for different post-processing decision rules to identify 20 fish species. Finally, we compared the performance of species identification of our best CNN model with that of humans on a test database of 1197 fish images representing nine species. The best CNN was the one trained with 900,000 images including (i) whole fish bodies, (ii) partial fish bodies and (iii) the environment (e.g. reef bottom or water). The rate of correct …
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