Skip to Main content Skip to Navigation
New interface
Journal articles

Automatic detection, identification and counting of anguilliform fish using in situ acoustic camera data: development of a cross-camera morphological analysis approach

Abstract : Abstract Acoustic cameras are increasingly used in monitoring studies of diadromous fish populations, even though analyzing them is time-consuming. In complex in situ contexts, anguilliform fish may be especially difficult to identify automatically using acoustic camera data because the undulation of their body frequently results in fragmented targets. Our study aimed to develop a method based on a succession of computer vision techniques, in order to automatically detect, identify and count anguilliform fish using data from multiple models of acoustic cameras. Indeed, several models of cameras, owning specific technical characteristics, are used to monitor fish populations, causing major differences in the recorded data shapes and resolutions. The method was applied to two large datasets recorded at two distinct monitoring sites with populations of European eels with different length distributions. The method yielded promising results for large eels, with more than 75% of eels automatically identified successfully using datasets from ARIS and BlueView cameras. However, only 42% of eels shorter than 60 cm were detected, with the best model performances observed for detection ranges of 4-9 m. Although improvements are required to compensate for fish-length limitations, our cross-camera method is promising for automatically detecting and counting large eels in long-term monitoring studies in complex environments.
Document type :
Journal articles
Complete list of metadata

https://hal.inrae.fr/hal-03787877
Contributor : Jean-Marc Roussel Connect in order to contact the contributor
Submitted on : Monday, September 26, 2022 - 9:38:58 AM
Last modification on : Tuesday, November 8, 2022 - 3:56:06 AM

Licence


Distributed under a Creative Commons Attribution 4.0 International License

Links full text

Identifiers

Citation

Azénor Le Quinio, Eric de Oliveira, Alexandre Girard, Jean Guillard, Jean-Marc Roussel, et al.. Automatic detection, identification and counting of anguilliform fish using in situ acoustic camera data: development of a cross-camera morphological analysis approach. BioRxiv, inPress, ⟨10.1101/2022.08.11.503684⟩. ⟨hal-03787877⟩

Share

Metrics

Record views

10