A deep neural network for multi-species fish detection using multiple acoustic cameras

Underwater acoustic cameras are high potential devices for many applications in ecology, notably for fisheries management and monitoring. However how to extract such data into high value information without a time-consuming entire dataset reading by an operator is still a challenge. Moreover the analysis of acoustic imaging, due to its low signal-to-noise ratio, is a perfect training ground for experimenting with new approaches, especially concerning Deep Learning techniques. We present hereby a novel approach that takes advantage of both CNN (Convolutional Neural Network) and classical CV (Computer Vision) techniques, able to detect a generic class ”fish” in acoustic video streams. The pipeline pre-treats the acoustic images to extract 2 features, in order to localise the signals and improve the detection performances. To ensure the performances from an ecological point of view, we propose also a two-step validation, one to validate the results of the trainings and one to test the method on a real-world scenario. The YOLOv3-based model was trained with data of fish from multiple species recorded by the two common acoustic cameras, DIDSON and ARIS, including species of high ecological interest, as Atlantic salmon or European eels. The model we developed provides satisfying results detecting almost 80 the model is much less efficient for eel detections on ARIS videos. The first CNN pipeline for fish monitoring exploiting video data from two models of acoustic cameras satisfies most of the required features. Many challenges are still present, such as the automation of fish species identification through a multiclass model. 1 However the results point a new solution for dealing with complex data, such as sonar data, which can also be reapplied in other cases where the signal-to-noise ratio is a challenge.

READ FULL TEXT

page 7

page 13

page 15

research
07/16/2018

Automatic acoustic detection of birds through deep learning: the first Bird Audio Detection challenge

Assessing the presence and abundance of birds is important for monitorin...
research
04/10/2023

In-situ crack and keyhole pore detection in laser directed energy deposition through acoustic signal and deep learning

Cracks and keyhole pores are detrimental defects in alloys produced by l...
research
02/23/2020

A Multi-view CNN-based Acoustic Classification System for Automatic Animal Species Identification

Automatic identification of animal species by their vocalization is an i...
research
02/24/2020

Baryon acoustic oscillations reconstruction using convolutional neural networks

Here we propose a new scheme to reconstruct the baryon acoustic oscillat...
research
06/10/2019

Estimation of 2D Velocity Model using Acoustic Signals and Convolutional Neural Networks

The parameters estimation of a system using indirect measurements over t...
research
01/06/2021

Detection of foraging behavior from accelerometer data using U-Net type convolutional networks

Narwhal is one of the most mysterious marine mammals, due to its isolate...

Please sign up or login with your details

Forgot password? Click here to reset