A deep neural network for multi-species fish detection using multiple acoustic cameras
Guglielmo Fernandez Garcia, Fran\c{c}ois Martignac, Marie Nevoux,, Laurent Beaulaton (OFB), Thomas Corpetti (LETG - Rennes)

TL;DR
This paper introduces a deep learning approach combining CNN and classical computer vision techniques to detect multiple fish species in acoustic video streams, improving ecological monitoring efficiency.
Contribution
It presents the first CNN pipeline for multi-species fish detection using acoustic camera data, integrating feature extraction and validation for ecological applications.
Findings
Detects nearly 80% of fish with low false positives
Effective on data from DIDSON and ARIS cameras
Less efficient for eel detection on ARIS videos
Abstract
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…
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Taxonomy
TopicsFish Ecology and Management Studies · Water Quality Monitoring Technologies · Underwater Acoustics Research
MethodsTest
