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CRNN-BASED SPLASH AUDIO EVENT DETECTION FOR FISH MONITORING Association LOGRAMI http://zotero.org/users/237438 http://zotero.org/users/237438/items/NDYS4RZH 2024-03-21T16:34:29Z 2024-03-21T16:34:29Z NDYS4RZH 20403 conferencePaper Sota et al. 2023-09 1
Item Type Conference Paper
Author Ardit Sota
Author Patrice Guyot
Author Fanny Alix
Author Klevisa Xhika
URL https://hal.science/hal-04210365
Place Turino, Italy
Publisher EAA
Date 2023-09
Accessed 2024-03-21 16:34:29
Library Catalog HAL Archives Ouvertes
Abstract Monitoring migratory fish species provides a good indicator for rivers' health. Migratory fish as alosa (Alosa fallax also known as twait shad), swims up the rivers to reproduce if the dam infrastructure allows it. During spawning, some species of alosa produce during a few seconds a characteristic splash sound, that enables them to perceive their presence. Stakeholders involved in the rehabilitation of freshwater ecosystems rely on staff to aurally count the bulls during spring nights and then estimate the alosa population at different sites. In order to reduce the human costs and expand the scope of the analysis, we propose a deep learning approach for audio event detection from dozens of GB of audio files recorded from the riverbanks. An automatic detection system consisting of a Recurrent Convolutional Neural Network (CRNN) is presented. Encouraging results enable us to aim for an automated implementation on sites.
Proceedings Title Forum Acusticum 2023 - 10th convention of the European Acoustics Association

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