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Main Authors: Airale, Louis, Pajot, Adrien, Linossier, Juliette
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2412.03633
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author Airale, Louis
Pajot, Adrien
Linossier, Juliette
author_facet Airale, Louis
Pajot, Adrien
Linossier, Juliette
contents The persisting threats on migratory bird populations highlight the urgent need for effective monitoring techniques that could assist in their conservation. Among these, passive acoustic monitoring is an essential tool, particularly for nocturnal migratory species that are difficult to track otherwise. This work presents the Nocturnal Bird Migration (NBM) dataset, a collection of 13,359 annotated vocalizations from 117 species of the Western Palearctic. The dataset includes precise time and frequency annotations, gathered by dozens of bird enthusiasts across France, enabling novel downstream acoustic analysis. In particular, we prove the utility of this database by training an original two-stage deep object detection model tailored for the processing of audio data. While allowing the precise localization of bird calls in spectrograms, this model shows competitive accuracy on the 45 main species of the dataset with state-of-the-art systems trained on much larger audio collections. These results highlight the interest of fostering similar open-science initiatives to acquire costly but valuable fine-grained annotations of audio files. All data and code are made openly available.
format Preprint
id arxiv_https___arxiv_org_abs_2412_03633
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle NBM: an Open Dataset for the Acoustic Monitoring of Nocturnal Migratory Birds in Europe
Airale, Louis
Pajot, Adrien
Linossier, Juliette
Sound
Computer Vision and Pattern Recognition
Audio and Speech Processing
The persisting threats on migratory bird populations highlight the urgent need for effective monitoring techniques that could assist in their conservation. Among these, passive acoustic monitoring is an essential tool, particularly for nocturnal migratory species that are difficult to track otherwise. This work presents the Nocturnal Bird Migration (NBM) dataset, a collection of 13,359 annotated vocalizations from 117 species of the Western Palearctic. The dataset includes precise time and frequency annotations, gathered by dozens of bird enthusiasts across France, enabling novel downstream acoustic analysis. In particular, we prove the utility of this database by training an original two-stage deep object detection model tailored for the processing of audio data. While allowing the precise localization of bird calls in spectrograms, this model shows competitive accuracy on the 45 main species of the dataset with state-of-the-art systems trained on much larger audio collections. These results highlight the interest of fostering similar open-science initiatives to acquire costly but valuable fine-grained annotations of audio files. All data and code are made openly available.
title NBM: an Open Dataset for the Acoustic Monitoring of Nocturnal Migratory Birds in Europe
topic Sound
Computer Vision and Pattern Recognition
Audio and Speech Processing
url https://arxiv.org/abs/2412.03633