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Few-shot Long-Tailed Bird Audio Recognition

Published 3 years agoVersion 2arXiv:2206.11260

Authors

Marcos V. Conde, Ui-Jin Choi

Categories

cs.SDcs.CVcs.LGeess.AS

Abstract

It is easier to hear birds than see them. However, they still play an essential role in nature and are excellent indicators of deteriorating environmental quality and pollution. Recent advances in Deep Neural Networks allow us to process audio data to detect and classify birds. This technology can assist researchers in monitoring bird populations and biodiversity. We propose a sound detection and classification pipeline to analyze complex soundscape recordings and identify birdcalls in the background. Our method learns from weak labels and few data and acoustically recognizes the bird species. Our solution achieved 18th place of 807 teams at the BirdCLEF 2022 Challenge hosted on Kaggle.

Few-shot Long-Tailed Bird Audio Recognition

3 years ago
v2
2 authors

Categories

cs.SDcs.CVcs.LGeess.AS

Abstract

It is easier to hear birds than see them. However, they still play an essential role in nature and are excellent indicators of deteriorating environmental quality and pollution. Recent advances in Deep Neural Networks allow us to process audio data to detect and classify birds. This technology can assist researchers in monitoring bird populations and biodiversity. We propose a sound detection and classification pipeline to analyze complex soundscape recordings and identify birdcalls in the background. Our method learns from weak labels and few data and acoustically recognizes the bird species. Our solution achieved 18th place of 807 teams at the BirdCLEF 2022 Challenge hosted on Kaggle.

Authors

Marcos V. Conde, Ui-Jin Choi

arXiv ID: 2206.11260
Published Jun 22, 2022

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