BirdSet
Audio classification dataset
A comprehensive benchmark dataset collection for audio classification in avian bioacoustics, aiming to advance bird sound classification by providing diverse real-world evaluation use cases.
A benchmark dataset collection for bird sound classification
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Language: Jupyter Notebook
last commit: 10 days ago avianbenchmarkbioacousticsdeeplearning
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