3 Matching Annotations
- Oct 2023
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docdrop.org docdrop.org
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beans and 00:13:54 this is a benchmark of animal sounds and it's a collection of audio recordings from more than 250 species and this large aggregate data set is a way to 00:14:07 test tools for classification and detection and these are outstanding problems in bioacoustics that we desperately need solutions to
- for: BEANS, Benchmark of Animal Sounds
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- Sep 2023
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this is AVS the very first Foundation model for animal communication
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www.researchgate.net www.researchgate.net
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for: animal communication, AI - animal communication, bioacoustic
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title: BEAN: The Benchmark of Animal Sounds
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author
- Masato Hagiwara
- Benjamin Hoffman
- Jen-Yu Liu
- Maddie Cusimano
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Abstract
- The use of machine learning (ML) based techniques has become increasingly popular in the field of bioacoustics over the last years.
- Fundamental requirements for the successful application of ML based techniques are curated, agreed upon, high-quality datasets and benchmark tasks to be learned on a given dataset.
- However, the field of bioacoustics so far lacks such public benchmarks which cover multiple tasks and species to measure the performance of ML techniques in a controlled and standardized way and that allows for benchmarking newly proposed techniques to existing ones.
- Here, we propose BEANS (the BEnchmark of ANimal Sounds), a collection of bioacoustics tasks and public datasets, specifically designed to measure the performance of machine learning algorithms in the field of bioacoustics.
- The benchmark proposed here consists of two common tasks in bioacoustics:
- classification and
- detection.
- It includes 12 datasets covering various species, including
- birds,
- land and marine mammals,
- anurans, and insects.
- In addition to the datasets, we also present the performance of a set of standard ML methods as the baseline for task performance.
- The benchmark and baseline code is made publicly available at
- in the hope of establishing a new standard dataset for ML-based bioacoustic research.
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