An unsupervised multilingual laughter segmentation method using Isolation Forest on BYOL-A audio representations outperforms existing supervised methods on non-English datasets.
Laughter research: a review of the ilhaire project,
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MultiLinguahah : A New Unsupervised Multilingual Acoustic Laughter Segmentation Method
An unsupervised multilingual laughter segmentation method using Isolation Forest on BYOL-A audio representations outperforms existing supervised methods on non-English datasets.