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arxiv: 2310.13759 · v1 · pith:ZZBLT2BR · submitted 2023-10-20 · cs.SD · eess.AS

Multi-label Open-set Audio Classification

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classification cs.SD eess.AS
keywords audioclassificationsoundeventsmulti-labelopen-setunknownbeen
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Current audio classification models have small class vocabularies relative to the large number of sound event classes of interest in the real world. Thus, they provide a limited view of the world that may miss important yet unexpected or unknown sound events. To address this issue, open-set audio classification techniques have been developed to detect sound events from unknown classes. Although these methods have been applied to a multi-class context in audio, such as sound scene classification, they have yet to be investigated for polyphonic audio in which sound events overlap, requiring the use of multi-label models. In this study, we establish the problem of multi-label open-set audio classification by creating a dataset with varying unknown class distributions and evaluating baseline approaches built upon existing techniques.

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