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arxiv: 2305.01864 · v3 · pith:SLR5KDPV · submitted 2023-05-03 · cs.SD · cs.LG· eess.AS

Unsupervised Improvement of Audio-Text Cross-Modal Representations

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classification cs.SD cs.LGeess.AS
keywords audio-textclassificationrepresentationsapproachescross-modalcurationdomain-specificimprove
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Recent advances in using language models to obtain cross-modal audio-text representations have overcome the limitations of conventional training approaches that use predefined labels. This has allowed the community to make progress in tasks like zero-shot classification, which would otherwise not be possible. However, learning such representations requires a large amount of human-annotated audio-text pairs. In this paper, we study unsupervised approaches to improve the learning framework of such representations with unpaired text and audio. We explore domain-unspecific and domain-specific curation methods to create audio-text pairs that we use to further improve the model. We also show that when domain-specific curation is used in conjunction with a soft-labeled contrastive loss, we are able to obtain significant improvement in terms of zero-shot classification performance on downstream sound event classification or acoustic scene classification tasks.

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