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arxiv: 2506.17690 · v1 · pith:4XGPFRNHnew · submitted 2025-06-21 · 📡 eess.AS

Low-resource keyword spotting using contrastively trained transformer acoustic word embeddings

classification 📡 eess.AS
keywords keywordspottinglow-resourcemodelacousticapproachapproachescontrastivetransformer
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We introduce a new approach, the ContrastiveTransformer, that produces acoustic word embeddings (AWEs) for the purpose of very low-resource keyword spotting. The ContrastiveTransformer, an encoder-only model, directly optimises the embedding space using normalised temperature-scaled cross entropy (NT-Xent) loss. We use this model to perform keyword spotting for radio broadcasts in Luganda and Bambara, the latter a severely under-resourced language. We compare our model to various existing AWE approaches, including those constructed from large pre-trained self-supervised models, a recurrent encoder which previously used the NT-Xent loss, and a DTW baseline. We demonstrate that the proposed contrastive transformer approach offers performance improvements over all considered existing approaches to very low-resource keyword spotting in both languages.

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