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Speech Sequence Embeddings using Nearest Neighbors Contrastive Learning
by
Dupoux, Emmanuel
, Nabli, Adel
, Sagot, Benoit
, Algayres, Robin
in
Contrastive learning
/ Speech
2023
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Speech Sequence Embeddings using Nearest Neighbors Contrastive Learning
by
Dupoux, Emmanuel
, Nabli, Adel
, Sagot, Benoit
, Algayres, Robin
in
Contrastive learning
/ Speech
2023
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Speech Sequence Embeddings using Nearest Neighbors Contrastive Learning
Paper
Speech Sequence Embeddings using Nearest Neighbors Contrastive Learning
2023
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Overview
We introduce a simple neural encoder architecture that can be trained using an unsupervised contrastive learning objective which gets its positive samples from data-augmented k-Nearest Neighbors search. We show that when built on top of recent self-supervised audio representations, this method can be applied iteratively and yield competitive SSE as evaluated on two tasks: query-by-example of random sequences of speech, and spoken term discovery. On both tasks our method pushes the state-of-the-art by a significant margin across 5 different languages. Finally, we establish a benchmark on a query-by-example task on the LibriSpeech dataset to monitor future improvements in the field.
Publisher
Cornell University Library, arXiv.org
Subject
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