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Large-scale learning of generalised representations for speaker recognition

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arxiv 2210.10985 v2 pith:2ZKM4T4A submitted 2022-10-20 cs.SD cs.AIeess.AS

Large-scale learning of generalised representations for speaker recognition

classification cs.SD cs.AIeess.AS
keywords datamodelconfigurationsdiverseevaluationfourmfa-conformermodels
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The objective of this work is to develop a speaker recognition model to be used in diverse scenarios. We hypothesise that two components should be adequately configured to build such a model. First, adequate architecture would be required. We explore several recent state-of-the-art models, including ECAPA-TDNN and MFA-Conformer, as well as other baselines. Second, a massive amount of data would be required. We investigate several new training data configurations combining a few existing datasets. The most extensive configuration includes over 87k speakers' 10.22k hours of speech. Four evaluation protocols are adopted to measure how the trained model performs in diverse scenarios. Through experiments, we find that MFA-Conformer with the least inductive bias generalises the best. We also show that training with proposed large data configurations gives better performance. A boost in generalisation is observed, where the average performance on four evaluation protocols improves by more than 20%. In addition, we also demonstrate that these models' performances can improve even further when increasing capacity.

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