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Multilingual Query-by-Example Keyword Spotting with Metric Learning and Phoneme-to-Embedding Mapping

Paul M. Reuter, Christian Rollwage, Bernd T. Meyer

202315 citationsDOI

Abstract

In this paper, we propose a multilingual query-by-example keyword spotting (KWS) system based on a residual neural network. The model is trained as a classifier on a multilingual keyword dataset extracted from Common Voice sentences and fine-tuned using circle loss. We demonstrate the generalization ability of the model to new languages and report a mean reduction in EER of 59.2% for previously seen and 47.9% for unseen languages compared to a competitive baseline. We show that the word embeddings learned by the KWS model can be accurately predicted from the phoneme sequences using a simple LSTM model. Our system achieves a promising accuracy for streaming keyword spotting and keyword search on Common Voice audio using just 5 examples per keyword. Experiments on the Hey-Snips dataset show a good performance with a false negative rate of 5.4% at only 0.1 false alarms per hour.

Topics & Concepts

Keyword spottingComputer scienceArtificial intelligenceEmbeddingClassifier (UML)Metric (unit)SpottingSpeech recognitionGeneralizationResidualWord error rateWord (group theory)Word embeddingNatural language processingPhilosophyMathematical analysisMathematicsOperations managementEconomicsAlgorithmLinguisticsMusic and Audio ProcessingSpeech Recognition and SynthesisText and Document Classification Technologies
Multilingual Query-by-Example Keyword Spotting with Metric Learning and Phoneme-to-Embedding Mapping | Litcius