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Rethinking Evaluation in ASR: Are Our Models Robust Enough?

Tatiana Likhomanenko, Qiantong Xu, Vineel Pratap, Paden Tomasello, Jacob Kahn, Gilad Avidov, Ronan Collobert, Gabriel Synnaeve

202112 citationsDOIOpen Access PDF

Abstract

Is pushing numbers on a single benchmark valuable in automatic speech recognition? Research results in acoustic modeling are typically evaluated based on performance on a single dataset. While the research community has coalesced around various benchmarks, we set out to understand generalization performance in acoustic modeling across datasets - in particular, if models trained on a single dataset transfer to other (possibly out-of-domain) datasets. We show that, in general, reverberative and additive noise augmentation improves generalization performance across domains. Further, we demonstrate that when a large enough set of benchmarks is used, average word error rate (WER) performance over them provides a good proxy for performance on real-world noisy data. Finally, we show that training a single acoustic model on the most widely-used datasets - combined - reaches competitive performance on both research and real-world benchmarks.

Topics & Concepts

Computer scienceBenchmark (surveying)Proxy (statistics)GeneralizationTraining setTransfer of learningWord error rateSet (abstract data type)Domain (mathematical analysis)Machine learningArtificial intelligenceAcoustic modelSpeech recognitionData miningSpeech processingMathematicsMathematical analysisGeodesyGeographyProgramming languageSpeech Recognition and SynthesisMusic and Audio ProcessingSpeech and Audio Processing