Litcius/Paper detail

LongFNT: Long-Form Speech Recognition with Factorized Neural Transducer

Xun Gong, Yu Wu, Jinyu Li, Shujie Liu, Rui Zhao, Xie Chen, Yanmin Qian

202312 citationsDOI

Abstract

Traditional automatic speech recognition (ASR) systems usually focus on individual utterances, without considering long-form speech with useful historical information, which is more practical in real scenarios. Simply attending longer transcription history for a vanilla neural transducer model shows no much gain in our preliminary experiments, since the prediction network is not a pure language model. This motivates us to leverage the factorized neural transducer structure, containing a real language model, the vocabulary predictor. We propose the LongFNT-Text architecture, which fuses the sentence-level long-form features directly with the output of the vocabulary predictor and then embeds token-level long-form features inside the vocabulary predictor, with a pre-trained contextual encoder RoBERTa to further boost the performance. Moreover, we propose the LongFNT architecture by extending the long-form speech to the original speech input and achieve the best performance. The effectiveness of our LongFNT approach is validated on LibriSpeech and GigaSpeech corpora with 19% and 12% relative word error rate (WER) reduction, respectively.

Topics & Concepts

Computer scienceSpeech recognitionVocabularyWord error rateLanguage modelLeverage (statistics)Security tokenEncoderArtificial neural networkSentenceAcoustic modelFocus (optics)Artificial intelligenceNatural language processingSpeech processingLinguisticsPhysicsPhilosophyOperating systemOpticsComputer securitySpeech Recognition and SynthesisNatural Language Processing TechniquesTopic Modeling