In this paper, we propose a Unified pre-training Framework for Online and Offline (UFO2) Automatic Speech Recognition (ASR), which 1) simplifies the two separate training workflows for online and offline modes into one process, and 2) improves the Word Error Rate (WER) performance with limited utterance annotating. Specifically, we extend the conventional offline-mode Self-Supervised Learning (SSL)-based ASR approach to a unified manner, where the model training is conditioned on both the full-context and dynamic-chunked inputs. To enhance the pre-trained representation model, stop-gradient operation is applied to decouple the online-mode objectives to the quantizer. Moreover, in both the pre-training and the downstream fine-tuning stages, joint losses are proposed to train the unified model with full-weight sharing for the two modes. Experimental results on the LibriSpeech dataset show that UFO2 outperforms the SSL-based baseline method by 29.7% and 18.2% relative WER reduction in offline and online modes, respectively.
翻译:在本文中,我们提出了一种适用于在线和离线(UFO2)语音自动识别(ASR)的统一预训练框架,它将在线和离线模式的两个单独的训练工作流程简化为一个过程,并且在有限的语音标注情况下改进了单词错误率(WER)性能。具体来说,我们将常规的离线模式自我监督学习(SSL)ASR方法推广到一个统一的方式,其中模型训练取决于完整上下文和动态分块输入。为了增强预训练表示模型,停止梯度操作被应用于解耦在线模式目标和量化器。此外,在预训练和下游微调阶段,提出了联合损失,为两种模式的完全权重共享训练统一的模型。在LibriSpeech数据集上的实验结果显示,UFO2在离线和在线模式下的相对WER降低分别为29.7%和18.2%,优于基线方法SSL。