Automatic speech recognition (ASR) has shown rapid advances in recent years but still degrades significantly in far-field and noisy environments. The recent development of self-supervised learning (SSL) technology can improve the ASR performance by pre-training the model with additional unlabeled speech and the SSL pre-trained model has achieved the state-of-the-art result on several speech benchmarks. Nevertheless, most of the previous SSL methods ignore the influence of the background noise or reverberation, which is crucial to deploying ASR systems in real-world speech applications. This study addresses the robust ASR by introducing a multi-variant consistency (MVC) based SSL method that adapts to different environments. The MVC-SSL is a robust SSL pre-training method designed for noisy and distant-talking speech in real-world applications. Compared to the previous SSL method, the MVC-SSL can calculate the contrastive loss among audios from different acoustic conditions or channels and can learn invariant representations with the change in the environment or the recording equipment. We also explore different SSL training pipelines to balance the noisy distant-talking speech and extra high resource clean speech. We evaluate the proposed method on the commercially-motivated dataset, CHiME-4, and the meeting dataset, AMI. With the help of the MVC-SSL and appropriate training pipeline, we can achieve up to 30% relative word error rate reductions over the baseline wav2vec2.0, one of the most successful SSL methods for ASR.
翻译:近些年来,自动语音识别(ASR)显示出了快速的进步,但在远处和噪音环境中,自动语音识别(ASR)仍然显著下降。最近开发的自我监督学习(SSL)技术可以通过对模型进行附加无标签演讲的预培训来提高ASR的性能,而SSL预培训模式在几个演讲基准上已经达到了最先进的结果。然而,以往的SSL方法大多忽视了背景噪音或反响的影响,这对于在现实世界的语音应用中部署ASR系统至关重要。本研究通过引入基于多变量的一致性(MVC)的基于SSL(SSL)技术,可以改善ASR的性能。MSC-SSL是一种强大的SSL预培训方法,目的是在现实世界应用中进行吵闹和远语性演讲。与以前的SSL方法相比,MC-SSL方法可以计算不同声调或频道的音频差异性损失,并且可以随着环境的变化或记录设备的变化来学习。我们还探索不同的SLSL培训中以多种差异性一致性(MRC) 最成功的方法,我们还可以评估SSR(SSR) 的相对性语言培训管道中的一种途径,从而平衡了80 远程语音定位和高压式语音定位。我们提出的数据分析。