A Teacher-Student Learning Approach for Unsupervised Domain Adaptation of Sequence-Trained ASR Models

Vimal Manohar, Pegah Ghahremani, Daniel Povey, S. Khudanpur
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引用次数: 44

Abstract

Teacher-student (T-S) learning is a transfer learning approach, where a teacher network is used to “teach” a student network to make the same predictions as the teacher. Originally formulated for model compression, this approach has also been used for domain adaptation, and is particularly effective when parallel data is available in source and target domains. The standard approach uses a frame-level objective of minimizing the KL divergence between the frame-level posteriors of the teacher and student networks. However, for sequence-trained models for speech recognition, it is more appropriate to train the student to mimic the sequence-level posterior of the teacher network. In this work, we compare this sequence-level KL divergence objective with another semi-supervised sequence-training method, namely the lattice-free MMI, for unsupervised domain adaptation. We investigate the approaches in multiple scenarios including adapting from clean to noisy speech, bandwidth mismatch and channel mismatch.
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序列训练ASR模型无监督域自适应的师生学习方法
师生(T-S)学习是一种迁移学习方法,其中教师网络被用来“教”学生网络做出与教师相同的预测。这种方法最初是为模型压缩而制定的,也用于领域自适应,当源和目标领域中都有并行数据时,这种方法特别有效。标准方法使用框架级目标来最小化教师和学生网络的框架级后置之间的KL分歧。然而,对于语音识别的序列训练模型,更适合训练学生模仿教师网络的序列级后验。在这项工作中,我们将这种序列级KL散度目标与另一种用于无监督域自适应的半监督序列训练方法(即无格MMI)进行了比较。我们研究了多种情况下的方法,包括从干净的语音到有噪声的语音,带宽不匹配和信道不匹配。
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Sequence Teacher-Student Training of Acoustic Models for Automatic Free Speaking Language Assessment Leveraging Sequence-to-Sequence Speech Synthesis for Enhancing Acoustic-to-Word Speech Recognition Dynamic Extension of ASR Lexicon Using Wikipedia Data Detection and Calibration of Whisper for Speaker Recognition Out-of-Domain Slot Value Detection for Spoken Dialogue Systems with Context Information
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