Dual Application of Speech Enhancement for Automatic Speech Recognition
About
In this work, we exploit speech enhancement for improving a recurrent neural network transducer (RNN-T) based ASR system. We employ a dense convolutional recurrent network (DCRN) for complex spectral mapping based speech enhancement, and find it helpful for ASR in two ways: a data augmentation technique, and a preprocessing frontend. In using it for ASR data augmentation, we exploit a KL divergence based consistency loss that is computed between the ASR outputs of original and enhanced utterances. In using speech enhancement as an effective ASR frontend, we propose a three-step training scheme based on model pretraining and feature selection. We evaluate our proposed techniques on a challenging social media English video dataset, and achieve an average relative improvement of 11.2% with speech enhancement based data augmentation, 8.3% with enhancement based preprocessing, and 13.4% when combining both.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Respiratory sound classification | Dataset 1 Binary (test) | Accuracy76.45 | 10 | |
| Respiratory sound classification | Dataset 2 Noisy 3-Class (test) | Accuracy46.1 | 10 |