The RWTH ASR System for TED-LIUM Release 2: Improving Hybrid HMM with SpecAugment

04/02/2020
by   Wei Zhou, et al.
0

We present a complete training pipeline to build a state-of-the-art hybrid HMM-based ASR system on the 2nd release of the TED-LIUM corpus. Data augmentation using SpecAugment is successfully applied to improve performance on top of our best SAT model using i-vectors. By investigating the effect of different maskings, we achieve improvements from SpecAugment on hybrid HMM models without increasing model size and training time. A subsequent sMBR training is applied to fine-tune the final acoustic model, and both LSTM and Transformer language models are trained and evaluated. Our best system achieves a 5.6 27

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset