Multistream CNN for Robust Acoustic Modeling

05/21/2020
by   Kyu J. Han, et al.
0

This paper presents multistream CNN, a novel neural network architecture for robust acoustic modeling in speech recognition tasks. The proposed architecture accommodates diverse temporal resolutions in multiple streams to achieve robustness in acoustic modeling. For the diversity of temporal resolution in embedding processing, we consider dilation on TDNN-F, a variant of 1D-CNN. Each stream stacks narrower TDNN-F layers whose kernel has a unique, stream-specific dilation rate when processing input speech frames in parallel. Hence it can better represent acoustic events without the increase of model complexity. We validate the effectiveness of the proposed multistream CNN architecture by showing consistent improvement across various data sets. Trained with data augmentation methods, multistream CNN improves the WER of the test-other set in the LibriSpeech corpus by 12 production system for a contact center, it records a relative WER improvement of 11 customer channel recordings) to prove the superiority of the proposed model architecture in the wild. In terms of real-time factor (RTF), multistream CNN outperforms the normal TDNN-F by 15 production systems or applications.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset