Signal Combination for Language Identification

10/21/2019
by   Shengye Wang, et al.
0

Google's multilingual speech recognition system combines low-level acoustic signals with language-specific recognizer signals to better predict the language of an utterance. This paper presents our experience with different signal combination methods to improve overall language identification accuracy. We compare the performance of a lattice-based ensemble model and a deep neural network model to combine signals from recognizers with that of a baseline that only uses low-level acoustic signals. Experimental results show that the deep neural network model outperforms the lattice-based ensemble model, and it reduced the error rate from 5.5 relative reduction.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset