Wake Word Detection with Alignment-Free Lattice-Free MMI

05/17/2020
by   Yiming Wang, et al.
0

Always-on spoken language interfaces, e.g. personal digital assistants, rely on a wake word to start processing spoken input. We present novel methods to train a hybrid DNN/HMM wake word detection system from partially labeled training data, and to use it in on-line applications: (i) we remove the prerequisite of frame-level alignments in the LF-MMI training algorithm, permitting the use of un-transcribed training examples that are annotated only for the presence/absence of the wake word; (ii) we show that the classical keyword/filler model must be supplemented with an explicit non-speech (silence) model for good performance; (iii) we present an FST-based decoder to perform online detection. We evaluate our methods on two real data sets, showing 80 over the best previously published figures, and re-validate them on a third (large) data set.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/17/2023

Handling the Alignment for Wake Word Detection: A Comparison Between Alignment-Based, Alignment-Free and Hybrid Approaches

Wake word detection exists in most intelligent homes and portable device...
research
03/24/2020

Bootstrapping Weakly Supervised Segmentation-free Word Spotting through HMM-based Alignment

Recent work in word spotting in handwritten documents has yielded impres...
research
08/09/2020

Accurate Detection of Wake Word Start and End Using a CNN

Small footprint embedded devices require keyword spotters (KWS) with sma...
research
06/20/2023

Timestamped Embedding-Matching Acoustic-to-Word CTC ASR

In this work, we describe a novel method of training an embedding-matchi...
research
03/28/2022

Filler Word Detection and Classification: A Dataset and Benchmark

Filler words such as `uh' or `um' are sounds or words people use to sign...
research
10/11/2016

GMM-Free Flat Start Sequence-Discriminative DNN Training

Recently, attempts have been made to remove Gaussian mixture models (GMM...

Please sign up or login with your details

Forgot password? Click here to reset