Towards Reducing the Need for Speech Training Data To Build Spoken Language Understanding Systems

02/26/2022
by   Samuel Thomas, et al.
0

The lack of speech data annotated with labels required for spoken language understanding (SLU) is often a major hurdle in building end-to-end (E2E) systems that can directly process speech inputs. In contrast, large amounts of text data with suitable labels are usually available. In this paper, we propose a novel text representation and training methodology that allows E2E SLU systems to be effectively constructed using these text resources. With very limited amounts of additional speech, we show that these models can be further improved to perform at levels close to similar systems built on the full speech datasets. The efficacy of our proposed approach is demonstrated on both intent and entity tasks using three different SLU datasets. With text-only training, the proposed system achieves up to 90 speech training. With just an additional 10 significantly improve further to 97

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset