On-Demand Language Model Interpolation for Mobile Speech Input

Brandon Ballinger
Johan Schalkwyk
Interspeech (2010), pp. 1812-1815
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Abstract

Google offers several speech features on the Android mobile
operating system: search by voice, voice input to any text field, and an API for application developers. As a result, our speech recognition service must support a wide range of usage scenarios and speaking styles: relatively short search queries, addresses, business names, dictated SMS and e-mail messages, and a long tail of spoken input to any of the applications users may install. We present a method of on-demand language model interpolation in which contextual information about each utterance determines interpolation weights among a number of n-gram language models. On-demand interpolation results in an 11.2% relative reduction in WER compared to using a single language model to handle all traffic.

Research Areas