A one pass-decoder based on polymorphic linguistic context assignment - Robotics Institute Carnegie Mellon University

A one pass-decoder based on polymorphic linguistic context assignment

Hagen Soltau, Florian Metze, Christian Fgen, and Alex Waibel
Workshop Paper, Carnegie Mellon University, IEEE Workshop on Automatic Speech Recognition and Understanding (ASRU '01), pp. 214 - 217, December, 2001

Abstract

In this study, we examine how fast decoding of conversational speech with large vocabularies profits from efficient use of linguistic information, i.e. language models and grammars. Based on a re-entrant single pronunciation prefix tree, we use the concept of linguistic context polymorphism to allow an early incorporation of language model information. This approach allows us to use all available language model information in a one-pass decoder, using the same engine to decode with statistical n-gram language models as well as context free grammars or re-scoring of lattices in an efficient way. We compare this approach to our previous decoder, which needed three passes to incorporate all available information. The results on a very large vocabulary task show that the search can be speeded up by almost a factor of three, without introducing additional search errors.

BibTeX

@workshop{Soltau-2001-8372,
author = {Hagen Soltau and Florian Metze and Christian Fgen and Alex Waibel},
title = {A one pass-decoder based on polymorphic linguistic context assignment},
booktitle = {Proceedings of IEEE Workshop on Automatic Speech Recognition and Understanding (ASRU '01)},
year = {2001},
month = {December},
pages = {214 - 217},
}