To achieve a robust system the variation seen for different speaking styles must be handled. An investigation of standard automatic speech recognition techniques for different speaking styles showed that lexical modelling using general-purpose variants gave small improvements, but the errors differed compared with using only one canonical pronunciation per word. Modelling the variation using the acoustic models (using context dependency and/or speaker dependent adaptation) gave a significant improvement, but the resulting performance for non-native and spontaneous speech was still far from read speech. In this dissertation a complete data-driven approach to rule-based lexicon adaptation is presented, where the effect of the acoustic models...
INTRODUCTION Pronunciations in spontaneous, conversational speech tend to be much more variable tha...
In this paper we present an experiment aimed at improving automatic phonetic transcription of Dutch ...
As automatic speech recognition becomes more heavily used in applications such as computer enhanced ...
While many studies have been focused on pronunciation modeling for improving word recognition, limit...
One of the challenges in automatic speech recognition is how to handle pronunciation variation. The ...
Due to pronunciation variation, many insertions and deletions of phones occur in spontaneous speech....
The large pronunciation variability of words in conversational speech is one of the major causes of ...
In this paper we describe a method for improving the performance of a continuous speech recognizer b...
This article focuses on modeling pronunciation variation in two different ways: data-derived and kno...
The general goal of this thesis is to improve the performance of state-of-the-art statistical automa...
A method for data-driven lexical adaptation on the basis of a limited number of acoustic training to...
This paper focuses on modeling pronunciation variation in two different ways: data-derived and knowl...
Thesis (Master's)--University of Washington, 2014It has been consistently shown that Automatic Speec...
In this paper we present an approach to modelling pronuncia-tion variation, particularly for non-nat...
This paper focuses on modeling pronunciation variation in two di�erent ways: data-derived and knowle...
INTRODUCTION Pronunciations in spontaneous, conversational speech tend to be much more variable tha...
In this paper we present an experiment aimed at improving automatic phonetic transcription of Dutch ...
As automatic speech recognition becomes more heavily used in applications such as computer enhanced ...
While many studies have been focused on pronunciation modeling for improving word recognition, limit...
One of the challenges in automatic speech recognition is how to handle pronunciation variation. The ...
Due to pronunciation variation, many insertions and deletions of phones occur in spontaneous speech....
The large pronunciation variability of words in conversational speech is one of the major causes of ...
In this paper we describe a method for improving the performance of a continuous speech recognizer b...
This article focuses on modeling pronunciation variation in two different ways: data-derived and kno...
The general goal of this thesis is to improve the performance of state-of-the-art statistical automa...
A method for data-driven lexical adaptation on the basis of a limited number of acoustic training to...
This paper focuses on modeling pronunciation variation in two different ways: data-derived and knowl...
Thesis (Master's)--University of Washington, 2014It has been consistently shown that Automatic Speec...
In this paper we present an approach to modelling pronuncia-tion variation, particularly for non-nat...
This paper focuses on modeling pronunciation variation in two di�erent ways: data-derived and knowle...
INTRODUCTION Pronunciations in spontaneous, conversational speech tend to be much more variable tha...
In this paper we present an experiment aimed at improving automatic phonetic transcription of Dutch ...
As automatic speech recognition becomes more heavily used in applications such as computer enhanced ...