This paper describes extensions and improvements to IBM’s large vocabulary continuous speech recognition (LVCSR) system for transcription of broadcast news. The recognizer uses an additional 35 hours of training data over the one used in the 1996 Hub4 evaluation [?]. It includes a number of new features: optimal feature space for acoustic modeling (in training and/or testing), filler-word modeling, Bayesian Information Criterion (BIC) based segment clustering, an improved implementation of iterative MLLR and 4-gram language models. Results using the 1996 DARPA Hub4 evaluation data set are presented. 1
This paper describes the SPRACH system developed for the 1998 Hub-4E broadcast news evaluation. The ...
The CUHTK evaluation systsms typically make use of a multiple pass, multiple branch, framework. This...
In this paper we report on the LIMSI recognizer evaluated in the ARPA 1995 North American Business (...
This paper describes our efforts in extending a large vocabulary speech recognition system to handle...
While significant improvements have been made over the last 5 years in large vocabulary continuous s...
This paper describes some of the main problems and issues specific to the transcription of broadcast...
This paper describes the development of the cu-con system which participated in the 1996 ARPA Hub 4 ...
This paper describes the IBM approach to Broadcast News Transcription. Typical problems in the Broa...
ver the past decade or so, several advances have been made to the design of modern large-vocabulary ...
This paper describes the development of a connectionist-hidden Markov model (HMM) system for the 199...
In this work we investigate methods to extend the lexicon of a broadcast news (BN) speech recognitio...
In this paper we report recent developments on the meet-ing transcription task, a large vocabulary c...
This paper presents the 1997 BBN Byblos Large Vo-cabulary Speech Recognition (LVCSR) system. We give...
This paper describes research behind a Large-Vocabulary Continuous Speech Recognition (LVCSR) system...
Recent DARPA CSR evaluations have focused on the transcription of broadcast news from both televisio...
This paper describes the SPRACH system developed for the 1998 Hub-4E broadcast news evaluation. The ...
The CUHTK evaluation systsms typically make use of a multiple pass, multiple branch, framework. This...
In this paper we report on the LIMSI recognizer evaluated in the ARPA 1995 North American Business (...
This paper describes our efforts in extending a large vocabulary speech recognition system to handle...
While significant improvements have been made over the last 5 years in large vocabulary continuous s...
This paper describes some of the main problems and issues specific to the transcription of broadcast...
This paper describes the development of the cu-con system which participated in the 1996 ARPA Hub 4 ...
This paper describes the IBM approach to Broadcast News Transcription. Typical problems in the Broa...
ver the past decade or so, several advances have been made to the design of modern large-vocabulary ...
This paper describes the development of a connectionist-hidden Markov model (HMM) system for the 199...
In this work we investigate methods to extend the lexicon of a broadcast news (BN) speech recognitio...
In this paper we report recent developments on the meet-ing transcription task, a large vocabulary c...
This paper presents the 1997 BBN Byblos Large Vo-cabulary Speech Recognition (LVCSR) system. We give...
This paper describes research behind a Large-Vocabulary Continuous Speech Recognition (LVCSR) system...
Recent DARPA CSR evaluations have focused on the transcription of broadcast news from both televisio...
This paper describes the SPRACH system developed for the 1998 Hub-4E broadcast news evaluation. The ...
The CUHTK evaluation systsms typically make use of a multiple pass, multiple branch, framework. This...
In this paper we report on the LIMSI recognizer evaluated in the ARPA 1995 North American Business (...