Large vocabulary speech recognition applications can benefit from an efficient data structure for representing large numbers of acoustic hypotheses compactly. Word graphs or lattices generated by acoustic recognition engines are generally not compact and must be post-processed to keep lattice sizes small; however, algorithms designed for this task need to reduce the size of the lattice without either eliminating hypotheses or distorting their relative acoustic probabilities. In this paper, we will discuss the relevant criteria for measuring graph size, compare the advantages of two different structures for graphs, and introduce a new data structure and compression algorithm which give additional graph compression and maintain exact hypothes...
We present the first application of the head-driven statistical parsing model of Collins (1999) as a...
We present the first application of the head-driven statistical parsing model of Collins (1999) as a...
We propose a deep graph approach to address the task of speech emotion recognition. A compact, effic...
Large vocabulary continuous speech recognition can benet from an ecient data structure for represent...
Large vocabulary continuous speech recognition can benefit from an efficient data structure for repr...
During the last few years, word graphs have been gain-ing increasing interest within the speech comm...
The research presented here focuses on implementation and efficiency issues associated with the use ...
During the last few years, word graphs have been gaining increasing interest within the speech commu...
A large vocabulary isolated word recognition system based on the hypothesize-and-test paradigm is de...
We introduce a method for expressing word lattices within a dynamic graphical model. We describe a v...
Introduction In response to an input sentence, a typical recognition system (be it speech or handwr...
A lot of work remains to be done in the domain of a better integration of speech recognition and lan...
This paper presents some confidence measures for large vocabulary speech recognition which are based...
This paper describes two methods for constructing word graphs for large vocabulary continuous speech...
A lot of work has been devoted to the estimation of confidence measures for speech recognizers. In t...
We present the first application of the head-driven statistical parsing model of Collins (1999) as a...
We present the first application of the head-driven statistical parsing model of Collins (1999) as a...
We propose a deep graph approach to address the task of speech emotion recognition. A compact, effic...
Large vocabulary continuous speech recognition can benet from an ecient data structure for represent...
Large vocabulary continuous speech recognition can benefit from an efficient data structure for repr...
During the last few years, word graphs have been gain-ing increasing interest within the speech comm...
The research presented here focuses on implementation and efficiency issues associated with the use ...
During the last few years, word graphs have been gaining increasing interest within the speech commu...
A large vocabulary isolated word recognition system based on the hypothesize-and-test paradigm is de...
We introduce a method for expressing word lattices within a dynamic graphical model. We describe a v...
Introduction In response to an input sentence, a typical recognition system (be it speech or handwr...
A lot of work remains to be done in the domain of a better integration of speech recognition and lan...
This paper presents some confidence measures for large vocabulary speech recognition which are based...
This paper describes two methods for constructing word graphs for large vocabulary continuous speech...
A lot of work has been devoted to the estimation of confidence measures for speech recognizers. In t...
We present the first application of the head-driven statistical parsing model of Collins (1999) as a...
We present the first application of the head-driven statistical parsing model of Collins (1999) as a...
We propose a deep graph approach to address the task of speech emotion recognition. A compact, effic...