We have recently developed a new model of human speech recognition, based on automatic speech recognition techniques [1]. The present paper has two goals. First, we show that the new model performs well in the recognition of lexically ambiguous input. These demonstrations suggest that the model is able to operate in the same optimal way as human listeners. Second, we discuss how to relate the behaviour of a recogniser, designed to discover the optimum path through a word lattice, to data from human listening experiments. We argue that this requires a metric that combines both path-based and word-based measures of recognition performance. The combined metric varies continuously as the input speech signal unfolds over time
In this paper, we present an automatic speech recognition (ASR) system based on the combination of a...
Many computational models of speech recognition assume that the set of target words is already given...
Contains fulltext : 75081.pdf (publisher's version ) (Open Access)This letter eval...
We have recently developed a new model of human speech recognition, based on automatic speech recogn...
We have recently developed a new model of human speech recognition, based on automatic speech recogn...
We have recently developed a new model of human speech recognition, based on automatic speech recog...
In this paper, we present a novel computational model of human speech recognition – called SpeM – ba...
In this paper, we present a novel computational model of human speech recognition -- called SpeM -- ...
Although researchers studying human speech recognition (HSR) and automatic speech recognition (ASR) ...
In everyday life, speech is all around us, on the radio, television, and in human-human interaction....
Although researchers studying human speech recognition (HSR) and automatic speech recognition (ASR) ...
Humans are able to recognise a word before its acoustic realisation is complete. This in contrast to...
Humans are able to recognise a word before its acoustic realisation is complete. This in contrast to...
Automatic and Human Speech Recognition are modelled as probabilistic pattern recognition processes, ...
The demand of intelligent machines that may recognize the spoken speech and respond in a natural vo...
In this paper, we present an automatic speech recognition (ASR) system based on the combination of a...
Many computational models of speech recognition assume that the set of target words is already given...
Contains fulltext : 75081.pdf (publisher's version ) (Open Access)This letter eval...
We have recently developed a new model of human speech recognition, based on automatic speech recogn...
We have recently developed a new model of human speech recognition, based on automatic speech recogn...
We have recently developed a new model of human speech recognition, based on automatic speech recog...
In this paper, we present a novel computational model of human speech recognition – called SpeM – ba...
In this paper, we present a novel computational model of human speech recognition -- called SpeM -- ...
Although researchers studying human speech recognition (HSR) and automatic speech recognition (ASR) ...
In everyday life, speech is all around us, on the radio, television, and in human-human interaction....
Although researchers studying human speech recognition (HSR) and automatic speech recognition (ASR) ...
Humans are able to recognise a word before its acoustic realisation is complete. This in contrast to...
Humans are able to recognise a word before its acoustic realisation is complete. This in contrast to...
Automatic and Human Speech Recognition are modelled as probabilistic pattern recognition processes, ...
The demand of intelligent machines that may recognize the spoken speech and respond in a natural vo...
In this paper, we present an automatic speech recognition (ASR) system based on the combination of a...
Many computational models of speech recognition assume that the set of target words is already given...
Contains fulltext : 75081.pdf (publisher's version ) (Open Access)This letter eval...