What is the neural representation of a speech code as it evolves in time? How do listeners integrate temporally distributed phonemic information across hundreds of milliseconds, even backwards in time, into coherent representations of syllables and words? What sorts of brain mechanisms encode the correct temporal order, despite such backwards effects, during speech perception? How does the brain extract rate-invariant properties of variable-rate speech? This article describes an emerging neural model that suggests answers to these questions, while quantitatively simulating challenging data about audition, speech and word recognition. This model includes bottom-up filtering, horizontal competitive, and top-down attentional interactions betwe...
In speech, listeners extract continuously-varying spectrotemporal cues from the acoustic signal to p...
Comprehending speech involves the rapid and optimally efficient mapping from sound to meaning. Influ...
Speech segmentation requires flexible mechanisms to remain robust to features such as speech rate an...
How do listeners integrate temporally distributed phonemic information into coherent representations...
What is the neural representation of a speech code as it evolves in real time? A neural model of thi...
In speech processing, perceptually relevant temporal cues can require resolution of spectral transit...
What is the neural representation of a speech code as it evolves in real time? A neural model of thi...
How does the brain extract invariant properties of variable-rate speech? A neural model, called PHON...
The premise of this study is that current models of speech perception, which are driven by acoustic ...
Contains fulltext : 195808.pdf (publisher's version ) (Closed access)Low-frequency...
The perception of CV syllables exhibits a trading relationship between voice onset time (VOT) of a c...
How does the brain extract invariant properties of variable-rate speech? A neural model, called PHON...
Fluctuations in the temporal durations of sensory signals constitute a major source of variability w...
Fluctuations in the temporal durations of sensory signals constitute a major source of variability w...
Physical variability of speech combined with its perceptual constancy make speech recognition a chal...
In speech, listeners extract continuously-varying spectrotemporal cues from the acoustic signal to p...
Comprehending speech involves the rapid and optimally efficient mapping from sound to meaning. Influ...
Speech segmentation requires flexible mechanisms to remain robust to features such as speech rate an...
How do listeners integrate temporally distributed phonemic information into coherent representations...
What is the neural representation of a speech code as it evolves in real time? A neural model of thi...
In speech processing, perceptually relevant temporal cues can require resolution of spectral transit...
What is the neural representation of a speech code as it evolves in real time? A neural model of thi...
How does the brain extract invariant properties of variable-rate speech? A neural model, called PHON...
The premise of this study is that current models of speech perception, which are driven by acoustic ...
Contains fulltext : 195808.pdf (publisher's version ) (Closed access)Low-frequency...
The perception of CV syllables exhibits a trading relationship between voice onset time (VOT) of a c...
How does the brain extract invariant properties of variable-rate speech? A neural model, called PHON...
Fluctuations in the temporal durations of sensory signals constitute a major source of variability w...
Fluctuations in the temporal durations of sensory signals constitute a major source of variability w...
Physical variability of speech combined with its perceptual constancy make speech recognition a chal...
In speech, listeners extract continuously-varying spectrotemporal cues from the acoustic signal to p...
Comprehending speech involves the rapid and optimally efficient mapping from sound to meaning. Influ...
Speech segmentation requires flexible mechanisms to remain robust to features such as speech rate an...