Title
Prediction of vowel identification for cochlear implant using a computational model.
Abstract
A computational biophysical auditory nerve fiber model along with mathematical algorithms are presented that predict vowel identification for cochlear implant (CI) users based on the predicted peripheral neural representations of speech information (i.e., neurogram). Our model simulates the discharge patterns of electrically-stimulated auditory nerve fibers along the length of the cochlea and quantifies the similarity between the neurograms for different speech signals. The effects of background noise (+15, +10, +5, 0, and 5dB SNR) and stimulation rate (900, 1200, and 1800pps/ch) on vowel identification were evaluated and compared to CI subject data to demonstrate the performance of our model. Results from both the computational modeling and clinical test showed that vowel identification performance decreased as background noise increased while vowel identification was not significantly influenced by the stimulation rate. The proposed method, both objective and automated, can be used for a wide range of stimulus conditions, signal processing, and different biological conditions in the implanted ears.
Year
DOI
Venue
2016
10.1016/j.specom.2016.10.005
Speech Communication
Keywords
Field
DocType
Cochlear implant,Computational modeling, Neurogram,Vowel identification
Signal processing,Background noise,Nerve fiber,Computer science,Speech recognition,Cochlear implant,Cochlea,Vowel,Stimulus (physiology)
Journal
Volume
Issue
ISSN
85
C
0167-6393
Citations 
PageRank 
References 
0
0.34
0
Authors
6
Name
Order
Citations
PageRank
Hyejin Yang111.03
Jongho Won240.78
Soojin Kang311.38
Il Joon Moon400.34
Sung Hwa Hong532.46
Jihwan Woo621.06