Literature DB >> 11141011

Modeling phoneme and open-set word recognition by cochlear implant users: a preliminary report.

T A Meyer1, S Frisch, M A Svirsky, D B Pisoni.   

Abstract

On the basis of the good predictions for phonemes correct, we conclude that closed-set feature identification may successfully predict phoneme identification in an open-set word recognition task. For word recognition, however, the PCM model underpredicted observed performance, and the addition of a mental lexicon (ie, the SPAMR model) was needed for a good match to data averaged across 7 adults with CIs. The predictions for words correct improved with the addition of a lexicon, providing support for the hypothesis that lexical information is used in open-set spoken word recognition by CI users. The perception of words more complex than CNCs is also likely to require lexical knowledge (Frisch et al, this supplement, pp 60-62) In the future, we will use the performance off individual CI users on psychophysical tasks to generate predicted vowel and consonant confusion matrices to be used to predict open-set spoken word recognition.

Mesh:

Year:  2000        PMID: 11141011      PMCID: PMC3429936          DOI: 10.1177/0003489400109s1229

Source DB:  PubMed          Journal:  Ann Otol Rhinol Laryngol Suppl        ISSN: 0096-8056


  3 in total

1.  Revised CNC lists for auditory tests.

Authors:  G E PETERSON; I LEHISTE
Journal:  J Speech Hear Disord       Date:  1962-02

2.  Evaluation of a new spectral peak coding strategy for the Nucleus 22 Channel Cochlear Implant System.

Authors:  M W Skinner; G M Clark; L A Whitford; P M Seligman; S J Staller; D B Shipp; J K Shallop; C Everingham; C M Menapace; P L Arndt
Journal:  Am J Otol       Date:  1994-11

3.  Effect of frequency boundary assignment on speech recognition with the speak speech-coding strategy.

Authors:  M W Skinner; L K Holden; T A Holden
Journal:  Ann Otol Rhinol Laryngol Suppl       Date:  1995-09
  3 in total

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