speech perception in noise mechanisms

Authors

saeid aarabi department of audiology, school of rehabilitation sciences, iran university of medical sciences, tehran, iran

farnoush jarollahi department of audiology, school of rehabilitation sciences, iran university of medical sciences, tehran, iran

sajed badfar department of audiology, school of rehabilitation, arak university of medical sciences, arak, iran

reza hosseinabadi department of audiology, school of rehablitation, tehran university of medical sciences, tehran, iran

abstract

background and aim: it will be discussed about five mechanisms in relation to speech in noise perception; including neural encoding and decoding, centrifugal pathways, pitch perception, asymmetric sampling in time and cognitive skills. these mechanisms are related to each other and each is important to recognize speech in noise. in this article, we have tried to rely on the latest studies to describe the mechanisms as mentioned. in the end, we will refer to word in noise training. methods: in this review study, the articles related to speech perception in noise published in google scholar, pubmed, scopus and springer database, were collected and investigated. keywords include speech in noise and related words. conclusion: it can be concluded that mentioned mechanisms have a considerable effect on speech in noise perception. it should be noticed that word in noise training cause these mechanisms to improve by covering some of them.

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Journal title:
auditory and vestibular research

جلد ۲۵، شماره ۴، صفحات ۲۲۱-۲۲۶

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