DocumentCode
1784539
Title
A preliminary speech learning tool for improvement of African English accents
Author
Oyo, Benedict ; Kalema, Billy
Author_Institution
Tshwane Univ. of Technol., Pretoria, South Africa
fYear
2014
fDate
22-24 Sept. 2014
Firstpage
44
Lastpage
48
Abstract
Speech recognition systems emphasise: accent recognition, recognition system performance through calculation of word error rate (WER), pronunciation modelling, speech-based interactions (tone, pitch, volume, background noise, speaker´s gender and age, speaking speed and quality of recording equipment) and speech database solutions. However, research into the use of speech recognition systems for improvement accents is scarcely available. In this paper, we focus on development of an speech recognition system for recognizing African English accents and enabling the speakers improve their English accents. This is achieved by using a dual speech recognition engine: the first, a multiple accent recogniser receives African English speech input, classifies it and sends to the second recogniser that evaluates the speech against standard English pronunciations. Speech deviations from standard English pronunciations are captured and read by the system as a way of supporting the learner to improve his/her reading proficiency. Preliminary tests indicate that terminologies that are rarely used in ordinary conversations (e.g. enthusiasm, exuberant, vague, etc) are most poorly pronounced irrespective of the educational level of the reader.
Keywords
database management systems; speech recognition; African English accent improvement; African English speech input; WER; background noise; dual speech recognition engine; educational level; multiple accent recogniser; pitch; preliminary speech learning tool; pronunciation modelling; reading proficiency; recognition system performance; recording equipment; speaker age; speaker gender; speaking quality; speaking speed; speech database solutions; speech-based interactions; standard English pronunciations; tone; volume; word error rate; Acoustics; Africa; Dictionaries; Hidden Markov models; Speech; Speech recognition; Standards; African English; acoustic model; speaker clustering; speech recognition;
fLanguage
English
Publisher
ieee
Conference_Titel
Education Technologies and Computers (ICETC), 2014 The International Conference on
Conference_Location
Lodz
Print_ISBN
978-1-4799-6247-1
Type
conf
DOI
10.1109/ICETC.2014.6998900
Filename
6998900
Link To Document