Automatic recognition of oral vowels in tone language: Experiments with fuzzy logic and neural network models.

11(1): pages 1467-1480 ·

Gardado en:
Detalles Bibliográficos
Main Authors: Akanbi, Lukman, Odejobi, Odetunji A
Formato: Revista
Idioma:inglés
Publicado: Elsevier 2023
Subjects:
Acceso en liña:https://ir.oauife.edu.ng/123456789/5546
Tags: Engadir etiqueta
Sen Etiquetas, Sexa o primeiro en etiquetar este rexistro!
_version_ 1810764571049197568
author Akanbi, Lukman
Odejobi, Odetunji A
author_facet Akanbi, Lukman
Odejobi, Odetunji A
author_sort Akanbi, Lukman
collection DSpace
description 11(1): pages 1467-1480 ·
format Journal
id oai:ir.oauife.edu.ng:123456789-5546
institution My University
language English
publishDate 2023
publisher Elsevier
record_format dspace
spelling oai:ir.oauife.edu.ng:123456789-55462023-05-13T17:56:25Z Automatic recognition of oral vowels in tone language: Experiments with fuzzy logic and neural network models. Akanbi, Lukman Odejobi, Odetunji A oral vowels in tone language fuzzy logic neural network models 11(1): pages 1467-1480 · Automatic recognition of tone language speech is a complex problem in that it involves two parallel recognition tasks. A recognition system to accomplish this task must be able to simultaneously recognise tone and phone Components in the acoustic signal. The acoustic cue for the tones is the fundamental frequency (F0) while the first and second formant (F1 and F2) frequencies are the acoustic cues for the phones. In this study, we experiment with two soft-computing techniques, namely: artificial neural network (ANN) and fuzzy logic (FL) in the recognition of oral vowels in tone language. The standard Yoruba (SY) language is used for our case study.The ANN and FL speech recognition systems were developed using MatLab. The result showed that the ANN based model performed better on the training data while the FL based model performed better on the test set. This implies that the ANN system was able to interpolate or approximate the data more accurately whereas the FL system is better at extrapolating from the data. In addition, it was observed that the ANN system required larger amount of data for it is development whereas the FL system development requires some expert's knowledge. In conclusion, the FL based system seems to be the better approach for developing practical automatic speech recognition (ASR) system for languages such as SY where the language resources are limited. 2023-05-13T17:56:25Z 2023-05-13T17:56:25Z 2011-01 Journal Akanbi.L, Odejobi O.A,(2011)Automatic recognition of oral vowels in tone language: Experiments with fuzzy logic and neural network models DOI: 10.1016/j.asoc.2010.04.018 https://ir.oauife.edu.ng/123456789/5546 en text/plain Elsevier
spellingShingle oral vowels
in tone language
fuzzy logic
neural
network models
Akanbi, Lukman
Odejobi, Odetunji A
Automatic recognition of oral vowels in tone language: Experiments with fuzzy logic and neural network models.
title Automatic recognition of oral vowels in tone language: Experiments with fuzzy logic and neural network models.
title_full Automatic recognition of oral vowels in tone language: Experiments with fuzzy logic and neural network models.
title_fullStr Automatic recognition of oral vowels in tone language: Experiments with fuzzy logic and neural network models.
title_full_unstemmed Automatic recognition of oral vowels in tone language: Experiments with fuzzy logic and neural network models.
title_short Automatic recognition of oral vowels in tone language: Experiments with fuzzy logic and neural network models.
title_sort automatic recognition of oral vowels in tone language experiments with fuzzy logic and neural network models
topic oral vowels
in tone language
fuzzy logic
neural
network models
url https://ir.oauife.edu.ng/123456789/5546
work_keys_str_mv AT akanbilukman automaticrecognitionoforalvowelsintonelanguageexperimentswithfuzzylogicandneuralnetworkmodels
AT odejobiodetunjia automaticrecognitionoforalvowelsintonelanguageexperimentswithfuzzylogicandneuralnetworkmodels