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59306

Spoken Arabic Dialect Identification Using Motif Discovery

Article

Last updated: 24 Dec 2024

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Abstract

In traditional Dialect Identification (DID) approaches, regardless of the level and type of features used for identification,
they use either predefined references such as phones, phonemes, or even acoustic sounds that characterize a language/dialect, or involve some sort of transcription of the input data. The transcription may be manual or automatic using tools such as ASRs,Tokenizers, or Phone Recognizers. In this paper, we introduce a new approach based on analyzing the speech signal directly and extracting the features that characterize the dialect without any predefined references and without any sort of transcription. The main idea is that we find the repeated sequences (motifs) of the dialect by treating the speech signal as a times series, so we can apply motif discovery techniques to extract the repeated sequences directly from the speech signal. For motif extraction, we
adopted an extremely fast parameter-free Self-Join motif discovery algorithm called Scalable Time series Ordered-search Matrix Profile (STOMP). We implemented the new approach in two stages; in the first we built a base line system in which we extracted 12 Mel Frequency Cepstral Coefficients (MFCC) from each motif, in the second stage we built an improved system using 39 coefficients by adding 13 Delta coefficients, 13 Delta-Delta coefficients, and 1 Log Energy coefficient. In both systems, we used Gaussian Mixture Model-Universal Background Model (GMM-UBM) as a classifier. We applied our new approach on three
different motif lengths 500ms, 1000ms, and 1500ms using 1gmm component up to 2048gmm components. We downloaded the data set from Qatar-Computing-Research- Institute domain. We carried out our experiments on different Arabic dialects: the Egyptian (EGY), Gulf (GLF), Levantine (LEV), and North African (NOR).The base line results were very competitive with the traditional, more sophisticated approaches, while the improved system showed very good result. The improvement was so significant that we can consider the new approach as competitive, simple, and dialect-independent approach.

DOI

10.21608/ejle.2018.59306

Keywords

motif discovery, dialect identification, language identification, GMM-UBM, time series

Authors

First Name

Mohsen

Last Name

Moftah

MiddleName

-

Affiliation

Electronics and Communications Engineering Department, Faculty of Engineering, Ain Shams University

Email

mohsen.moftah@barmagyat.com

City

Cairo, Egypt

Orcid

-

First Name

Mohamed

Last Name

Fakhre

MiddleName

-

Affiliation

The Arab Academy for Science and Technology (Cairo, Egypt)

Email

waleedf@aast.edu

City

Cairo, Egypt

Orcid

-

First Name

Salwa

Last Name

El-Ramly

MiddleName

-

Affiliation

Electronics and Communications Engineering Department, Faculty of Engineering, Ain Shams University

Email

salwahelramly@gmail.com

City

Cairo, Egypt

Orcid

0000-0002-1571-6517

Volume

5

Article Issue

1

Related Issue

9001

Issue Date

2018-04-01

Receive Date

2017-11-15

Publish Date

2018-04-01

Page Start

25

Page End

36

Print ISSN

2356-8208

Online ISSN

2356-8216

Link

https://ejle.journals.ekb.eg/article_59306.html

Detail API

https://ejle.journals.ekb.eg/service?article_code=59306

Order

3

Type

Original Article

Type Code

1,039

Publication Type

Journal

Publication Title

The Egyptian Journal of Language Engineering

Publication Link

https://ejle.journals.ekb.eg/

MainTitle

Spoken Arabic Dialect Identification Using Motif Discovery

Details

Type

Article

Created At

22 Jan 2023