Publication | Open Access
Spoken Arabic dialect identification using phonotactic modeling
148
Citations
15
References
2009
Year
Unknown Venue
Arabic Dialect LinguisticsEngineeringSpeech CorpusArabic Morphological AnalysisMedia ArabicSpoken Language ProcessingArabic LanguagePhonologyCorpus LinguisticsSpeech RecognitionDialectologyArabicPhonotactic ModelingComputational LinguisticsPhoneticsVoice RecognitionArabic Dialect OrthographyLanguage StudiesArabic Syntactic AnalysisStandard LanguageModern Standard ArabicArabic Dialect Morphological AnalysisLanguage RecognitionLinguisticsSpeaker Recognition
The Arabic language is a collection of multiple variants, among which Modern Standard Arabic (MSA) has a special status as the formal written standard language of the media, culture and education across the Arab world. The other variants are informal spoken dialects that are the media of communication for daily life. Arabic dialects differ substantially from MSA and each other in terms of phonology, morphology, lexical choice and syntax. In this paper, we describe a system that automatically identifies the Arabic dialect (Gulf, Iraqi, Levantine, Egyptian and MSA) of a speaker given a sample of his/her speech. The phonotactic approach we use proves to be effective in identifying these dialects with considerable overall accuracy --- 81.60% using 30s test utterances.
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