SPARTA: Speaker Profiling for ARabic TAlk

This paper proposes a novel approach to an automatic estimation of three speaker traits from Arabic speech: gender, emotion, and dialect. After showing promising results on different text classification tasks, the multi-task learning (MTL) approach is used in this paper for Arabic speech classificat...

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Main Authors: Wael Farhan, Muhy Eddin Za'Ter, Qusai Abu Obaidah, Hisham Al Bataineh, Zyad Sober, Hussein Al Natsheh
Format: Article
Language:English
Published: FRUCT 2021-01-01
Series:Proceedings of the XXth Conference of Open Innovations Association FRUCT
Subjects:
Online Access:https://www.fruct.org/publications/fruct28/files/Far.pdf
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spelling doaj-83418697d1d4489cbd64f9e2530093972021-02-12T09:31:58ZengFRUCTProceedings of the XXth Conference of Open Innovations Association FRUCT2305-72542343-07372021-01-0128110311010.23919/FRUCT50888.2021.9347615SPARTA: Speaker Profiling for ARabic TAlkWael Farhan0Muhy Eddin Za'Ter1Qusai Abu Obaidah2Hisham Al Bataineh3Zyad Sober4Hussein Al Natsheh5Mawdoo3 Ltd, JordanMawdoo3 Ltd, JordanMawdoo3 Ltd, JordanMawdoo3 Ltd, JordanMawdoo3 Ltd, JordanMawdoo3 Ltd, JordanThis paper proposes a novel approach to an automatic estimation of three speaker traits from Arabic speech: gender, emotion, and dialect. After showing promising results on different text classification tasks, the multi-task learning (MTL) approach is used in this paper for Arabic speech classification tasks. The dataset was assembled from six publicly available datasets. First, The datasets were edited and thoroughly divided into train, development, and test sets (open to the public), and a benchmark was set for each task and dataset throughout the paper. Then, three different networks were explored: Long Short Term Memory (LSTM), Convolutional Neural Network (CNN), and Fully-Connected Neural Network (FCNN) on five different types of features: two raw features (MFCC and MEL) and three pre-trained vectors (i-vectors, d-vectors, and x-vectors). LSTM and CNN networks were implemented using raw features: MFCC and MEL, wher FCNN was explored on the pre-trained vectors while varying the hyper-parameters of these networks to obtain the best results for each dataset and task. MTL was evaluated against the single task learning (STL) approach for the three tasks and six datasets, in which the MTL and pre-trained vectors almost constantly outperformed STL. All the data and pre-trained models used in this paper are available and can be acquired by the public.https://www.fruct.org/publications/fruct28/files/Far.pdfspeech recognitiondialect detectiongender detectionarabic speechmulti-task learningnatural language processing
collection DOAJ
language English
format Article
sources DOAJ
author Wael Farhan
Muhy Eddin Za'Ter
Qusai Abu Obaidah
Hisham Al Bataineh
Zyad Sober
Hussein Al Natsheh
spellingShingle Wael Farhan
Muhy Eddin Za'Ter
Qusai Abu Obaidah
Hisham Al Bataineh
Zyad Sober
Hussein Al Natsheh
SPARTA: Speaker Profiling for ARabic TAlk
Proceedings of the XXth Conference of Open Innovations Association FRUCT
speech recognition
dialect detection
gender detection
arabic speech
multi-task learning
natural language processing
author_facet Wael Farhan
Muhy Eddin Za'Ter
Qusai Abu Obaidah
Hisham Al Bataineh
Zyad Sober
Hussein Al Natsheh
author_sort Wael Farhan
title SPARTA: Speaker Profiling for ARabic TAlk
title_short SPARTA: Speaker Profiling for ARabic TAlk
title_full SPARTA: Speaker Profiling for ARabic TAlk
title_fullStr SPARTA: Speaker Profiling for ARabic TAlk
title_full_unstemmed SPARTA: Speaker Profiling for ARabic TAlk
title_sort sparta: speaker profiling for arabic talk
publisher FRUCT
series Proceedings of the XXth Conference of Open Innovations Association FRUCT
issn 2305-7254
2343-0737
publishDate 2021-01-01
description This paper proposes a novel approach to an automatic estimation of three speaker traits from Arabic speech: gender, emotion, and dialect. After showing promising results on different text classification tasks, the multi-task learning (MTL) approach is used in this paper for Arabic speech classification tasks. The dataset was assembled from six publicly available datasets. First, The datasets were edited and thoroughly divided into train, development, and test sets (open to the public), and a benchmark was set for each task and dataset throughout the paper. Then, three different networks were explored: Long Short Term Memory (LSTM), Convolutional Neural Network (CNN), and Fully-Connected Neural Network (FCNN) on five different types of features: two raw features (MFCC and MEL) and three pre-trained vectors (i-vectors, d-vectors, and x-vectors). LSTM and CNN networks were implemented using raw features: MFCC and MEL, wher FCNN was explored on the pre-trained vectors while varying the hyper-parameters of these networks to obtain the best results for each dataset and task. MTL was evaluated against the single task learning (STL) approach for the three tasks and six datasets, in which the MTL and pre-trained vectors almost constantly outperformed STL. All the data and pre-trained models used in this paper are available and can be acquired by the public.
topic speech recognition
dialect detection
gender detection
arabic speech
multi-task learning
natural language processing
url https://www.fruct.org/publications/fruct28/files/Far.pdf
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AT qusaiabuobaidah spartaspeakerprofilingforarabictalk
AT hishamalbataineh spartaspeakerprofilingforarabictalk
AT zyadsober spartaspeakerprofilingforarabictalk
AT husseinalnatsheh spartaspeakerprofilingforarabictalk
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