Abstract

A mispronunciation of Arabic short vowels can change the meaning of a complete sentence. For this reason, both the students and teachers of Classical Arabic (CA) are required extra practice for correcting students’ pronunciation of Arabic short vowels. That makes the teaching and learning task cumbersome for both parties. An intelligent process of students’ evaluation can make learning and teaching easier for both students and teachers. Given that online learning has become a norm these days, modern learning requires assessment by virtual teachers. In our case, the task is about recognizing the exact pronunciation of Arabic alphabets according to the standards. A major challenge in the recognition of precise pronunciation of Arabic alphabets is the correct identification of a large number of short vowels, which cannot be dealt with using traditional statistical audio processing techniques and machine learning models. Therefore, we developed a model that classifies Arabic short vowels using Deep Neural Networks (DNN). The model is constructed from scratch by: (i) collecting a new audio dataset, (ii) developing a neural network architecture, and (iii) optimizing and fine-tuning the developed model through several iterations to achieve high classification accuracy. Given a set of unseen audio samples of uttered short vowels, our proposed model has reached the testing accuracy of 95.77%. We can say that our results can be used by the experts and researchers for building better intelligent learning support systems in Arabic speech processing.

Highlights

  • Speech processing technology has received considerable attention recently due to a variety of applications in the areas of automated speech recognition, information retrieval, and assisted communication

  • The improved model can be integrated with existing applications to increase the accuracy of Arabic short vowels classification in the learning process

  • Using data augmentation techniques and hyperparameters tuning, we achieved a significant boost in our testing accuracy of 95.77% from a baseline model

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Summary

Introduction

Speech processing technology has received considerable attention recently due to a variety of applications in the areas of automated speech recognition, information retrieval, and assisted communication. A lot of diverse research work has been done on speech processing for different human languages globally. In recent years, deep learning has increasingly enabled autonomous speech processing including speech recognition and synthesis. The Arabic language has witnessed less research work in this domain due to its unique challenges. MSA is a modified version of CA currently used in everyday communication in Arabic speaking countries. Classical Arabic is the language of the Holy Quran [2] and is still used largely in religious context and studies despite being more than 1400 years old

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