Deep Acoustic Modelling for Quranic Recitation – Current Solutions and Future Directions

Muhammad Aleem Shakeel, Hasan Ali Khattak, Numan Khurshid
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Abstract

The Holy Quran has the utmost importance for the Muslim community, and to get a full reward, the Quran should be read according to the rules mentioned. In the past few years, this field has gained a lot of importance in the eyes of researchers who aim to automate the Quranic reading and understanding process with the help of Machine Learning and Deep Learning, knowing it has a lot of challenges. To date, there are a lot of research categories explored. However, still, there lacks a few holistic, including one detailed survey of all the categories and methodologies used to solve problems. We focused the paper on being a one-stop-shop for the people interested so they could find (i) all related information and (ii) future gaps in research. This paper provides a detailed survey on Deep Modeling for Quranic Recitation to address these challenges. We discussed all possible categories of speech analysis, including the most advanced feature extraction techniques, mispronunciation detection using Tajweed rules, Reciters and speech dialect classification, and implementation of Automatic Speech Recognition (ASR) on Quranic Recitations. We also discussed research challenges in this domain and identified possible future gaps.
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古兰经诵读的深度声学建模--当前解决方案和未来方向
古兰经》对穆斯林社区至关重要,要想获得充分的回报,就必须按照所述规则阅读《古兰经》。在过去的几年中,这一领域在研究人员眼中获得了极大的重视,他们希望借助机器学习和深度学习实现古兰经阅读和理解过程的自动化,因为他们深知这其中存在着许多挑战。迄今为止,已探索出很多研究类别。但是,仍然缺乏一些整体性的研究,包括对所有类别和用于解决问题的方法的详细调查。我们将本文的重点放在为感兴趣的人提供一站式服务上,这样他们就能找到 (i) 所有相关信息和 (ii) 未来的研究空白。本文对古兰经背诵的深度建模进行了详细调查,以应对这些挑战。我们讨论了所有可能的语音分析类别,包括最先进的特征提取技术、使用 Tajweed 规则的错误发音检测、朗诵者和语音方言分类,以及古兰经朗诵自动语音识别 (ASR) 的实现。我们还讨论了这一领域的研究挑战,并确定了未来可能存在的差距。
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