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Main Authors: Salman, Muhammad Umar, Qazi, Mohammad Areeb, Alam, Mohammed Talha
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.17880
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author Salman, Muhammad Umar
Qazi, Mohammad Areeb
Alam, Mohammed Talha
author_facet Salman, Muhammad Umar
Qazi, Mohammad Areeb
Alam, Mohammed Talha
contents We present Quran MD, a comprehensive multimodal dataset of the Quran that integrates textual, linguistic, and audio dimensions at the verse and word levels. For each verse (ayah), the dataset provides its original Arabic text, English translation, and phonetic transliteration. To capture the rich oral tradition of Quranic recitation, we include verse-level audio from 32 distinct reciters, reflecting diverse recitation styles and dialectical nuances. At the word level, each token is paired with its corresponding Arabic script, English translation, transliteration, and an aligned audio recording, allowing fine-grained analysis of pronunciation, phonology, and semantic context. This dataset supports various applications, including natural language processing, speech recognition, text-to-speech synthesis, linguistic analysis, and digital Islamic studies. Bridging text and audio modalities across multiple reciters, this dataset provides a unique resource to advance computational approaches to Quranic recitation and study. Beyond enabling tasks such as ASR, tajweed detection, and Quranic TTS, it lays the foundation for multimodal embeddings, semantic retrieval, style transfer, and personalized tutoring systems that can support both research and community applications. The dataset is available at https://huggingface.co/datasets/Buraaq/quran-audio-text-dataset
format Preprint
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institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Quran-MD: A Fine-Grained Multilingual Multimodal Dataset of the Quran
Salman, Muhammad Umar
Qazi, Mohammad Areeb
Alam, Mohammed Talha
Computer Vision and Pattern Recognition
We present Quran MD, a comprehensive multimodal dataset of the Quran that integrates textual, linguistic, and audio dimensions at the verse and word levels. For each verse (ayah), the dataset provides its original Arabic text, English translation, and phonetic transliteration. To capture the rich oral tradition of Quranic recitation, we include verse-level audio from 32 distinct reciters, reflecting diverse recitation styles and dialectical nuances. At the word level, each token is paired with its corresponding Arabic script, English translation, transliteration, and an aligned audio recording, allowing fine-grained analysis of pronunciation, phonology, and semantic context. This dataset supports various applications, including natural language processing, speech recognition, text-to-speech synthesis, linguistic analysis, and digital Islamic studies. Bridging text and audio modalities across multiple reciters, this dataset provides a unique resource to advance computational approaches to Quranic recitation and study. Beyond enabling tasks such as ASR, tajweed detection, and Quranic TTS, it lays the foundation for multimodal embeddings, semantic retrieval, style transfer, and personalized tutoring systems that can support both research and community applications. The dataset is available at https://huggingface.co/datasets/Buraaq/quran-audio-text-dataset
title Quran-MD: A Fine-Grained Multilingual Multimodal Dataset of the Quran
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2601.17880