Raghad Salameh, Mohamad Al Mdfaa, Nursultan Askarbekuly, Manuel Mazzara
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Quranic Audio Dataset: Crowdsourced and Labeled Recitation from Non-Arabic Speakers
This paper addresses the challenge of learning to recite the Quran for
non-Arabic speakers. We explore the possibility of crowdsourcing a carefully
annotated Quranic dataset, on top of which AI models can be built to simplify
the learning process. In particular, we use the volunteer-based crowdsourcing
genre and implement a crowdsourcing API to gather audio assets. We integrated
the API into an existing mobile application called NamazApp to collect audio
recitations. We developed a crowdsourcing platform called Quran Voice for
annotating the gathered audio assets. As a result, we have collected around
7000 Quranic recitations from a pool of 1287 participants across more than 11
non-Arabic countries, and we have annotated 1166 recitations from the dataset
in six categories. We have achieved a crowd accuracy of 0.77, an inter-rater
agreement of 0.63 between the annotators, and 0.89 between the labels assigned
by the algorithm and the expert judgments.