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QASR: QCRI Aljazeera Speech Resource
QASR is the largest transcribed Arabic speech corpus with around 2,000 hours of data.
It features multi-layer annotation, covering multiple Arabic dialects and code-switching speech.
π Overview
QASR is a large-scale transcribed Arabic speech corpus collected from Aljazeera News Channel broadcasts.
The data is lightly supervised and linguistically segmented, designed to support a wide range of speech and language processing research tasks.
Key Features
- ~2,000 hours of transcribed Arabic speech
- Multi-dialect and code-switching coverage
- Multi-layer linguistic annotations
- Lightly supervised transcriptions
- Linguistically motivated segmentation
π Lisence
Non-Commercial Purpose ONLY!
π₯ Download
You can request or download the dataset using the link below:
Please follow the instructions on the linked page to complete the request process and download the data.
π§ Applications
QASR is suitable for training and evaluating:
- Automatic Speech Recognition (ASR) systems
- Arabic Dialect Identification (acoustics- and linguistics-based)
- Punctuation Restoration
- Speaker Identification and Speaker Linking
- Spoken Language Understanding and other NLP modules for spoken data
π Data Source
The corpus was crawled from the Aljazeera news channel, providing rich diversity in topics, speakers, and dialectal variation.
π Citation
If you use QASR in your research, please cite:
@inproceedings{mubarak_qasr_2021,
title = {{QASR}: {QCRI} {Aljazeera} {Speech} {Resource}. {A} {Large} {Scale} {Annotated} {Arabic} {Speech} {Corpus}},
booktitle = {{Proc. of ACL}},
author = {Mubarak, Hamdy and Hussein, Amir and Chowdhury, Shammur Absar and Ali, Ahmed},
year = {2021},
}
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