--- datasets: - freococo/rohingya_asr_audio language: - rhg tags: - speech - audio - voa - rohingya - self-supervised - webdataset - public-domain pretty_name: VOA Rohingya ASR license: pddl task_categories: - automatic-speech-recognition - audio-to-audio - audio-classification language_creators: - found source_datasets: - original --- **This is the first public Rohingya language ASR dataset in AI history.** ## Overview This dataset contains broadcast audio recordings from the **Voice of America (VOA) Rohingya Service**. Each file represents a daily news segment, typically 30 minutes in length, automatically segmented into chunks of 5–15 seconds for use in **self-supervised ASR**, **pretraining**, **language identification**, and more. The content was aired publicly as part of VOA’s Rohingya-language radio program and is therefore released under a **public domain dedication** (U.S. Government speech, [17 U.S.C. § 105](https://www.govinfo.gov/content/pkg/USCODE-2011-title17/html/USCODE-2011-title17-chap1-sec105.htm)). The dataset is stored in **WebDataset format**, with each `.tar` archive containing paired `.audio` (MP3) and `.json` metadata files for each segment. ## Acknowledgments This dataset would not exist without the dedication and professionalism of the **Voice of America Rohingya Service** — especially the **journalists, editors, producers, and engineers** who continue broadcasting trusted news and public service content to marginalized communities. Special gratitude goes to: - VOA multilingual teams who **created, edited, and voiced** this content - The **American people**, whose hard-earned taxpayer contributions make public media like VOA possible - The open-source, low-resource, and humanitarian tech community — for tools, models, and continued support This dataset is released in the hope that it will: - Advance multilingual speech technology - Empower access to information - Amplify underrepresented voices across the world ## Metrics | Metric | Value | |-------------------|--------------| | Total audio hours | **357.55 h** | | Audio chunks | **131,860** | | Shard count | **14** | | Average chunk size| 6–15 sec | | Format | WebDataset | | License | Public Domain (VOA / U.S. Gov) | ## Quick-start You can load and stream the dataset from Hugging Face using the `datasets` library: from datasets import load_dataset dataset = load_dataset( "freococo/rohingya_asr_audio", split="train", streaming=True ) for sample in dataset: print(sample["audio"]) # Audio object print(sample["file_name"]) # Chunk file name print(sample["download_url"]) # Original source URL print(sample["duration"]) # Duration in seconds ## Known Limitations This dataset was created through automatic chunking of full-length VOA Rohingya news broadcasts. As a result, developers should be aware of the following limitations: - **No transcriptions** are included. This dataset is not aligned for supervised training unless transcribed independently. - Some chunks may contain **non-speech segments** such as: - Music intros and outros - Jingles or filler transitions - Background crowd noise or environmental sounds - Silent or low-audio intervals - **No speaker labeling** is provided. Voice diversity, accents, and gender variation exist, but are unlabeled. - **Broadcast mixing artifacts** may affect ASR performance in noisy conditions (e.g., overlayed music, crossfades, background hum). Despite these challenges, the dataset is suitable for: - Pretraining ASR models (wav2vec2-style) - Unsupervised learning - Language ID and diarization - Synthetic data generation We recommend applying **speech detection filters**, **VAD**, or **manual quality control** for downstream supervised tasks. ## Dataset Details Each training sample is stored as: - `.audio` — MP3 audio content (~5–15 seconds) - `.json` — metadata with: - `file_name`: full chunk filename (e.g., `20250310_0001.audio`) - `original_file`: e.g., `20250310` - `publish_date`: ISO 8601 format (e.g., `2025-03-10`) - `download_url`: original VOA source URL - `duration`: chunk duration in seconds These files are stored in `.tar` archives, split into ~10,000-sample shards named like: rohingya-00000.tar rohingya-00001.tar ... Each archive follows [WebDataset format](https://github.com/webdataset/webdataset), making it easy to use with PyTorch and Hugging Face streaming. ## License & Reuse All content is in the **public domain** under U.S. law: > U.S. Government speech recordings (VOA staff broadcasts) are public domain under [17 U.S.C. § 105](https://www.govinfo.gov/content/pkg/USCODE-2011-title17/html/USCODE-2011-title17-chap1-sec105.htm). Some broadcasts may contain music or third-party clips. Please verify manually if using for commercial purposes. ## Citation If you use this dataset in research, please cite: > **Freococo (2025).** > *VOA Rohingya ASR* > Hugging Face: [https://huggingface.co/datasets/freococo/rohingya_asr_audio](https://huggingface.co/datasets/freococo/rohingya_asr_audio) > Public-domain speech segments from VOA Rohingya news programming. > Released under `pddl`.