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Arabic Speech Dataset
A curated Arabic speech dataset combining three sources, transcribed via Whisper-large-v3 (primary) and omniASR-7B (fallback). Built for Arabic TTS and ASR training.
Quick Start
from datasets import load_dataset
ds = load_dataset("KFUPM-JRCAI/arabic_speech", split="train")
print(ds[0]["transcription"]) # ASR text
print(ds[0]["audio"]["array"]) # audio waveform (float32, 16kHz)
print(ds[0]["timestamps"]) # word-level timestamps (nullable)
print(ds[0]["model"]) # "whisper-large-v3" or "omniASR-7B"
print(ds[0]["origin"]) # source dataset name
print(ds[0]["speakerandsession"]) # "session_id::speaker"
Schema
| Column | Type | Description |
|---|---|---|
| audio | Audio(16000) | Decoded mono waveform at 16kHz |
| transcription | string | Raw ASR output (not Gemini-normalized) |
| model | string | "whisper-large-v3" or "omniASR-7B" |
| timestamps | List[{word, start, end}] | Word-level timestamps (nullable) |
| speakerandsession | string | {session_id}::{speaker} |
| origin | string | Source HF dataset name |
Data Sources
| Source | Origin | Rows | Description |
|---|---|---|---|
| ArabicVoicesClean_v5 | KFUPM-JRCAI/ArabicVoicesClean_v5 | 2,961 | Crowd-sourced Arabic speech recordings |
| Miro | TigreGotico/tts-train-synthetic-miro_ar-diacritics | 237 | TTS-synthetic Arabic with diacritics |
| DII | TigreGotico/tts-train-synthetic-dii_ar-diacritics | 4,350 | TTS-synthetic Arabic with diacritics |
Total: 7,548 rows (6,352 whisper / 1,196 omniASR).
How It Was Built
The pipeline starts from the original datasets (audio + text pairs), then applies automatic speech recognition (ASR) to filter and enrich the data:
1. ASR Transcription & Filtering
For each audio-text pair from the original datasets, we run Whisper-large-v3 (and omniASR-7B as a fallback) to produce an ASR transcript. The ASR transcript is then compared against the original text:
- Rows where the ASR output matches the original text well are marked
keep=truein filtered_records.jsonl -- these are the high-quality pairs retained in this dataset. - Rows where the ASR deviates significantly are discarded. The original text may contain errors (e.g., mismatched audio), and the ASR serves as a quality gate.
2. Word-Level Timestamps
For retained rows, whisper also produces word-level timestamps (word, start, end) stored in asr_words_cache.jsonl. These enable alignment tasks and fine-grained analysis.
3. Union (Whisper-preferred)
When both whisper and omniASR transcriptions exist for a row, the whisper version is used. omniASR is only used when whisper coverage is missing (1,196 rows).
4. Clip ID Mapping
HuggingFace Dataset loads wav files in alphabetical order (1.wav, 10.wav, 100.wav, ...), so a naive ds_idx + 1 mapping maps audio to the wrong transcription. To fix this, each row's original text is matched against metadata.csv to find the real clip_id.
5. Audio Loading
- ArabicVoicesClean_v5: Audio decoded from parquet shards (embedded binary WAV) via soundfile.read at 16kHz.
- Miro/DII: Audio loaded from complete wav directories at /tmp/tts-train-synthetic-*-hf/wav/.
Known Limitations
Missing Word Timestamps
The word-level timestamp generation (asr_words_cache.jsonl) was only run for a subset of indices:
- Miro: indices 1-383 (237/570 keep rows have timestamps)
- DII: indices 1-7,943 (4,333/5,559 keep rows have timestamps)
- ArabicVoicesClean_v5: 100% covered
How to fix: Re-run the word-segmentation step on the remaining indices. The asr_text_cache.jsonl has full coverage -- only the timestamp extraction was interrupted.
Incomplete Miro Coverage
The miro ASR was only run on the first 968 clip_ids (indices 0-967) out of ~9,994 total. To expand coverage, re-run ASR inference on the remaining rows and include them in the keep set.
License
Refer to the licenses of the individual source datasets:
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