CLJul 23, 2025

Synthetic Voice Data for Automatic Speech Recognition in African Languages

arXiv:2507.17578v13 citationsh-index: 1Proceedings of the First Workshop on Advancing NLP for Low-Resource Languages
Originality Incremental advance
AI Analysis

This addresses the lack of speech technology for over 2300 African languages, though it is incremental as it builds on existing synthetic data methods.

The paper tackled the problem of limited speech technology for African languages by creating synthetic voice corpora, achieving ASR performance matching real-data baselines at a fraction of the cost, with gains such as a 6.5% relative WER improvement for Chichewa.

Speech technology remains out of reach for most of the over 2300 languages in Africa. We present the first systematic assessment of large-scale synthetic voice corpora for African ASR. We apply a three-step process: LLM-driven text creation, TTS voice synthesis, and ASR fine-tuning. Eight out of ten languages for which we create synthetic text achieved readability scores above 5 out of 7. We evaluated ASR improvement for three (Hausa, Dholuo, Chichewa) and created more than 2,500 hours of synthetic voice data at below 1% of the cost of real data. Fine-tuned Wav2Vec-BERT-2.0 models trained on 250h real and 250h synthetic Hausa matched a 500h real-data-only baseline, while 579h real and 450h to 993h synthetic data created the best performance. We also present gender-disaggregated ASR performance evaluation. For very low-resource languages, gains varied: Chichewa WER improved about 6.5% relative with a 1:2 real-to-synthetic ratio; a 1:1 ratio for Dholuo showed similar improvements on some evaluation data, but not on others. Investigating intercoder reliability, ASR errors and evaluation datasets revealed the need for more robust reviewer protocols and more accurate evaluation data. All data and models are publicly released to invite further work to improve synthetic data for African languages.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes