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Assessing the Feasibility of Lightweight Whisper Models for Low-Resource Urdu Transcription

Published: August 13, 2025 | arXiv ID: 2508.09865v1

By: Abdul Rehman Antall, Naveed Akhtar

Potential Business Impact:

Helps computers understand Urdu speech better.

This study evaluates the feasibility of lightweight Whisper models (Tiny, Base, Small) for Urdu speech recognition in low-resource settings. Despite Urdu being the 10th most spoken language globally with over 230 million speakers, its representation in automatic speech recognition (ASR) systems remains limited due to dialectal diversity, code-switching, and sparse training data. We benchmark these models on a curated Urdu dataset using word error rate (WER), without fine-tuning. Results show Whisper-Small achieves the lowest error rates (33.68\% WER), outperforming Tiny (67.08\% WER) and Base (53.67\% WER). Qualitative analysis reveals persistent challenges in phonetic accuracy and lexical coherence, particularly for complex utterances. While Whisper-Small demonstrates promise for deployable Urdu ASR, significant gaps remain. Our findings emphasize lay the groundwork for future research into effective, low-resource ASR systems.

Country of Origin
🇵🇰 Pakistan

Repos / Data Links

Page Count
8 pages

Category
Computer Science:
Computation and Language