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arxiv: 2408.11440 · v1 · pith:3AGQ3LBD · submitted 2024-08-21 · cs.CL

LAHAJA: A Robust Multi-accent Benchmark for Evaluating Hindi ASR Systems

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classification cs.CL
keywords hindidiverseindialahajamodelsaccentsbenchmarkexisting
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Hindi, one of the most spoken language of India, exhibits a diverse array of accents due to its usage among individuals from diverse linguistic origins. To enable a robust evaluation of Hindi ASR systems on multiple accents, we create a benchmark, LAHAJA, which contains read and extempore speech on a diverse set of topics and use cases, with a total of 12.5 hours of Hindi audio, sourced from 132 speakers spanning 83 districts of India. We evaluate existing open-source and commercial models on LAHAJA and find their performance to be poor. We then train models using different datasets and find that our model trained on multilingual data with good speaker diversity outperforms existing models by a significant margin. We also present a fine-grained analysis which shows that the performance declines for speakers from North-East and South India, especially with content heavy in named entities and specialized terminology.

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Cited by 2 Pith papers

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  1. Vaani Benchmark V1.0: An Inclusive Multimodal Benchmark Dataset for Hindi

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    Vaani Benchmark V1.0 is a multimodal Hindi ASR dataset from 104 districts featuring spontaneous speech recordings in real-world conditions and three independent transcriptions per segment for robust multi-reference ev...

  2. A study on the impact of region specific data on the performance of Indic ASR

    eess.AS 2026-06 unverdicted novelty 3.0

    Empirical study finds consistent positive correlation between inter-district geographic distance and ASR word error rate when models are finetuned on single-district Indic speech data.