OOD-Speech: A Large Bengali Speech Recognition Dataset for Out-of-Distribution Benchmarking

Rakib, Fazle Rabbi, Dip, Souhardya Saha, Alam, Samiul, Tasnim, Nazia, Shihab, Md. Istiak Hossain, Ansary, Md. Nazmuddoha, Hossen, Syed Mobassir, Meghla, Marsia Haque, Mamun, Mamunur, Sadeque, Farig, Chowdhury, Sayma Sultana, Reasat, Tahsin, Sushmit, Asif, Humayun, Ahmed Imtiaz

arXiv.org Artificial Intelligence 

Being one of the most spoken languages globally, Bengali portrays large diversity in dialects and prosodic features, which demands ASR frameworks to be robust towards distribution shifts. For example, islamic religious sermons in Bengali are delivered with a tonality that is significantly different from regular speech. Our training dataset is collected via massively online crowdsourcing campaigns which resulted in 1177.94 hours collected and curated from 22, 645 native Bengali speakers from South Asia. Our test dataset comprises 23.03 hours of speech collected and manually annotated from 17 different sources, e.g., Bengali TV drama, Audiobook, Talk show, Online class, and Islamic sermons to name a few. OOD-Speech is jointly the largest publicly available speech dataset, as well as the first out-ofdistribution Figure 1: t-Stochastic Neighbor Embeddings [6] of Geneva ASR benchmarking dataset for Bengali.

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