AfroDigits: A Community-Driven Spoken Digit Dataset for African Languages
Emezue, Chris Chinenye, Gandhi, Sanchit, Tunstall, Lewis, Abid, Abubakar, Meyer, Josh, Lhoest, Quentin, Allen, Pete, Von Platen, Patrick, Kiela, Douwe, Jernite, Yacine, Chaumond, Julien, Noyan, Merve, Sanseviero, Omar
–arXiv.org Artificial Intelligence
The advancement of speech technologies has been remarkable, yet its integration with African languages remains limited due to the scarcity of African speech corpora. To address this issue, we present AfroDigits, a minimalist, community-driven dataset of spoken digits for African languages, currently covering 38 African languages. As a demonstration of the practical applications of AfroDigits, we conduct audio digit classification experiments on six African languages [Igbo (ibo), Yoruba (yor), Rundi (run), Oshiwambo (kua), Shona (sna), and Oromo (gax)] using the Wav2Vec2.0-Large Our experiments reveal a useful insight on the effect of mixing African speech corpora during finetuning. AfroDigits is the first published audio digit dataset for African languages and we believe it will, among other things, pave the way for Afro-centric speech applications such as the recognition of telephone numbers, and street numbers. Datasets are essential for the advancement of robust and beneficial deep neural networks in natural language processing (NLP) technologies Bender et al. (2021); Nekoto et al. (2020).
arXiv.org Artificial Intelligence
Apr-3-2023