Blaise Abbo Djoulde
2025
Speech Technologies Datasets for African Under-Served Languages
Emmanuel Ngue Um
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Francis Tyers
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Eliette-Caroline Emilie Ngo Tjomb
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Florus Landry Dibengue
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Blaise-Mathieu Banoum Manguele
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Blaise Abbo Djoulde
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Mathilde Nyambe A
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Brice Martial Atangana Eloundou
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Jeff Sterling Ngami Kamagoua
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José Mpouda Avom
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Zacharie Nyobe
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Emmanuel Giovanni Eloundou Eyenga
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André Likwai
Proceedings of the Eight Workshop on the Use of Computational Methods in the Study of Endangered Languages
The expansion of the speech technology sector has given rise to a novel economic model in language research, with the objective of developing speech datasets. This model is expanding to under-served African languages through collaborative efforts between industries, organisations, and the active participation of communities. This collaboration is yielding new datasets for machine learning, while also disclosing vulnerabilities and sociolinguistic discrepancies between industrialised and non-industrialised societies. A case study of a speech data collection camp that took place in September 2024 in Cameroon, involving representatives of 31 languages throughout the continent, illustrates both the prospects of the new economic model for research on under-served languages and the challenges of fair, effective, and responsible participation.