Sufficient target language data remains an important factor in the development of automatic speech recognition (ASR) systems. For instance, the substantial improvement in acoustic modelling that deep architectures have recently achieved for well-resourced languages requires vast amounts of speech data. Moreover, the acoustic models in state-of-the-art ASR systems that generalise well across different domains are usually trained on various corpora, not just one or two. Diverse corpora containing hundreds of hours of speech data are not available for resource limited languages. In this paper, we investigate the feasibility of creating additional speech resources for the official languages of South Africa by employing a semi-automatic data harvesting procedure. Factorised time-delay neural network models were used to generate phone-level transcriptions of speech data harvested from different domains.
Reference:
Badenhorst, J.A. & De Wet, F. 2021. Investigating the feasibility of harvesting broadcast speech data to develop resources for South African languages. http://hdl.handle.net/10204/12380 .
Badenhorst, J. A., & De Wet, F. (2021). Investigating the feasibility of harvesting broadcast speech data to develop resources for South African languages. http://hdl.handle.net/10204/12380
Badenhorst, Jacob AC, and Febe De Wet. "Investigating the feasibility of harvesting broadcast speech data to develop resources for South African languages." Proceedings of the International Conference of the Digital Humanities Association of Southern Africa. 2nd workshop on Resources for African Indigenous Language (RAIL), Virtual, 29 November - 3 December 2021 (2021): http://hdl.handle.net/10204/12380
Badenhorst JA, De Wet F, Investigating the feasibility of harvesting broadcast speech data to develop resources for South African languages; 2021. http://hdl.handle.net/10204/12380 .
Proceedings of the International Conference of the Digital Humanities Association of Southern Africa. 2nd workshop on Resources for African Indigenous Language (RAIL), Virtual, 29 November - 3 December 2021