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Mak na Konac - A multi-reference Speech-to-text Benchmark for Croatian and Serbian

The data set consists of transcribed spontaneous speech samples from three sources (one Croatian and two Serbian) with a total duration of about 15 hours.

At this time, the multi-reference gold truth transcriptions are not publicly available. This submission only includes the audio and primary key.

Citation and more details


@inproceedings{Samardzic2024,
  author    = {Tanja Samardzic and Peter Rupnik and Mirjana Starović and Nikola Ljubešić},
  title     = {Mak na konac: A multi-reference Speech-to-text Benchmark for Croatian and Serbian},
  booktitle = {Proceedings of the Language Technologies and Digital Humanities 2024 conference (JT-DH 2024)},
  year      = {2024},
  address   = {Ljubljana, Slovenia},
  month     = sep,
  day       = {19--20},
}
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