AP18-OLR Challenge: Three Tasks and Their Baselines

@article{Tang2018AP18OLRCT,
  title={AP18-OLR Challenge: Three Tasks and Their Baselines},
  author={Zhiyuan Tang and Dong Wang and Qing Chen},
  journal={2018 Asia-Pacific Signal and Information Processing Association Annual Summit and Conference (APSIPA ASC)},
  year={2018},
  pages={596-600}
}
  • Zhiyuan Tang, D. Wang, Q. Chen
  • Published 2018
  • Computer Science, Engineering
  • 2018 Asia-Pacific Signal and Information Processing Association Annual Summit and Conference (APSIPA ASC)
The third oriental language recognition (OLR) challenge AP18-OLR is introduced in this paper, including the data profile, the tasks and the evaluation principles. Following the events in the last two years, namely AP16-OLR and AP17-OLR, the challenge this year focuses on more challenging tasks, including (1) short-duration utterances, (2) confusing languages, and (3) open-set recognition. The same as the previous events, the data of AP18-PLR is also provided by SpeechOcean and the NSFC M2ASR… Expand
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AP19-OLR Challenge: Three Tasks and Their Baselines
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  • 2019
TLDR
The fourth oriental language recognition (OLR) challenge AP19-OLR is introduced, including the data profile, the tasks and the evaluation principles, and it is demonstrated that the three tasks are worth some efforts to achieve better performance. Expand
AP17-OLR challenge: Data, plan, and baseline
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