A baseline model for computationally inexpensive speech recognition for
Kazakh using the Coqui STT framework
- URL: http://arxiv.org/abs/2107.10637v1
- Date: Mon, 19 Jul 2021 14:17:42 GMT
- Title: A baseline model for computationally inexpensive speech recognition for
Kazakh using the Coqui STT framework
- Authors: Ilnar Salimzianov
- Abstract summary: We train a new baseline acoustic model and three language models for use with the Coqui STT framework.
Results look promising, but further epochs of training and parameter sweeping are needed to reach a production-level accuracy.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Mobile devices are transforming the way people interact with computers, and
speech interfaces to applications are ever more important. Automatic Speech
Recognition systems recently published are very accurate, but often require
powerful machinery (specialised Graphical Processing Units) for inference,
which makes them impractical to run on commodity devices, especially in
streaming mode. Impressed by the accuracy of, but dissatisfied with the
inference times of the baseline Kazakh ASR model of (Khassanov et al.,2021)
when not using a GPU, we trained a new baseline acoustic model (on the same
dataset as the aforementioned paper) and three language models for use with the
Coqui STT framework. Results look promising, but further epochs of training and
parameter sweeping or, alternatively, limiting the vocabulary that the ASR
system must support, is needed to reach a production-level accuracy.
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