MiLex performs unsupervised learning and prediction of primary lexical stress starting from continuous speech data and its orthographic transcript. It uses a method based on syllable nuclei approximation and stress detection using simple acoustic features.
The toolkit is intended to be used in the development of text-to-speech (TTS) synthesis systems for under-resourced languages with the scope to improve the naturalness and intelligibility in TTS synthesis systems.
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