CONF
Hyafil_INTERSPEECH_2015/IDIAP
Neuromorphic Based Oscillatory Device for Incremental Syllable Boundary Detection
Hyafil, Alexandre
Cernak, Milos
Speech Analysis
EXTERNAL
https://publications.idiap.ch/attachments/papers/2015/Hyafil_INTERSPEECH_2015.pdf
PUBLIC
https://publications.idiap.ch/index.php/publications/showcite/Hyafil_Idiap-RR-14-2015
Related documents
Proc. of Interspeech
Dresden, Germany
2015
ISCA
1191-1195
Syllables are considered as basic supra-segmental units, used mainly in prosodic modelling. It has long been thought that efficient syllabification algorithms may also provide valuable cues for improved segmental (acoustic) modelling. However, the best current syllabification methods work offline, considering the power envelope of whole utterance.
In this paper we introduce a new method for detection of syllable boundaries based on a model of speech parsing into syllables by neural oscillations in human auditory cortex. Neural oscillations automatically lock to speech slow fluctuations that convey the syllabic rhythm. Similarly as humans encode speech incrementally, i.e., not considering future temporal context, the proposed method works incrementally as well. In addition, it is highly robust to noise. Syllabification performance for English and different noise conditions was compared to the existing Mermelstein and group delay algorithms. While the performance of the existing methods depend on the type of noise and signal to noise ratio, the performance of the proposed method is constant under all noise conditions.
REPORT
Hyafil_Idiap-RR-14-2015/IDIAP
Neuromorphic Based Oscillatory Device for Incremental Syllable Boundary Detection
Hyafil, Alexandre
Cernak, Milos
neural computing
EXTERNAL
https://publications.idiap.ch/attachments/reports/2015/Hyafil_Idiap-RR-14-2015.pdf
PUBLIC
Idiap-RR-14-2015
2015
Idiap
June 2015