Detail publikace
Phoneme Recognition using Temporal Patterns
MATĚJKA, P., SCHWARZ, P., HEŘMANSKÝ, H., ČERNOCKÝ, J.
Originální název
Phoneme Recognition using Temporal Patterns
Anglický název
Phoneme Recognition using Temporal Patterns
Jazyk
en
Originální abstrakt
We investigate and compare several techniques for automatic recognition of unconstrained context-independent phoneme strings from TIMIT and NTIMIT databases. Among the compared techniques, the technique based on TempoRAl Patterns (TRAP) achieves the best results in the clean speech, it achieves about 10% relative improovements against baseline system. Its advantage is also observed in the presence of mismatch between training and testing conditions. Issues such as the optimal length of temporal patterns in the TRAP technique and the effectiveness of mean and variance normalization of the patterns and the multi-band input the TRAP estimations, are also explored.
Anglický abstrakt
We investigate and compare several techniques for automatic recognition of unconstrained context-independent phoneme strings from TIMIT and NTIMIT databases. Among the compared techniques, the technique based on TempoRAl Patterns (TRAP) achieves the best results in the clean speech, it achieves about 10% relative improovements against baseline system. Its advantage is also observed in the presence of mismatch between training and testing conditions. Issues such as the optimal length of temporal patterns in the TRAP technique and the effectiveness of mean and variance normalization of the patterns and the multi-band input the TRAP estimations, are also explored.
Dokumenty
BibTex
@inproceedings{BUT14184,
author="Pavel {Matějka} and Petr {Schwarz} and Hynek {Heřmanský} and Jan {Černocký}",
title="Phoneme Recognition using Temporal Patterns",
annote="We investigate and compare several techniques for automatic recognition
of unconstrained context-independent phoneme strings from TIMIT and
NTIMIT databases. Among the compared techniques, the technique based on
TempoRAl Patterns (TRAP) achieves the best results in the clean speech,
it achieves about 10% relative improovements against baseline system.
Its advantage is also observed in the presence of mismatch between
training and testing conditions. Issues such as the optimal length of
temporal patterns in the TRAP technique and the effectiveness of mean
and variance normalization of the patterns and the multi-band input the
TRAP estimations, are also explored.",
address="Springer Verlag",
booktitle="Proc. 6th International Conference Text, Speech and Dialogue, TSD2003",
chapter="14184",
institution="Springer Verlag",
year="2003",
month="june",
pages="465--472",
publisher="Springer Verlag",
type="conference paper"
}