Mоlimо vаs kоristitе оvај idеntifikаtоr zа citirаnjе ili оvај link dо оvе stаvkе: https://open.uns.ac.rs/handle/123456789/2154
Nаziv: Whispered speech recognition using hidden markov models and support vector machines
Аutоri: Galić, Jovan
Popović, Branislav 
Pavlović, Dragana
Dаtum izdаvаnjа: 1-јан-2018
Čаsоpis: Acta Polytechnica Hungarica
Sažetak: © 2018, Budapest Tech Polytechnical Institution. All rights reserved. Whisper is a specific mode of speech characterized by turbulent airflow at the glottis level. Despite an increased effort in speech perception, the intelligibility of whisper in human communication is very high. An enormous acoustic mismatch between normally phonated (neutral) and whispered speech is the main reason why modern Automatic Speech Recognition (ASR) systems have significant drop of performances when applied to whisper. In this paper, we present an analysis in recognition of whisper using 2 machine-learning techniques: Hidden Markov Models (HMM) and Support Vector Machines (SVM). The experiments are conducted in both Speaker Dependent (SD) and Speaker Independent (SI) fashion for Whi-Spe speech database. The best neutral-trained whisper recognition accuracy in SD fashion (83.36%) is obtained in SVM framework. At the same time, HMM-based recognition gave the highest recognition accuracy in SI fashion (87.42%). The results in recognition of neutral speech are given as well.
URI: https://open.uns.ac.rs/handle/123456789/2154
ISSN: 17858860
DOI: 10.12700/APH.15.5.2018.5.2
Nаlаzi sе u kоlеkciјаmа:FTN Publikacije/Publications

Prikаzаti cеlоkupаn zаpis stаvki

SCOPUSTM   
Nаvоđеnjа

7
prоvеrеnо 20.11.2023.

Prеglеd/i stаnicа

13
Prоtеklа nеdеljа
9
Prоtеkli mеsеc
0
prоvеrеnо 03.05.2024.

Google ScholarTM

Prоvеritе

Аlt mеtrikа


Stаvkе nа DSpace-u su zаštićеnе аutоrskim prаvimа, sа svim prаvimа zаdržаnim, оsim аkо nije drugačije naznačeno.