Addable stress speech recognition with multiplexing hmm: Training and non-training decision

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Author listAmornkul P., Chamnongthai K., Temdee P.

PublisherSpringer

Publication year2014

JournalWireless Personal Communications (0929-6212)

Volume number76

Issue number3

Start page503

End page521

Number of pages19

ISSN0929-6212

eISSN1572-834X

URLhttps://www.scopus.com/inward/record.uri?eid=2-s2.0-84899917425&doi=10.1007%2fs11277-014-1721-3&partnerID=40&md5=a846d339f5c6417d7df5a92c101d96e5

LanguagesEnglish-Great Britain (EN-GB)


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Abstract

In stress speech recognition, a recognition model that is capable of processing multi-stress speech needs to be designed in the view points of accuracy and add-ability. This paper proposes addable stress speech recognition with multiplexing Hidden-Markov model (HMM). To achieve multi-stress speech, we propose a multiplexing topology that combines multiple stress speech models. Since each stress affects a speech in different way, having a speech recognition model that specifically trained to recognize words effected by the stress help improve the recognition rates. However, since each stress speech model gives it own independent recognized word, we need to have an effective decision module to choose the correct word. In each stress speech model, a MFCC is applied to the input speech. The result is fed into a HMM that is segmented into N parts. Each part of the segmentation provides its own tentative recognized word which in turn is an input to the proposed non-training decision module. Based on these tentative recognized words from segments of all stress speech models, the final recognized word is decided using coarse-to-fine concept performed by a majority vote, segment-weighted difference square score and next best score, respectively. Besides neutral speech, the proposed method was verified using three stresses including angry, loud, and Lombard. The results showed that the proposed method achieved 94.7 % recognition rate comparing to 94.2 % of the training-based decision method. ฉ 2014 Springer Science+Business Media New York.


Keywords

Hidden Markov modelStress speech recognition


Last updated on 2023-17-10 at 07:35