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  1. University of Computer Studies, Yangon
  2. Conferences

Speech Enhancement Techniques for Noisy Speech in Real World Environments

http://hdl.handle.net/20.500.12678/0000003468
http://hdl.handle.net/20.500.12678/0000003468
ec5c4463-6a96-4a77-9e08-c5897e7c6e8d
a48a408f-b659-48f1-8d95-6c78bc1a6002
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ICCA ICCA 2019 Proceedings Book-pages-249-255.pdf (388 Kb)
Publication type
Article
Upload type
Publication
Title
Title Speech Enhancement Techniques for Noisy Speech in Real World Environments
Language en
Publication date 2019-02-27
Authors
Win, Htwe Pa Pa
Khine, Phyo Thu Thu
Description
Communication between computer andhuman has become increasingly popular in todayworld. Investigation of human emotion importance isalso growing in several domains. But under realworld condition, speech signal is often, corruptedwith several noise types and the accuracy ofrecognition is degraded from these noisy signal.Therefore this paper focuses on the speechenhancement techniques to develop emotionrecognition system for the noisy signal in the realworld environment. The various popularenhancement techniques are analyzed by adding thebackground noise to the clean signal using variousSNR. To test the accuracy of the system, the widelyused MFCC signal features are against with the SVMclassifier. Results after enhancing were compared tothat noisy signal and that clean signal to measure thesystem performance. The experimental results showthe best performance algorithm and all enhancementalgorithms improve the emotion recognition systemperformance under various SNRs level of real worldbackground noise.
Keywords
Emotion Recognition, Noisy Signal, MRCC, SVM, SNRs
Identifier http://onlineresource.ucsy.edu.mm/handle/123456789/1215
Journal articles
Seventeenth International Conference on Computer Applications(ICCA 2019)
Conference papers
Books/reports/chapters
Thesis/dissertations
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