Indonesian Journal of Electrical Engineering and Computer Science
Vol 8, No 1: October 2017

Development of Acoustical Feature Based Classifier Using Decision Fusion Technique for Malay Language Disfluencies Classification

Raseeda Hamzah (Faculty of Computer and Mathematical Science, MARA University of Technology, Shah Alam, 40450 Selangor.)
Nursuriati Jamil (Faculty of Computer and Mathematical Science, MARA University of Technology, Shah Alam, 40450 Selangor)
Rosniza Roslan (Faculty of Computer and Mathematical Science, MARA University of Technology, Shah Alam, 40450 Selangor)



Article Info

Publish Date
01 Oct 2017

Abstract

Speech disfluency such as filled pause (FP) is a hindrance in Automated Speech Recognition as it degrades the accuracy performance. Previous work of FP detection and classification have fused a number of acoustical features as fusion classification is known to improve classification results. This paper presents new decision fusion of two well-established acoustical features that are zero crossing rates (ZCR) and speech envelope (ENV) with eight popular acoustical features for classification of Malay language filled pause (FP) and elongation (ELO). Five hundred ELO and 500 FP are selected from a spontaneous speeches of a parliamentary session and Naïve Bayes classifier is used for the decision fusion classification. The proposed feature fusion produced better classification performance compared to single feature classification with the highest F-measure of 82% for both classes.

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