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An Analysis of Rhythmic Staccato-Vocalization Based on Frequency Demodulation for Laughter Detection in Conversational Meetings

Authors :
Ghosh, Sucheta
Cernak, Milos
Palit, Sarbani
Chaudhuri, B. B.
Publication Year :
2016

Abstract

Human laugh is able to convey various kinds of meanings in human communications. There exists various kinds of human laugh signal, for example: vocalized laugh and non vocalized laugh. Following the theories of psychology, among all the vocalized laugh type, rhythmic staccato-vocalization significantly evokes the positive responses in the interactions. In this paper we attempt to exploit this observation to detect human laugh occurrences, i.e., the laughter, in multiparty conversations from the AMI meeting corpus. First, we separate the high energy frames from speech, leaving out the low energy frames through power spectral density estimation. We borrow the algorithm of rhythm detection from the area of music analysis to use that on the high energy frames. Finally, we detect rhythmic laugh frames, analyzing the candidate rhythmic frames using statistics. This novel approach for detection of `positive' rhythmic human laughter performs better than the standard laughter classification baseline.<br />Comment: 5 pages, 1 figure, conference paper

Subjects

Subjects :
Computer Science - Sound

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1601.00833
Document Type :
Working Paper