DocumentCode :
3585013
Title :
Background-tracking acoustic features for genre identification of broadcast shows
Author :
Saz, Oscar ; Doulaty, Mortaza ; Hain, Thomas
Author_Institution :
Dept. of Comput. Sci., Speech & Hearing Group, Univ. of Sheffield, Sheffield, UK
fYear :
2014
Firstpage :
118
Lastpage :
123
Abstract :
This paper presents a novel method for extracting acoustic features that characterise the background environment in audio recordings. These features are based on the output of an alignment that fits multiple parallel background-based Constrained Maximum Likelihood Linear Regression transformations asynchronously to the input audio signal. With this setup, the resulting features can track changes in the audio background like appearance and disappearance of music, applause or laughter, independently of the speakers in the foreground of the audio. The ability to provide this type of acoustic description in audiovisual data has many potential applications, including automatic classification of broadcast archives or improving automatic transcription and subtitling. In this paper, the performance of these features in a genre identification task in a set of 332 BBC shows is explored. The proposed background-tracking features outperform short-term Perceptual Linear Prediction features in this task using Gaussian Mixture Model classifiers (62% vs 72% accuracy). The use of more complex classifiers, Hidden Markov Models and Support Vector Machines, increases the performance of the system with the novel background-tracking features to 79% and 81% in accuracy respectively.
Keywords :
Gaussian processes; acoustic signal processing; audio signal processing; audio-visual systems; feature extraction; hidden Markov models; maximum likelihood estimation; mixture models; regression analysis; signal classification; support vector machines; 332 BBC show; Gaussian mixture model classifier; acoustic description; audio recording; audiovisual data; background-tracking acoustic feature extraction; broadcast show; genre identification; hidden Markov model; multiple parallel background-based constrained maximum likelihood linear regression transformation; short-term perceptual linear prediction; support vector machine; Abstracts; Acoustics; Biological system modeling; Hidden Markov models; Indexes; Acoustic background; broadcast data; genre identification;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Spoken Language Technology Workshop (SLT), 2014 IEEE
Type :
conf
DOI :
10.1109/SLT.2014.7078560
Filename :
7078560
Link To Document :
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