Title :
Alignment kernels for audio classification with application to music instrument recognition
Author :
Joder, Cyril ; Essid, Slim ; Richard, Gael
Author_Institution :
Inst. TELECOM, TELECOM ParisTech, Paris, France
Abstract :
In this paper we study the efficiency of support vector machines (SVM) with alignment kernels in audio classification. The classification task chosen is music instrument recognition. The alignment kernels have the advantage of handling sequential data, without assuming a model for the probability density of the features as in the case of Gaussian Mixture Model-based Hidden Markov Models (HMM). These classifiers are compared to several reference systems, namely Gaussian Mixture Model, HMM classifiers and SVMs with “static” kernels. Using a higher-level representation of the feature sequence, which we call summary sequence, we show that the use of alignment kernels can significantly improve the classification scores in comparison to the reference systems.
Keywords :
Gaussian processes; audio signal processing; hidden Markov models; mixture models; musical instruments; probability; signal classification; support vector machines; Gaussian mixture model; HMM classifiers; SVM; alignment kernels; audio classification; feature sequence; hidden Markov models; music instrument recognition; probability density; reference systems; sequential data; static kernels; summary sequence; support vector machines; Feature extraction; Hidden Markov models; Instruments; Kernel; Support vector machine classification; Vectors;
Conference_Titel :
Signal Processing Conference, 2008 16th European
Conference_Location :
Lausanne