Classification of audio signals using statistical features on time and wavelet transform domains
- 1 May 1998
- conference paper
- Published by Institute of Electrical and Electronics Engineers (IEEE)
Abstract
This paper presents a study on musical signal classification, using wavelet transform analysis in conjunction with statistical pattern recognition techniques. A comparative evaluation between different wavelet analysis architectures in terms of their classification ability, as well as between different classifiers is carried out. We seek to establish which statistical measures clearly distinguish between the three different musical styles of rock, piano, and jazz. Our preliminary results suggest that the features collected by the adaptive splitting wavelet transform technique performed better compared to the other wavelet based techniques, achieving overall classification accuracy of 91.67, using either the Minimum Distance Classifier or the Least Squares Minimum Distance Classifier. Such a system can play a useful part in multimedia applications which require content based search, classification, and retrieval of audio signals, as defined in MPEG-7Keywords
This publication has 6 references indexed in Scilit:
- Content-based classification, search, and retrieval of audioIEEE MultiMedia, 1996
- Automatic Indexing of a Sound Database Using Self-Organizing Neural NetsComputer Music Journal, 1994
- Myocardial tissue characterization using pattern recognition procedures on backs cattered ultrasonic signalsUltrasonic Imaging, 1986
- Toward an Intelligent Editor of Digital Audio: Signal Processing MethodsComputer Music Journal, 1982
- Segmentation by texture using a co-occurrence matrix and a split-and-merge algorithmComputer Graphics and Image Processing, 1979
- Textural Features for Image ClassificationIEEE Transactions on Systems, Man, and Cybernetics, 1973