Publication | Closed Access
Musical Instrument Classification using Non-Negative Matrix Factorization Algorithms and Subset Feature Selection
56
Citations
8
References
2006
Year
Unknown Venue
MusicComputational MusicologyEngineeringMusicologySpeech RecognitionPattern RecognitionAudio AnalysisIndividual Musical InstrumentMusic ProcessingOptical Music RecognitionHealth SciencesStandard Nmf MethodVarious Nmf AlgorithmsAudio RetrievalSubset Feature SelectionAudio MiningMusic ClassificationMusical Instrument ClassificationSpeech Processing
In this paper, a class, of algorithms for automatic classification of individual musical instrument sounds is presented. Several perceptual features used in sound classification applications as well as MPEG-7 descriptors were measured for 300 sound recordings consisting of 6 different musical instrument classes. Subsets of the feature set are selected using branch-and-bound search, obtaining the most suitable features for classification, A class of classifiers is developed based on the non-negative matrix factorization (NMF). The standard NMF method is examined as well as its modifications: the local, the sparse, and the discriminant NMF. The experimental results compare feature subsets of varying sizes alongside the various NMF algorithms. It has been found that a subset containing the mean and die variance of the first mel-frequency cepstral coefficient and the audiospectrumflatness descriptor along with the means of the audiospectrumenvelope and the audiospectrumspread descriptors when is fed to a standard NMF classifier yields an accuracy exceeding 95%
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