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. ...
This paper discusses design and implementation of classifying system for recognition of musical inst...
This paper presents the results of the application of a feature selection procedure to an automatic ...
In this paper, unsupervised learning is used to separate percussive and harmonic sounds from monaura...
In this paper, a class of algorithms for automatic classification of individual musical instrument s...
Abstract — In this paper, a class of algorithms for automatic classification of individual musical i...
In this paper, a new approach for automatic audio classification using non-negative matrix factoriza...
In this paper, automatic musical instrument identification using a variety of classifiers is address...
Nonnegative matrix factorization (NMF) is used to derive a novel description for the timbre of music...
Separating multiple music sources from a single channel mixture is a challenging problem. We present...
This paper introduces a new feature set based on a Non-negtive Matrix Factorization approach for the...
A novel approach using non-negative matrix factorization (NMF) for onset detection of musical notes ...
Several factors affecting the automatic classification of musical audio signals are examined. Classi...
cote interne IRCAM: Livshin03bNone / NoneNational audienceIn this article we shall deal with automat...
On étudie l’application des algorithmes de décomposition matricielles tel que la Factorisation Matri...
In this paper, the phase space reconstruction of time series produced by different instruments is di...
This paper discusses design and implementation of classifying system for recognition of musical inst...
This paper presents the results of the application of a feature selection procedure to an automatic ...
In this paper, unsupervised learning is used to separate percussive and harmonic sounds from monaura...
In this paper, a class of algorithms for automatic classification of individual musical instrument s...
Abstract — In this paper, a class of algorithms for automatic classification of individual musical i...
In this paper, a new approach for automatic audio classification using non-negative matrix factoriza...
In this paper, automatic musical instrument identification using a variety of classifiers is address...
Nonnegative matrix factorization (NMF) is used to derive a novel description for the timbre of music...
Separating multiple music sources from a single channel mixture is a challenging problem. We present...
This paper introduces a new feature set based on a Non-negtive Matrix Factorization approach for the...
A novel approach using non-negative matrix factorization (NMF) for onset detection of musical notes ...
Several factors affecting the automatic classification of musical audio signals are examined. Classi...
cote interne IRCAM: Livshin03bNone / NoneNational audienceIn this article we shall deal with automat...
On étudie l’application des algorithmes de décomposition matricielles tel que la Factorisation Matri...
In this paper, the phase space reconstruction of time series produced by different instruments is di...
This paper discusses design and implementation of classifying system for recognition of musical inst...
This paper presents the results of the application of a feature selection procedure to an automatic ...
In this paper, unsupervised learning is used to separate percussive and harmonic sounds from monaura...