Application of the minimum fuel neural network to music signals

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3 Citationer (Scopus)

Abstract

Finding an optimal representation of a signal in an over-complete dictionary is often quite difficult. Since general results in this field are not very application friendly it truly helps to specify the framework as much as possible. We investigate the method Minimum Fuel Neural Network (MFNN) for finding sparse representations of music signals. This method is a set of two ordinary differential equations. We argue that the most important parameter for optimal use of this method is the discretization step size, and we demonstrate that this can be a priori determined. This significantly speeds up the convergence of the MFNN to the optimal sparse solution.
OriginalsprogDansk
TitelProceedings of IEEE International Conference on Accoustics, Speech and Signal Processing
Antal sider4
Vol/bind4
Publikationsdato2004
Sider301-304
StatusUdgivet - 2004
BegivenhedIEEE International Conference on Acoustics, Speech, and Signal Processing - Montreal, Canada
Varighed: 17 maj 200421 maj 2004

Konference

KonferenceIEEE International Conference on Acoustics, Speech, and Signal Processing
Land/OmrådeCanada
ByMontreal
Periode17/05/200421/05/2004

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