In this dissertation, we propose methods for sparse and nonnegative factorization that are specifically suited for analyzing musical signals. First, we discuss two constraints that aid factorization of musical signals: harmonic and co-occurrence constraints. We propose a novel dictionary learning method that imposes harmonic constraints upon the atoms of the learned dictionary while allowing the dictionary size to grow appropriately during the learning procedure. When there is significant spectral-temporal overlap among the musical sources, our method outperforms popular existing matrix factorization methods as measured by the recall and precision of learned dictionary atoms. We also propose co-occurrence constraints -- three simple and con...
International audienceIn this paper, a new class of audio representations is introduced, together wi...
In order to perform many signal processing tasks such as classification,pattern recognition and codi...
International audienceThis paper investigates the use of musical priors for sparse expansion of audi...
Within the last few decades a number of new signal processing tools has appeared. These have mainly ...
Redundancy reduction has been proposed as the main computational process in the primary sensory path...
A dedicated algorithm for sparse spectral representation of music sound is presented. The goal is to...
© 2012 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
PhdAutomatic Music Transcription seeks a machine understanding of a musical signal in terms of pitch...
A dedicated algorithm for sparse spectral representation of music sound is presented. The goal is to...
2007 Music Information Retrieval Evaluation eXchange (MIREX)International audiencePolyphonic pitch t...
A dedicated algorithm for sparse spectral representation of music sound is presented. The goal is to...
International audienceSeveral studies have pointed out the need for accurate mid-level representatio...
International audienceSeveral studies have pointed out the need for accurate mid-level representatio...
A simple scheme for compressing sparse representation of melodic music is outlined. The method is de...
A simple scheme for compressing sparse representation of melodic music is outlined. The method is de...
International audienceIn this paper, a new class of audio representations is introduced, together wi...
In order to perform many signal processing tasks such as classification,pattern recognition and codi...
International audienceThis paper investigates the use of musical priors for sparse expansion of audi...
Within the last few decades a number of new signal processing tools has appeared. These have mainly ...
Redundancy reduction has been proposed as the main computational process in the primary sensory path...
A dedicated algorithm for sparse spectral representation of music sound is presented. The goal is to...
© 2012 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
PhdAutomatic Music Transcription seeks a machine understanding of a musical signal in terms of pitch...
A dedicated algorithm for sparse spectral representation of music sound is presented. The goal is to...
2007 Music Information Retrieval Evaluation eXchange (MIREX)International audiencePolyphonic pitch t...
A dedicated algorithm for sparse spectral representation of music sound is presented. The goal is to...
International audienceSeveral studies have pointed out the need for accurate mid-level representatio...
International audienceSeveral studies have pointed out the need for accurate mid-level representatio...
A simple scheme for compressing sparse representation of melodic music is outlined. The method is de...
A simple scheme for compressing sparse representation of melodic music is outlined. The method is de...
International audienceIn this paper, a new class of audio representations is introduced, together wi...
In order to perform many signal processing tasks such as classification,pattern recognition and codi...
International audienceThis paper investigates the use of musical priors for sparse expansion of audi...