International audienceIn this paper, we analyze the classification performance of a likelihood-frequency-time (LiFT) analysis designed for partial tracking and automatic transcription of music using support vector machines. The LiFT analysis is based on constant-Q filtering of signals with a filter-bank designed to filter 24 quarter-tone frequencies of an octave. Using the LiFT information, features are extracted from the isolated note samples and classification of instruments and notes is performed with linear, polynomial and radial basis function kernels. Correct classification ratios are obtained for 19 instrument and 36 notes
This thesis is concerned with the problem of automatic extraction of harmonic and rhythmic informati...
Music is the most direct and effective means to express emotion, and the effective identification of...
Musical instrument recognition has gained growing concern for the promise it holds towards advances ...
International audienceIn this paper, we analyze the classification performance of a likelihood-frequ...
ABSTRACT The target of our work dealt with the problem of extracting musical content or a symbolic r...
Music transcription consists in transforming the musical content of audio data into a symbolic repre...
International audienceThis paper describes a new approach in musical instrument identification, an i...
This report investigates on the transcription of polyphonic musical signal. Onset time is determine...
Music transcription consists in transforming the musical content of audio data into a symbolic repre...
AbstractIn recent years, very large scale online music databases containing more than 10 million tra...
Music transcription consists in transforming the musical content of audio data into a symbolic repre...
We propose a novel sensor interface for detecting notes in the musical audio signals, particularly w...
The musical transcription problem seeks a low-order parametric representation of an audio signal whe...
This thesis is concerned with the problem of automatic extraction of harmonic and rhythmic informati...
Music is the most direct and effective means to express emotion, and the effective identification of...
Musical instrument recognition has gained growing concern for the promise it holds towards advances ...
International audienceIn this paper, we analyze the classification performance of a likelihood-frequ...
ABSTRACT The target of our work dealt with the problem of extracting musical content or a symbolic r...
Music transcription consists in transforming the musical content of audio data into a symbolic repre...
International audienceThis paper describes a new approach in musical instrument identification, an i...
This report investigates on the transcription of polyphonic musical signal. Onset time is determine...
Music transcription consists in transforming the musical content of audio data into a symbolic repre...
AbstractIn recent years, very large scale online music databases containing more than 10 million tra...
Music transcription consists in transforming the musical content of audio data into a symbolic repre...
We propose a novel sensor interface for detecting notes in the musical audio signals, particularly w...
The musical transcription problem seeks a low-order parametric representation of an audio signal whe...
This thesis is concerned with the problem of automatic extraction of harmonic and rhythmic informati...
Music is the most direct and effective means to express emotion, and the effective identification of...
Musical instrument recognition has gained growing concern for the promise it holds towards advances ...