In this paper, we propose a method called temporal correlation support vector machine (TCSVM) for automatic major-minor chord recognition in audio music. We first use robust principal component analysis to separate the singing voice from the music to reduce the influence of the singing voice and consider the temporal correlations of the chord features. Using robust principal component analysis, we expect the low-rank component of the spectrogram matrix to contain the musical accompaniment and the sparse component to contain the vocal signals. Then, we extract a new logarithmic pitch class profile (LPCP) feature called enhanced LPCP from the low-rank part. To exploit the temporal correlation among the LPCP features of chords, we propose an i...
Abstract—Accurate and compact representation of music signals is a key component of large-scale cont...
The use of artificial intelligence is common in the research of musicology, which involves the large...
peer reviewedIn this paper, we consider the challenging problem of music recognition and present an ...
In this paper, we propose a method called temporal correlation support vector machine (TCSVM) for au...
Music is the most direct and effective means to express emotion, and the effective identification of...
International audienceIn this paper, we consider the challenging problem of music recognition and pr...
In this paper, we consider the challenging problem of mu-sic recognition and present an effective ma...
In this paper, a feature vector called the Enhanced Pitch Class Profile (EPCP) is introduced for aut...
For the MIREX 2010 Audio Chord Extraction task, we submitted a total of four systems. Our base syste...
This thesis is concerned with the automatic transcription of chords from audio, with an emphasis on ...
Harmonic progression is one of the cornerstones of tonal music composition and is thereby essential ...
This thesis is concerned with the problem of automatic extraction of harmonic and rhythmic informati...
International audienceIn this paper, we analyze the classification performance of a likelihood-frequ...
Using Mel-spectrograms, this study evaluates the effectiveness of Convolutional Neural Networks (CNN...
Chord sequences are a compact and useful description of music, representing each beat or measure in ...
Abstract—Accurate and compact representation of music signals is a key component of large-scale cont...
The use of artificial intelligence is common in the research of musicology, which involves the large...
peer reviewedIn this paper, we consider the challenging problem of music recognition and present an ...
In this paper, we propose a method called temporal correlation support vector machine (TCSVM) for au...
Music is the most direct and effective means to express emotion, and the effective identification of...
International audienceIn this paper, we consider the challenging problem of music recognition and pr...
In this paper, we consider the challenging problem of mu-sic recognition and present an effective ma...
In this paper, a feature vector called the Enhanced Pitch Class Profile (EPCP) is introduced for aut...
For the MIREX 2010 Audio Chord Extraction task, we submitted a total of four systems. Our base syste...
This thesis is concerned with the automatic transcription of chords from audio, with an emphasis on ...
Harmonic progression is one of the cornerstones of tonal music composition and is thereby essential ...
This thesis is concerned with the problem of automatic extraction of harmonic and rhythmic informati...
International audienceIn this paper, we analyze the classification performance of a likelihood-frequ...
Using Mel-spectrograms, this study evaluates the effectiveness of Convolutional Neural Networks (CNN...
Chord sequences are a compact and useful description of music, representing each beat or measure in ...
Abstract—Accurate and compact representation of music signals is a key component of large-scale cont...
The use of artificial intelligence is common in the research of musicology, which involves the large...
peer reviewedIn this paper, we consider the challenging problem of music recognition and present an ...