This paper demonstrates the superiority of energy-based features derived from the knowledge of predominant-pitch, for singing voice detection in polyphonic music over commonly used spectral features. However, such energy-based features tend to misclassify loud, pitched instruments. To provide robustness to such accompaniment we exploit the relative instability of the pitch contour of the singing voice by attenuating harmonic spectral content belonging to stable-pitch instruments, using sinusoidal modeling. The obtained feature shows high classification accuracy when applied to north Indian classical music data and is also found suitable for automatic detection of vocal-instrumental boundaries required for smoothing the frame-level classifie...
Separating singing voice from music accompaniment has wide applications in areas such as automatic l...
This paper describes a computationally efficient method for estimating the predominant pitch in audi...
Trained human listeners show a remarkable ability to identify singers from their voices alone even i...
This paper demonstrates the superiority of energy-based features derived from the knowledge of predo...
Abstract — Singing voice detection is essential for content-based applications such as those involvi...
Melody extraction algorithms for single-channel polyphonic music typically rely on the salience of t...
Singing Voice Detection is the problem of automatically identifying the parts of a polyphonic music ...
Music being an industry with a vast digital presence, today, we have access to a large number of aud...
Speech and singing voice discrimination is an important task in the speech processing area given tha...
Automated detection of phonemes in polyphonic music is an important prerequisite for synchronizing m...
Automatic singing detection and singing phoneme recognition are two MIR research topics that have ga...
10.1109/ICME.2006.2626642006 IEEE International Conference on Multimedia and Expo, ICME 2006 - Proce...
International audienceThe singing voice and melody are important characteristics of music signals. I...
In this paper, a feature set derived from modulation spectra is applied to the task of detecting sin...
Detecting pitch values for singing voice in the presence of music accompaniment is challenging but u...
Separating singing voice from music accompaniment has wide applications in areas such as automatic l...
This paper describes a computationally efficient method for estimating the predominant pitch in audi...
Trained human listeners show a remarkable ability to identify singers from their voices alone even i...
This paper demonstrates the superiority of energy-based features derived from the knowledge of predo...
Abstract — Singing voice detection is essential for content-based applications such as those involvi...
Melody extraction algorithms for single-channel polyphonic music typically rely on the salience of t...
Singing Voice Detection is the problem of automatically identifying the parts of a polyphonic music ...
Music being an industry with a vast digital presence, today, we have access to a large number of aud...
Speech and singing voice discrimination is an important task in the speech processing area given tha...
Automated detection of phonemes in polyphonic music is an important prerequisite for synchronizing m...
Automatic singing detection and singing phoneme recognition are two MIR research topics that have ga...
10.1109/ICME.2006.2626642006 IEEE International Conference on Multimedia and Expo, ICME 2006 - Proce...
International audienceThe singing voice and melody are important characteristics of music signals. I...
In this paper, a feature set derived from modulation spectra is applied to the task of detecting sin...
Detecting pitch values for singing voice in the presence of music accompaniment is challenging but u...
Separating singing voice from music accompaniment has wide applications in areas such as automatic l...
This paper describes a computationally efficient method for estimating the predominant pitch in audi...
Trained human listeners show a remarkable ability to identify singers from their voices alone even i...