The Synth-salience Choral Set (SSCS) is a publicly available dataset for voice assignment based on pitch salience. The dataset was created to support research on voice assignment based on pitch salience. By definition, an “ideal” pitch salience representation of a music recording is zero everywhere where there is no perceptible pitch, and has a positive value that reflects the pitches’ perceived energy at the frequency bins of the corresponding F0 values. In practice, for a normalized synthetic pitch salience function we assume a value equal to the maximum energy (salience), i. e., 1, in the time-frequency bins that correspond to the notes present in a song, and 0 elsewhere. We obtain such a synthetic pitch salience representation directl...
General description: This dataset was created in the context of the Pablo project, partially funded...
This paper deals with the automatic transcription of four-part, a cappella singing, audio performanc...
Human voice recognition is a crucial task in music information retrieval. In this master thesis we d...
Choral Singing Dataset This dataset was presented at the 15th ICMPC/10th ESCOM conference together ...
Ensemble singing is a well-established practice across cultures, found in a great diversity of forms...
The dataset used in the paper: Gong, Rong; Yang, Yile; Serra, Xavier; Pitch Contour Segmentation ...
Cantoría dataset is a multi-track dataset of 11 songs performed by the professional vocal quartet Ca...
The goals of this thesis are the creation of new datasets to study aspects of choir singing, focusin...
ESMUC Choir Dataset is a multi-track dataset of Western choral music that contains individual audio ...
Comunicació presentada al 4th International Workshop on Digital Libraries for Musicology celebrat el...
This is a polyphonic music dataset which can be used for versatile research problems, such as Multi-...
Choral music separation refers to the task of extracting tracks of voice parts (e.g., soprano, alto,...
High-quality datasets for learning-based modelling of polyphonic symbolic music remain less readily-...
In our daily lives, we are constantly surrounded by music, and we are deeply influenced by music. Ma...
Orchset is intended to be used as a dataset for the development and evaluation of melody extraction ...
General description: This dataset was created in the context of the Pablo project, partially funded...
This paper deals with the automatic transcription of four-part, a cappella singing, audio performanc...
Human voice recognition is a crucial task in music information retrieval. In this master thesis we d...
Choral Singing Dataset This dataset was presented at the 15th ICMPC/10th ESCOM conference together ...
Ensemble singing is a well-established practice across cultures, found in a great diversity of forms...
The dataset used in the paper: Gong, Rong; Yang, Yile; Serra, Xavier; Pitch Contour Segmentation ...
Cantoría dataset is a multi-track dataset of 11 songs performed by the professional vocal quartet Ca...
The goals of this thesis are the creation of new datasets to study aspects of choir singing, focusin...
ESMUC Choir Dataset is a multi-track dataset of Western choral music that contains individual audio ...
Comunicació presentada al 4th International Workshop on Digital Libraries for Musicology celebrat el...
This is a polyphonic music dataset which can be used for versatile research problems, such as Multi-...
Choral music separation refers to the task of extracting tracks of voice parts (e.g., soprano, alto,...
High-quality datasets for learning-based modelling of polyphonic symbolic music remain less readily-...
In our daily lives, we are constantly surrounded by music, and we are deeply influenced by music. Ma...
Orchset is intended to be used as a dataset for the development and evaluation of melody extraction ...
General description: This dataset was created in the context of the Pablo project, partially funded...
This paper deals with the automatic transcription of four-part, a cappella singing, audio performanc...
Human voice recognition is a crucial task in music information retrieval. In this master thesis we d...