This paper presents a method for automatic music transcription applied to audio recordings of a cappella performances with multiple singers. We propose a system for multi-pitch detection and voice assignment that integrates an acoustic and a music language model. The acoustic model performs spectrogram decomposition, extending probabilistic latent component analysis (PLCA) using a six-dimensional dictionary with pre-extracted log-spectral templates. The music language model performs voice separation and assignment using hidden Markov models that apply musicological assumptions. By integrating the two models, the system is able to detect multiple concurrent pitches in polyphonic vocal music and assign each detected pitch to a specific voice ...
Much polyphonic music is constructed from several melodic lines - known as voices - woven together. ...
Trained human listeners show a remarkable ability to identify singers from their voices alone even i...
publicationstatus: publishedpublicationstatus: publishedpublicationstatus: publishe
This paper presents a multi-pitch detection and voice assignment method applied to audio recordings ...
This paper deals with the automatic transcription of four-part, a cappella singing, audio performanc...
This paper proposes a method for the automatic transcription of singing melodies in polyphonic music...
This work presents a probabilistic latent component analysis (PLCA) method applied to automatic musi...
Transcription of music refers to the analysis of a music signal in order to produce a parametric rep...
In this paper, a method for multiple-instrument automatic music transcription is proposed that model...
Automatic transcription of polyphonic music has been an active re-search field for several years and...
A method for automatic transcription of polyphonic music is proposed in this work that models the te...
Recently there has been a greater need to analyze, summarize, and categorize the increasing amount o...
The goals of this thesis are the creation of new datasets to study aspects of choir singing, focusin...
publicationstatus: publishedpublicationstatus: publishedpublicationstatus: publishedIn this paper, a...
In this work, a probabilistic model for multiple-instrument automatic music transcription is propose...
Much polyphonic music is constructed from several melodic lines - known as voices - woven together. ...
Trained human listeners show a remarkable ability to identify singers from their voices alone even i...
publicationstatus: publishedpublicationstatus: publishedpublicationstatus: publishe
This paper presents a multi-pitch detection and voice assignment method applied to audio recordings ...
This paper deals with the automatic transcription of four-part, a cappella singing, audio performanc...
This paper proposes a method for the automatic transcription of singing melodies in polyphonic music...
This work presents a probabilistic latent component analysis (PLCA) method applied to automatic musi...
Transcription of music refers to the analysis of a music signal in order to produce a parametric rep...
In this paper, a method for multiple-instrument automatic music transcription is proposed that model...
Automatic transcription of polyphonic music has been an active re-search field for several years and...
A method for automatic transcription of polyphonic music is proposed in this work that models the te...
Recently there has been a greater need to analyze, summarize, and categorize the increasing amount o...
The goals of this thesis are the creation of new datasets to study aspects of choir singing, focusin...
publicationstatus: publishedpublicationstatus: publishedpublicationstatus: publishedIn this paper, a...
In this work, a probabilistic model for multiple-instrument automatic music transcription is propose...
Much polyphonic music is constructed from several melodic lines - known as voices - woven together. ...
Trained human listeners show a remarkable ability to identify singers from their voices alone even i...
publicationstatus: publishedpublicationstatus: publishedpublicationstatus: publishe