Based on former work on automatic transcription of musical time series into sheet music (Ligges et al. (2002), Weihs and Ligges (2003, 2005)) in this paper parameters of the transcription algorithm are optimized for various real singers. Moreover, the parameters of various artificial singer models derived from the models of Rossignol et al. (1999) and Davy and Godsill (2002) are estimated. In both cases, optimization is carried out by the Nelder-Mead (1965) search algorithm. In the modelling case a hierarchical Bayes extension is estimated by WinBUGS (Spiegelhalter et al. (2004)) as well. In all cases, optimal parameters are compared to heuristic estimates from our former standard method
In this paper, we introduce a method for converting an input probabilistic piano roll (the output of...
Automatically detecting the singer by analyzing audio is a challenging task which gains in complexit...
Abstract Automatic music transcription is considered by many to be a key en-abling technology in mus...
Automatic music transcription is considered by many to be a key enabling technology in music signal ...
Singing transcription refers to the automatic conversion of a recorded singing signal into a sequenc...
In this work, a probabilistic model for multiple-instrument automatic music transcription is propose...
Contains fulltext : 59219.pdf (publisher's version ) (Open Access)Music transcript...
Transcription of music refers to the analysis of a music signal in order to produce a parametric rep...
Abstract Automatic music transcription is considered by many to be a key enabling technology in musi...
Automatic music transcription is the process of converting an audio recording into a symbolic repres...
publicationstatus: publishedpublicationstatus: publishedpublicationstatus: publishe
This thesis deals with the problem of Automatic Music Transcription (AMT), which aims to extract the...
Disertační práce se zabývá problémem úplné automatické hudební transkripce. Úplná automatická hudebn...
Aiming at optimal prediction of the correct note corresponding to a vocal time series we trained a c...
The musical transcription problem seeks a low-order parametric representation of an audio signal whe...
In this paper, we introduce a method for converting an input probabilistic piano roll (the output of...
Automatically detecting the singer by analyzing audio is a challenging task which gains in complexit...
Abstract Automatic music transcription is considered by many to be a key en-abling technology in mus...
Automatic music transcription is considered by many to be a key enabling technology in music signal ...
Singing transcription refers to the automatic conversion of a recorded singing signal into a sequenc...
In this work, a probabilistic model for multiple-instrument automatic music transcription is propose...
Contains fulltext : 59219.pdf (publisher's version ) (Open Access)Music transcript...
Transcription of music refers to the analysis of a music signal in order to produce a parametric rep...
Abstract Automatic music transcription is considered by many to be a key enabling technology in musi...
Automatic music transcription is the process of converting an audio recording into a symbolic repres...
publicationstatus: publishedpublicationstatus: publishedpublicationstatus: publishe
This thesis deals with the problem of Automatic Music Transcription (AMT), which aims to extract the...
Disertační práce se zabývá problémem úplné automatické hudební transkripce. Úplná automatická hudebn...
Aiming at optimal prediction of the correct note corresponding to a vocal time series we trained a c...
The musical transcription problem seeks a low-order parametric representation of an audio signal whe...
In this paper, we introduce a method for converting an input probabilistic piano roll (the output of...
Automatically detecting the singer by analyzing audio is a challenging task which gains in complexit...
Abstract Automatic music transcription is considered by many to be a key en-abling technology in mus...