This thesis presents techniques for the modelling of musical signals, with particular regard to monophonic and polyphonic pitch estimation. Musical signals are modelled as a set of notes, each comprising of a set of harmonically-related sinusoids. An hierarchical model is presented that is very general and applicable to any signal that can be decomposed as the sum of basis functions. Parameter estimation is posed within a Bayesian framework, allowing for the incorporation of prior information about model parameters. The resulting posterior distribution is of variable dimension and so reversible jump MCMC simulation techniques are employed for the parameter estimation task. The extension of the model to time-varying signals with high posteri...
In this paper models and algorithms are presented for transcription of pitch and timings in polyphon...
This thesis is concerned with the problem of automatic extraction of harmonic and rhythmic informati...
Contains fulltext : 36151.pdf (publisher's version ) (Closed access)In this paper ...
This thesis presents several hierarchical generative Bayesian models of musical signals designed to ...
Estimating the pitch of musical signals is complicated by the pres-ence of partials in addition to t...
We propose a Bayesian monaural source separation system to extract each individual tone from mixture...
This paper deals with the computational analysis of musical audio from recorded audio waveforms. Thi...
This paper deals with the computational analysis of musical audio from recorded audio waveforms. Thi...
This paper deals with the computational analysis of musical audio from recorded audio waveforms. Thi...
This paper proposes a Bayesian method for polyphonic music description. The method first divides an ...
This thesis proposes techniques for object-based audio and music. The work can be divided into two p...
The structured arrangement of sounds in musical pieces, results in the unique creation of complex ac...
This thesis proposes signal processing methods for the analysis of musical audio on two time scales:...
In this paper we describe recent advances in harmonic models for musical signal analysis. In particu...
In this paper we present a graphical model for polyphonic music transcription. Our model, formulated...
In this paper models and algorithms are presented for transcription of pitch and timings in polyphon...
This thesis is concerned with the problem of automatic extraction of harmonic and rhythmic informati...
Contains fulltext : 36151.pdf (publisher's version ) (Closed access)In this paper ...
This thesis presents several hierarchical generative Bayesian models of musical signals designed to ...
Estimating the pitch of musical signals is complicated by the pres-ence of partials in addition to t...
We propose a Bayesian monaural source separation system to extract each individual tone from mixture...
This paper deals with the computational analysis of musical audio from recorded audio waveforms. Thi...
This paper deals with the computational analysis of musical audio from recorded audio waveforms. Thi...
This paper deals with the computational analysis of musical audio from recorded audio waveforms. Thi...
This paper proposes a Bayesian method for polyphonic music description. The method first divides an ...
This thesis proposes techniques for object-based audio and music. The work can be divided into two p...
The structured arrangement of sounds in musical pieces, results in the unique creation of complex ac...
This thesis proposes signal processing methods for the analysis of musical audio on two time scales:...
In this paper we describe recent advances in harmonic models for musical signal analysis. In particu...
In this paper we present a graphical model for polyphonic music transcription. Our model, formulated...
In this paper models and algorithms are presented for transcription of pitch and timings in polyphon...
This thesis is concerned with the problem of automatic extraction of harmonic and rhythmic informati...
Contains fulltext : 36151.pdf (publisher's version ) (Closed access)In this paper ...