In this paper we present a graphical model for polyphonic music transcription. Our model, formulated as a Dynamical Bayesian Network, embodies a transparent and computationally tractable approach to this acoustic analysis problem. An advantage of our approach is that it places emphasis on explicitly modelling the sound generation procedure. It provides a clear framework in which both high level (cognitive) prior information on music structure can be coupled with low level (acoustic physical) information in a principled manner to perform the analysis. The model is a special case of the, generally intractable, Switching Kalman Filters. Where possible, we derive, exact polynomial time inference procedures, and otherwise efficient approximation...
Thesis (Ph.D.)--University of Washington, 2021Generative models can serve as a powerful primitive fo...
This paper presents a new probabilistic model that can align multiple performances of a particular p...
We present a neural network model for polyphonic music transcription. The architecture of the propos...
Contains fulltext : 36151.pdf (publisher's version ) (Closed access)In this paper ...
Music transcription refers to extraction of a human readable and interpretable description from a re...
This paper describes automatic music transcription with chord estimation for music audio signals. We...
This thesis presents several hierarchical generative Bayesian models of musical signals designed to ...
National audienceThe performance of many MIR analysis algorithms, most importantly polyphonic pitch ...
This paper deals with the computational analysis of musical audio from recorded audio waveforms. Thi...
We explore a novel way of conceptualising the task of polyphonic music transcription, using so-calle...
The problem of automatic music transcription (AMT) is considered by many researchers as the holy gra...
The purpose of this research was to create a computational model of music transcription. The compute...
This thesis presents techniques for the modelling of musical signals, with particular regard to mono...
This paper proposes a Bayesian method for polyphonic music description. The method first divides an ...
In this paper models and algorithms are presented for transcription of pitch and timings in polyphon...
Thesis (Ph.D.)--University of Washington, 2021Generative models can serve as a powerful primitive fo...
This paper presents a new probabilistic model that can align multiple performances of a particular p...
We present a neural network model for polyphonic music transcription. The architecture of the propos...
Contains fulltext : 36151.pdf (publisher's version ) (Closed access)In this paper ...
Music transcription refers to extraction of a human readable and interpretable description from a re...
This paper describes automatic music transcription with chord estimation for music audio signals. We...
This thesis presents several hierarchical generative Bayesian models of musical signals designed to ...
National audienceThe performance of many MIR analysis algorithms, most importantly polyphonic pitch ...
This paper deals with the computational analysis of musical audio from recorded audio waveforms. Thi...
We explore a novel way of conceptualising the task of polyphonic music transcription, using so-calle...
The problem of automatic music transcription (AMT) is considered by many researchers as the holy gra...
The purpose of this research was to create a computational model of music transcription. The compute...
This thesis presents techniques for the modelling of musical signals, with particular regard to mono...
This paper proposes a Bayesian method for polyphonic music description. The method first divides an ...
In this paper models and algorithms are presented for transcription of pitch and timings in polyphon...
Thesis (Ph.D.)--University of Washington, 2021Generative models can serve as a powerful primitive fo...
This paper presents a new probabilistic model that can align multiple performances of a particular p...
We present a neural network model for polyphonic music transcription. The architecture of the propos...