This dissertation presents ten studies focusing on three important subfields of music information retrieval (MIR): music transcription (Part A), music perception (Part B), and music production (Part C). In Part A, systems capable of transcribing rhythm and polyphonic pitch are described. The first two publications present methods for tempo estimation and beat tracking. A method is developed for computing the most salient periodicity (the “cepstroid”), and the computed cepstroid is used to guide the machine learning processing. The polyphonic pitch tracking system uses novel pitch-invariant and tone-shift-invariant processing techniques. Furthermore, the neural flux is introduced – a latent feature for onset and offset detection. The transcr...
In this paper, we investigate the use of Music Language Models (MLMs) for improving Automatic Music ...
Modelling music with mathematical and statistical methods in general, and with neural networks in pa...
PhDMusic understanding is a process closely related to the knowledge and experience of the listener...
This dissertation presents ten studies focusing on three important subfields of music information re...
The research field of automatic music transcription has vastly grown during the 21st century, where ...
We investigate the modelling of polyphonic “tracker music” using deep neural networks. Tracker music...
Automatic music transcription is the process of converting an audio recording into a symbolic repres...
Transcription of music refers to the analysis of a music signal in order to produce a parametric rep...
With the breakthrough of machine learning techniques, the research concerning music emotion classifi...
This thesis is about the automatic detection and classification of sound events (e.g. notes or percu...
This thesis is focussed on inferring score level information from low-level symbolic musical data. I...
In our daily lives, we are constantly surrounded by music, and we are deeply influenced by music. Ma...
Automatic music transcription (AMT) is a critical problem in the field of music information retrieva...
PhDThe task of automatic music transcription has been studied for several decades and is regarded as...
When listening to music, some humans can easily recognize which instruments play at what time or whe...
In this paper, we investigate the use of Music Language Models (MLMs) for improving Automatic Music ...
Modelling music with mathematical and statistical methods in general, and with neural networks in pa...
PhDMusic understanding is a process closely related to the knowledge and experience of the listener...
This dissertation presents ten studies focusing on three important subfields of music information re...
The research field of automatic music transcription has vastly grown during the 21st century, where ...
We investigate the modelling of polyphonic “tracker music” using deep neural networks. Tracker music...
Automatic music transcription is the process of converting an audio recording into a symbolic repres...
Transcription of music refers to the analysis of a music signal in order to produce a parametric rep...
With the breakthrough of machine learning techniques, the research concerning music emotion classifi...
This thesis is about the automatic detection and classification of sound events (e.g. notes or percu...
This thesis is focussed on inferring score level information from low-level symbolic musical data. I...
In our daily lives, we are constantly surrounded by music, and we are deeply influenced by music. Ma...
Automatic music transcription (AMT) is a critical problem in the field of music information retrieva...
PhDThe task of automatic music transcription has been studied for several decades and is regarded as...
When listening to music, some humans can easily recognize which instruments play at what time or whe...
In this paper, we investigate the use of Music Language Models (MLMs) for improving Automatic Music ...
Modelling music with mathematical and statistical methods in general, and with neural networks in pa...
PhDMusic understanding is a process closely related to the knowledge and experience of the listener...