In this paper, we present two methods based on neural networks for the automatic transcription of polyphonic piano music. The input to these methods consists in piano music recordings stored in WAV files, while the pitch of all the notes in the corresponding score forms the output. The aim of this work is to compare the accuracy achieved using a feed-forward neural network, such as the MLP (MultiLayer Perceptron), with that supplied by a recurrent neural network, such as the ENN (Elman Neural Network). Signal processing techniques based on the CQT (Constant-Q Transform) are used in order to create a time-frequency representation of the input signals. Since large scale tests were required, the whole process (synthesis of audio data generated...
The aim of this thesis is to explore new ways of generating unique polyphonic music using neural net...
Music transcription consists in transforming the musical content of audio data into a symbolic repre...
We present a supervised neural network model for polyphonic piano music transcription. The architect...
In this paper, we present two methods based on neural networks for the automatic transcription of po...
In this paper, we present two methods based on neural networks for the automatic transcription of po...
Abstract — In this paper, we present a connectionist approach to automatic transcription of polyphon...
We present a framework based on neural networks to extract music scores directly from polyphonic aud...
Music transcription consists in transforming the musical content of audio data into a symbolic repre...
This work aims to propose a novel model to perform automatic music transcription of polyphonic audio...
Automatic music transcription (AMT) is the problem of analyzing an audio recording of a musical piec...
Music transcription consists in transforming the musical content of audio data into a symbolic repre...
Transcription is the task of writing down instructions on how to play a particular piece of music, i...
We explore a novel way of conceptualising the task of polyphonic music transcription, using so-calle...
Music transcription consists in transforming the musical content of audio data into a symbolic repr...
The aim of this thesis is to explore new ways of generating unique polyphonic music using neural net...
Music transcription consists in transforming the musical content of audio data into a symbolic repre...
We present a supervised neural network model for polyphonic piano music transcription. The architect...
In this paper, we present two methods based on neural networks for the automatic transcription of po...
In this paper, we present two methods based on neural networks for the automatic transcription of po...
Abstract — In this paper, we present a connectionist approach to automatic transcription of polyphon...
We present a framework based on neural networks to extract music scores directly from polyphonic aud...
Music transcription consists in transforming the musical content of audio data into a symbolic repre...
This work aims to propose a novel model to perform automatic music transcription of polyphonic audio...
Automatic music transcription (AMT) is the problem of analyzing an audio recording of a musical piec...
Music transcription consists in transforming the musical content of audio data into a symbolic repre...
Transcription is the task of writing down instructions on how to play a particular piece of music, i...
We explore a novel way of conceptualising the task of polyphonic music transcription, using so-calle...
Music transcription consists in transforming the musical content of audio data into a symbolic repr...
The aim of this thesis is to explore new ways of generating unique polyphonic music using neural net...
Music transcription consists in transforming the musical content of audio data into a symbolic repre...
We present a supervised neural network model for polyphonic piano music transcription. The architect...