The use of artificial intelligence to solve problems that were not previously viable is growing exponentially. One of these problems is obtaining the musical notes (the music score) given a song in audio format. This task has a high complexity due to the large number of notes that can be played at the same time by different instruments. This project makes use of the Musicnet dataset which provides the audio data of 330 songs with their corresponding note labels. To extract relevant information and derive the features, Constant-Q Transform has been applied to transform the audio data to the frequency domain in a logarithmic scale. In addition, one-hot encoding vectors have been used to represent the output data, i.e., the music notes. Then, ...
International audienceI present a neural network approach to automatically extract musical features ...
Automatic Music Transcription (AMT), in particular the problem of automatically extracting notes fro...
In this work, we present an end-to-end framework for audio-to-score transcription. To the best of ou...
The use of artificial intelligence to solve problems that were not previously viable is growing expo...
Automatic music transcription (AMT) is the problem of analyzing an audio recording of a musical piec...
We present a framework based on neural networks to extract music scores directly from polyphonic aud...
In this paper, we present two methods based on neural networks for the automatic transcription of po...
Transcription is the task of writing down instructions on how to play a particular piece of music, i...
This work aims to propose a novel model to perform automatic music transcription of polyphonic audio...
Music transcription involves the transformation of an audio recording to common music notation, coll...
In this paper, we present two methods based on neural networks for the automatic transcription of po...
Automātiska nošu atpazīšana mūzikā ir sarežģīts uzdevums, kurā mūsdienās labākos rezultātus sasniedz...
This paper describes two neural network architectures for solving problems encountered in the develo...
The problem of automatic music transcription (AMT) is considered by many researchers as the holy gra...
In this paper musical instrument recognition and transcription for piano, guitar, violin is discusse...
International audienceI present a neural network approach to automatically extract musical features ...
Automatic Music Transcription (AMT), in particular the problem of automatically extracting notes fro...
In this work, we present an end-to-end framework for audio-to-score transcription. To the best of ou...
The use of artificial intelligence to solve problems that were not previously viable is growing expo...
Automatic music transcription (AMT) is the problem of analyzing an audio recording of a musical piec...
We present a framework based on neural networks to extract music scores directly from polyphonic aud...
In this paper, we present two methods based on neural networks for the automatic transcription of po...
Transcription is the task of writing down instructions on how to play a particular piece of music, i...
This work aims to propose a novel model to perform automatic music transcription of polyphonic audio...
Music transcription involves the transformation of an audio recording to common music notation, coll...
In this paper, we present two methods based on neural networks for the automatic transcription of po...
Automātiska nošu atpazīšana mūzikā ir sarežģīts uzdevums, kurā mūsdienās labākos rezultātus sasniedz...
This paper describes two neural network architectures for solving problems encountered in the develo...
The problem of automatic music transcription (AMT) is considered by many researchers as the holy gra...
In this paper musical instrument recognition and transcription for piano, guitar, violin is discusse...
International audienceI present a neural network approach to automatically extract musical features ...
Automatic Music Transcription (AMT), in particular the problem of automatically extracting notes fro...
In this work, we present an end-to-end framework for audio-to-score transcription. To the best of ou...