A recurrent issue in deep learning is the scarcity of data, in particular precisely annotated data. Few publicly available databases are correctly annotated and generating correct labels is very time consuming. The present article investigates into data augmentation strategies for Neural Networks training, particularly for tasks related to drum transcription. These tasks need very precise annotations. This article investigates state-of-the-art sound transformation algorithms for remixing noise and sinusoidal parts, remixing attacks, transposing with and without time compensation and compares them to basic regularization methods such as using dropout and additive Gaussian noise. And it shows how a drum transcription algorithm based on CNN be...
In training a deep learning system to perform audio transcription, two practical problems may arise....
In the past years, several hybridization techniques have been proposed to synthesize novel audio con...
In training a deep learning system to perform audio transcription, two practical problems may arise....
Automatic drum transcription is the process of generating symbolic notation for percussion instrumen...
Within the broad problem known as automatic music transcription, we considered the specific task of ...
State-of-the-art automatic drum transcription (ADT) approaches utilise deep learning methods reliant...
Identifying musical instruments in a polyphonic music recording is a difficult yet crucial problem i...
Machine learning algorithms are the core components in a wide range of intelligent music production ...
We introduce DrummerNet, a drum transcription system that is trained in an unsupervised manner. Drum...
The problem of automatic music transcription (AMT) is considered by many researchers as the holy gra...
Automatic drum transcription is the process of generating symbolic notation for percussion instrumen...
Synthetic creation of drum sounds (e.g., in drum machines) is commonly performed using analog or dig...
In the past years, several hybridization techniques have been proposed to synthesize novel audio con...
In the past years, several hybridization techniques have been proposed to synthesize novel audio con...
State-of-the-art automatic drum transcription (ADT) ap-proaches utilise deep learning metho...
In training a deep learning system to perform audio transcription, two practical problems may arise....
In the past years, several hybridization techniques have been proposed to synthesize novel audio con...
In training a deep learning system to perform audio transcription, two practical problems may arise....
Automatic drum transcription is the process of generating symbolic notation for percussion instrumen...
Within the broad problem known as automatic music transcription, we considered the specific task of ...
State-of-the-art automatic drum transcription (ADT) approaches utilise deep learning methods reliant...
Identifying musical instruments in a polyphonic music recording is a difficult yet crucial problem i...
Machine learning algorithms are the core components in a wide range of intelligent music production ...
We introduce DrummerNet, a drum transcription system that is trained in an unsupervised manner. Drum...
The problem of automatic music transcription (AMT) is considered by many researchers as the holy gra...
Automatic drum transcription is the process of generating symbolic notation for percussion instrumen...
Synthetic creation of drum sounds (e.g., in drum machines) is commonly performed using analog or dig...
In the past years, several hybridization techniques have been proposed to synthesize novel audio con...
In the past years, several hybridization techniques have been proposed to synthesize novel audio con...
State-of-the-art automatic drum transcription (ADT) ap-proaches utilise deep learning metho...
In training a deep learning system to perform audio transcription, two practical problems may arise....
In the past years, several hybridization techniques have been proposed to synthesize novel audio con...
In training a deep learning system to perform audio transcription, two practical problems may arise....