The state-of-the-art methods for drum transcription in the presence of melodic instruments (DTM) are machine learning models trained in a supervised manner, which means that they rely on labeled datasets. The problem is that the available public datasets are limited either in size or in realism, and are thus suboptimal for training purposes. Indeed, the best results are currently obtained via a rather convoluted multi-step training process that involves both real and synthetic datasets. To address this issue, starting from the observation that the communities of rhythm games players provide a large amount of annotated data, we curated a new dataset of crowdsourced drum transcriptions. This dataset contains real-world music, is manually anno...
In Western popular music, drums and percussion are an important means to emphasize and shape the rhy...
Machine learning algorithms are the core components in a wide range of intelligent music production ...
Despite the central role that melody plays in music perception, it remains an open challenge in MIR ...
The state-of-the-art methods for drum transcription in the presence of melodic instruments (DTM) are...
The state-of-the-art methods for drum transcription in the presence of melodic instruments (DTM) are...
The state-of-the-art methods for drum transcription in the presence of melodic instruments (DTM) are...
Within the broad problem known as automatic music transcription, we considered the specific task of ...
Automatic Drum Transcription (ADT) is a sub-task of automatic music transcription that involves the ...
State-of-the-art automatic drum transcription (ADT) approaches utilise deep learning methods reliant...
Automatic Drum Transcription (ADT), like many other music information retrieval tasks, has made prog...
State-of-the-art automatic drum transcription (ADT) ap-proaches utilise deep learning metho...
Data-driven approaches to automatic drum transcription (ADT) are often limited to a predefined, smal...
Machine learning algorithms are the core components in a wide range of intelligent music production ...
State-of-the-art automatic drum transcription (ADT) ap-proaches utilise deep learning metho...
In Western popular music, drums and percussion are an important means to emphasize and shape the rhy...
In Western popular music, drums and percussion are an important means to emphasize and shape the rhy...
Machine learning algorithms are the core components in a wide range of intelligent music production ...
Despite the central role that melody plays in music perception, it remains an open challenge in MIR ...
The state-of-the-art methods for drum transcription in the presence of melodic instruments (DTM) are...
The state-of-the-art methods for drum transcription in the presence of melodic instruments (DTM) are...
The state-of-the-art methods for drum transcription in the presence of melodic instruments (DTM) are...
Within the broad problem known as automatic music transcription, we considered the specific task of ...
Automatic Drum Transcription (ADT) is a sub-task of automatic music transcription that involves the ...
State-of-the-art automatic drum transcription (ADT) approaches utilise deep learning methods reliant...
Automatic Drum Transcription (ADT), like many other music information retrieval tasks, has made prog...
State-of-the-art automatic drum transcription (ADT) ap-proaches utilise deep learning metho...
Data-driven approaches to automatic drum transcription (ADT) are often limited to a predefined, smal...
Machine learning algorithms are the core components in a wide range of intelligent music production ...
State-of-the-art automatic drum transcription (ADT) ap-proaches utilise deep learning metho...
In Western popular music, drums and percussion are an important means to emphasize and shape the rhy...
In Western popular music, drums and percussion are an important means to emphasize and shape the rhy...
Machine learning algorithms are the core components in a wide range of intelligent music production ...
Despite the central role that melody plays in music perception, it remains an open challenge in MIR ...