Instrument recognition is a fundamental task in music information retrieval, yet little has been done to predict the presence of instruments in multi-instrument music for each time frame. This task is important for not only automatic transcription but also many retrieval problems. In this paper, we use the newly released MusicNet dataset to study this front, by building and evaluating a convolutional neural network for making frame-level instrument prediction. We consider it as a multi-label classification problem for each frame and use frame-level annotations as the supervisory signal in training the network. Moreover, we experiment with different ways to incorporate pitch information to our model, with the premise that doing so informs th...
While neural network models are making significant progress in piano transcription, they are becomin...
In this paper, a method for pitch independent musical instrument recognition using artificial neural...
Automatic music tagging systems have once more gained relevance over the last years, not least throu...
This paper proposes a deep convolutional neural network for performing note-level instrument assignm...
While the automatic recognition of musical instruments has seen significant progress, the task is st...
This paper proposes a deep convolutional neural network for performing note-level instrument assignm...
Automatic musical instrument recognition is an important aspect of machine listening. In this projec...
Although instrument recognition has been thoroughly research, recognition in polyphonic music still ...
Abstract: This paper addresses musical sounds recognition produced by different instrument. Various ...
This paper addresses musical sounds recognition produced by different instrument and focus on classi...
This paper addresses musical sounds recognition produced by different instrument and focus on classi...
Identifying musical instruments in a polyphonic music recording is a difficult yet crucial problem i...
Chroma or pitch-class representations of audio recordings are an essential tool in music information...
Predominant instrument recognition in polyphonic music is addressed using the score-level fusion of ...
In recent years, complex convolutional neural network architectures such as the Inception architectu...
While neural network models are making significant progress in piano transcription, they are becomin...
In this paper, a method for pitch independent musical instrument recognition using artificial neural...
Automatic music tagging systems have once more gained relevance over the last years, not least throu...
This paper proposes a deep convolutional neural network for performing note-level instrument assignm...
While the automatic recognition of musical instruments has seen significant progress, the task is st...
This paper proposes a deep convolutional neural network for performing note-level instrument assignm...
Automatic musical instrument recognition is an important aspect of machine listening. In this projec...
Although instrument recognition has been thoroughly research, recognition in polyphonic music still ...
Abstract: This paper addresses musical sounds recognition produced by different instrument. Various ...
This paper addresses musical sounds recognition produced by different instrument and focus on classi...
This paper addresses musical sounds recognition produced by different instrument and focus on classi...
Identifying musical instruments in a polyphonic music recording is a difficult yet crucial problem i...
Chroma or pitch-class representations of audio recordings are an essential tool in music information...
Predominant instrument recognition in polyphonic music is addressed using the score-level fusion of ...
In recent years, complex convolutional neural network architectures such as the Inception architectu...
While neural network models are making significant progress in piano transcription, they are becomin...
In this paper, a method for pitch independent musical instrument recognition using artificial neural...
Automatic music tagging systems have once more gained relevance over the last years, not least throu...