An ideal music synthesizer should be both interactive and expressive, generating high-fidelity audio in realtime for arbitrary combinations of instruments and notes. Recent neural synthesizers have exhibited a tradeoff between domain-specific models that offer detailed control of only specific instruments, or raw waveform models that can train on any music but with minimal control and slow generation. In this work, we focus on a middle ground of neural synthesizers that can generate audio from MIDI sequences with arbitrary combinations of instruments in realtime. This enables training on a wide range of transcription datasets with a single model, which in turn offers note-level control of composition and instrumentation across a wide range ...
While synthesizers have become commonplace in music production, many users find it difficult to cont...
Fast and user-controllable music generation could enable novel ways of composing or performing music...
We propose a novel approach to automated rhythm generation in which a Transformer XL model is employ...
An ideal music synthesizer should be both interactive and expressive, generating high-fidelity audio...
FM Synthesis is a well-known algorithm used to generate complex timbre from a compact set of design ...
Deep neural networks have been successfully applied to audio synthesis. Such neural audio generation...
Neural audio synthesis is an actively researched topic, having yielded a wide range of techniques th...
Generating data from complex data distributions has been a long-standing problem in the field of art...
Autoregressive neural networks, such as WaveNet, have opened up new avenues for expressive audio syn...
In this study, we investigate the usage of generative adversarial networks for modelling a collectio...
We introduce MIDI-VAE, a neural network model based on Variational Autoencoders that is capable of h...
A deformable musical instrument can take numerous distinct shapes with its non-rigid features. Build...
International audienceRecent progress in deep learning for audio synthesis opens the way to models t...
With an optimal network topology and tuning of hyperpa- rameters, artificial neural networks (ANNs)...
This work consist of a hybrid system: a neural network for data compression and a generic algorithm ...
While synthesizers have become commonplace in music production, many users find it difficult to cont...
Fast and user-controllable music generation could enable novel ways of composing or performing music...
We propose a novel approach to automated rhythm generation in which a Transformer XL model is employ...
An ideal music synthesizer should be both interactive and expressive, generating high-fidelity audio...
FM Synthesis is a well-known algorithm used to generate complex timbre from a compact set of design ...
Deep neural networks have been successfully applied to audio synthesis. Such neural audio generation...
Neural audio synthesis is an actively researched topic, having yielded a wide range of techniques th...
Generating data from complex data distributions has been a long-standing problem in the field of art...
Autoregressive neural networks, such as WaveNet, have opened up new avenues for expressive audio syn...
In this study, we investigate the usage of generative adversarial networks for modelling a collectio...
We introduce MIDI-VAE, a neural network model based on Variational Autoencoders that is capable of h...
A deformable musical instrument can take numerous distinct shapes with its non-rigid features. Build...
International audienceRecent progress in deep learning for audio synthesis opens the way to models t...
With an optimal network topology and tuning of hyperpa- rameters, artificial neural networks (ANNs)...
This work consist of a hybrid system: a neural network for data compression and a generic algorithm ...
While synthesizers have become commonplace in music production, many users find it difficult to cont...
Fast and user-controllable music generation could enable novel ways of composing or performing music...
We propose a novel approach to automated rhythm generation in which a Transformer XL model is employ...