Timbre transfer techniques aim at converting the sound of a musical piece generated by one instrument into the same one as if it was played by another instrument, while maintaining as much as possible the content in terms of musical characteristics such as melody and dynamics. Following their recent breakthroughs in deep learning-based generation, we apply Denoising Diffusion Models (DDMs) to perform timbre transfer. Specifically, we apply the recently proposed Denoising Diffusion Implicit Models (DDIMs) that enable to accelerate the sampling procedure. Inspired by the recent application of DDMs to image translation problems we formulate the timbre transfer task similarly, by first converting the audio tracks into log mel spectrograms and b...
We present preliminary outcomes of a feasibility study of a novel application of machine learning te...
Using deep learning to synthetically generate music is a research domain that has gained more attent...
We study the problem of source separation for music using deep learning with four known sources: dru...
Timbre transfer techniques aim at converting the sound of a musical piece generated by one instrumen...
This work aims to investigate the potential of employing Denoising diffusion probabilistic models, c...
Generating data from complex data distributions has been a long-standing problem in the field of art...
An ideal music synthesizer should be both interactive and expressive, generating high-fidelity audio...
Computer assisted music extensively relies on audio sample libraries and virtual instruments which p...
Similar to colorization in computer vision, instrument separation is to assign instrument labels (e....
How can we provide interfaces to synthesis algorithms that will allow us to manipulate timbre direct...
Musical timbre transfer is the task of re-rendering the musical content of a given source using the ...
In this work, we apply the CycleGAN image-to-image translation framework to Mel-scaled log-amplitude...
This paper introduces a novel data-driven strategy for synthesizing gramophone noise audio textures....
Neural audio synthesis is an actively researched topic, having yielded a wide range of techniques th...
We propose an audio effects processing framework that learns to emulate a target electric guitar ton...
We present preliminary outcomes of a feasibility study of a novel application of machine learning te...
Using deep learning to synthetically generate music is a research domain that has gained more attent...
We study the problem of source separation for music using deep learning with four known sources: dru...
Timbre transfer techniques aim at converting the sound of a musical piece generated by one instrumen...
This work aims to investigate the potential of employing Denoising diffusion probabilistic models, c...
Generating data from complex data distributions has been a long-standing problem in the field of art...
An ideal music synthesizer should be both interactive and expressive, generating high-fidelity audio...
Computer assisted music extensively relies on audio sample libraries and virtual instruments which p...
Similar to colorization in computer vision, instrument separation is to assign instrument labels (e....
How can we provide interfaces to synthesis algorithms that will allow us to manipulate timbre direct...
Musical timbre transfer is the task of re-rendering the musical content of a given source using the ...
In this work, we apply the CycleGAN image-to-image translation framework to Mel-scaled log-amplitude...
This paper introduces a novel data-driven strategy for synthesizing gramophone noise audio textures....
Neural audio synthesis is an actively researched topic, having yielded a wide range of techniques th...
We propose an audio effects processing framework that learns to emulate a target electric guitar ton...
We present preliminary outcomes of a feasibility study of a novel application of machine learning te...
Using deep learning to synthetically generate music is a research domain that has gained more attent...
We study the problem of source separation for music using deep learning with four known sources: dru...