2022
DOI: 10.48550/arxiv.2207.08759
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Style Transfer of Audio Effects with Differentiable Signal Processing

Abstract: We present a framework that can impose the audio effects and production style from one recording to another by example with the goal of simplifying the audio production process. We train a deep neural network to analyze an input recording and a style reference recording, and predict the control parameters of audio effects used to render the output. In contrast to past work, we integrate audio effects as differentiable operators in our framework, perform backpropagation through audio effects, and optimize end-t… Show more

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“…All rights reserved. (Steinmetz, Bryan, and Reiss 2022). An interesting technique conducted by this work is the usage of audio effects within the computation graph of the network, such that the computer can use learned effects to assist with style transfer.…”
Section: Introduction and Related Workmentioning
confidence: 99%
“…All rights reserved. (Steinmetz, Bryan, and Reiss 2022). An interesting technique conducted by this work is the usage of audio effects within the computation graph of the network, such that the computer can use learned effects to assist with style transfer.…”
Section: Introduction and Related Workmentioning
confidence: 99%