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Differentiable Signal Processing With Black-Box Audio Effects

机译:具有黑匣子音频效果的可微分信号处理

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We present a data-driven approach to automate audio signal processing by incorporating stateful third-party, audio effects as layers within a deep neural network. We then train a deep encoder to analyze input audio and control effect parameters to perform the desired signal manipulation, requiring only input-target paired audio data as supervision. To train our network with non-differentiable black-box effects layers, we use a fast, parallel stochastic gradient approximation scheme within a standard auto differentiation graph, yielding efficient end-to-end backpropagation. We demonstrate the power of our approach with three separate automatic audio production applications: tube amplifier emulation, automatic removal of breaths and pops from voice recordings, and automatic music mastering. We validate our results with a subjective listening test, showing our approach not only can enable new automatic audio effects tasks, but can yield results comparable to a specialized, state-of-the-art commercial solution for music mastering.
机译:我们提出了一种数据驱动方法来通过将状态第三方,作为层内部神经网络内的层作为层进行自动化音频信号处理。然后,我们将深度编码器分析输入音频和控制效果参数以执行所需的信号操作,只需要输入目标配对音频数据作为监控。要使用非可差异的黑盒效果图层培训我们的网络,我们在标准自动分化图中使用快速,并行随机梯度近似方案,产生有效的端到端背部衰减。我们展示了三个独立的自动音频生产应用的方法的力量:管子放大器仿真,自动删除呼吸和弹出声音录音,自动音乐掌握。我们通过主观聆听测试验证结果,显示我们的方法不仅可以实现新的自动音频效果任务,而且可以产生与专业的最先进的商业解决方案进行音乐母化的结果。

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