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Single-Channel Signal Separation and Deconvolution with Generative Adversarial Networks

机译:具有生成对抗网络的单通道信号分离和解卷积

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Single-channel signal separation and deconvolution aims to separate and deconvolve individual sources from a single-channel mixture and is a challenging problem in which no prior knowledge of the mixing filters is available. Both individual sources and mixing filters need to be estimated. In addition, a mixture may contain non-stationary noise which is unseen in the training set. We propose a synthesizing-decomposition (S-D) approach to solve the single-channel separation and deconvolution problem. In synthesizing, a generative model for sources is built using a generative adversarial network (GAN). In decomposition, both mixing filters and sources are optimized to minimize the reconstruction error of the mixture. The proposed S-D approach achieves a peak-to-noise-ratio (PSNR) of 18.9 dB and 15.4 dB in image inpainting and completion, outperforming a baseline convolutional neural network PSNR of 15.3 dB and 12.2 dB, respectively and achieves a PSNR of 13.2 dB in source separation together with deconvolution, outperforming a convolutive non-negative matrix factorization (NMF) baseline of 10.1 dB.
机译:单通道信号分离和解卷积旨在与单通道混合物分离和解构单独的源,并且是一个具有挑战性的问题,在此内部不知道混合过滤器的先验知识。需要估计单个来源和混合滤波器。此外,混合物可能含有在训练集中看不见的非静止噪声。我们提出了一种合成分解(S-D)方法来解决单通道分离和解卷积问题。在合成中,使用生成的对冲网络(GaN)构建一种用于源的生成模型。在分解中,优化混合滤波器和源以最小化混合物的重建误差。所提出的SD方​​法在图像修复和完成中实现了18.9dB的峰值比(PSNR)和15.4 dB,分别优于15.3dB和12.2dB的基线卷积神经网络PSNR,实现了13.2 dB的PSNR在源分离与去卷积一起,优于10.1dB的卷曲非负矩阵分子(NMF)基线。

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