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Adversarial Signal Denoising with Encoder-Decoder Networks

机译:具有编码器解码器网络的对抗信号去噪

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The presence of noise is common in signal processing regardless the signal type. Deep neural networks have shown good performance in noise removal, especially on the image domain. In this work, we consider deep neural networks as a denoising tool where our focus is on one dimensional signals. We introduce an encoder-decoder architecture to denoise signals, represented by a sequence of measurements. Instead of relying only on the standard reconstruction error to train the encoder-decoder network, we treat the task of denoising as distribution alignment between the clean and noisy signals. Then, we propose an adversarial learning formulation where the goal is to align the clean and noisy signal latent representation given that both signals pass through the encoder. In our approach, the discriminator has the role of detecting whether the latent representation comes from clean or noisy signals. We evaluate on electrocardiogram and motion signal denoising; and show better performance than learning-based and non-learning approaches.
机译:无论信号类型如何,信号处理中都存在噪声。深度神经网络在噪声中显示出良好的性能,特别是在图像域上。在这项工作中,我们将深度神经网络视为去噪工具,我们的重点是在一维信号上。我们将编码器解码器架构引入到Denoise信号,由一系列测量表示。而不是仅依赖标准重建错误来训练编码器解码器网络,而是将去噪的任务视为清洁和嘈杂信号之间的分布对齐。然后,我们提出了一种对抗的对手学习制定,其中目标是给定两个信号通过编码器的清洁和嘈杂的信号潜在表示。在我们的方法中,鉴别者具有检测潜在代表是否来自干净或嘈杂信号的作用。我们评估了心电图和运动信号去噪;并且表现出比基于学习和非学习方法更好的性能。

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