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Application of recurrent U-net architecture to speech enhancement

机译:递归U-net体系结构在语音增强中的应用

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In this paper a recurrent U-net neural architecture is proposed to speech enhancement. The mentioned neural network architecture is trained to provide a mapping between a spectrogram of a noisy speech and both spectrograms of isolated speech and noise. Some key design choices are being evaluated in experiments and discussed, including: number of levels of the U-net, presence/absence of recurrent layers, presence/absence of max pooling layers as well and upsampling algorithm used in decoder part of the network.
机译:本文提出了一种递归的U-net神经体系结构来增强语音。训练过的神经网络体系结构经过训练,可以提供嘈杂语音的频谱图与孤立语音和噪声的频谱图之间的映射。一些关键的设计选择正在实验中进行评估和讨论,包括:U-net的数量,循环层的存在/不存在,最大池化层的存在/不存在以及网络解码器部分中使用的上采样算法。

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