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首页> 外文期刊>Journal of Advanced Computatioanl Intelligence and Intelligent Informatics >An Improved Fully Convolutional Network Based on Post-Processing with Global Variance Equalization and Noise-Aware Training for Speech Enhancement
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An Improved Fully Convolutional Network Based on Post-Processing with Global Variance Equalization and Noise-Aware Training for Speech Enhancement

机译:基于后处理的完全卷积网络,具有全局方差均衡和语音增强的噪声感知培训

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摘要

An improved fully convolutional network based on post-processing with global variance (GV) equalization and noise-aware training (PN-FCN) for speech enhancement model is proposed. It aims at reducing the complexity of the speech improvement system, and it solves overly smooth speech signal spectrogram problem and poor generalization capability. The PN-FCN is fed with the noisy speech samples augmented with an estimate of the noise. In this way, the PN-FCN uses additional online noise information to better predict the clean speech. Besides, PN-FCN uses the global variance information, which improve the subjective score in a voice conversion task. Finally, the proposed framework adopts FCN, and the number of parameters is one-seventh of deep neural network (DNN). Results of experiments on the Valentini-Botinhaos dataset demonstrate that the proposed framework achieves improvements in both denoising effect and model training speed.
机译:提出了一种基于全局方差(GV)均衡后处理和噪声感知训练(PN-FCN)的改进全卷积网络语音增强模型。它旨在降低语音改善系统的复杂度,解决语音信号谱图过于平滑和泛化能力差的问题。PN-FCN被馈送有噪声的语音样本,并通过噪声估计进行增强。通过这种方式,PN-FCN使用额外的在线噪声信息来更好地预测干净的语音。此外,PN-FCN利用了全局方差信息,提高了语音转换任务的主观得分。最后,该框架采用FCN,参数个数为深度神经网络(DNN)的七分之一。在Valentini-Botinhaos数据集上的实验结果表明,该框架在去噪效果和模型训练速度方面都取得了改进。

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