基于级联神经网络监督的彩色噪声动态低通滤波器应用于语音降噪

Selmani Anissa, Seddik Hassene, Mbarki Zouhair
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引用次数: 1

摘要

本文研究了一种基于神经网络监督的最优自适应低通滤波器对语音的增强。由于加性噪声的存在,语音的损坏会导致语音质量和可理解性的下降。在空间表示中过滤这种失真信号是一项艰巨的任务。如果失真是由彩色噪声引起的,则更难实现这一任务。此外,由于语音信号的可变性,使用静态滤波器效率不高。在同一个句子中,音素可以改变形状和幅度。针对这些约束,我们提出了一种由神经网络监督的高斯核低通滤波器。过滤强度随着音位的变化而不断变化,从而产生一个在整个句子中变化的可变过滤器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient speech de-noising applied to colored noise based dynamic low-pass filter supervised by cascade neural networks
In this paper, we investigated the enhancement of speech by applying an optimal adaptive low-pass filter supervised by neural network. The corruption of speech due to the presence of additive noise causes its degradation in quality and intelligibility. To filter this distorted signal in its spatial representation is a hard task. This task is more difficult to realize if the distortion are caused by colored noise. In addition using a static filter is not efficient due to the speech signal variability. In the same sentence a phoneme can change in shape and amplitude. For these constraints, we propose to apply a low-pass filter with Gaussian core supervised by neural networks. Filtering strength changes continuously with the phoneme variation to generate a variable filter that change over the whole sentence.
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