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Functional link expansions for nonlinear modeling of audio and speech signals

机译:功能链接扩展,用于音频和语音信号的非线性建模

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Nonlinear distortions pose a serious problem for the quality preservation of audio and speech signals. To address this problem, such signals are processed by nonlinear models. Functional link adaptive filter (FLAF) is a linear-in-the-parameter nonlinear model, whose nonlinear transformation of the input is characterized by a basis function expansion, satisfying the universal approximation properties. Since the expansion type affects the nonlinear modeling according to the nature of the input signal, in this paper we investigate the FLAF modeling performance involving the most popular functional expansions when audio and speech signals are processed. A comprehensive analysis is conducted to provide the best suitable solution for the processing of nonlinear signals. Experimental results are assessed also in terms of signal quality and intelligibility.
机译:非线性失真对于音频和语音信号的质量保存提出了严重的问题。为了解决该问题,通过非线性模型来处理这样的信号。功能链接自适应滤波器(FLAF)是参数线性的非线性模型,其输入的非线性变换具有基函数展开的特征,满足通用逼近的性质。由于扩展类型会根据输入信号的性质影响非线性建模,因此在本文中,我们研究了在处理音频和语音信号时涉及最流行功能扩展的FLAF建模性能。进行了全面的分析,为非线性信号的处理提供了最合适的解决方案。还根据信号质量和清晰度来评估实验结果。

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