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Wavelet-based transformations for nonlinear signal processing

机译:基于小波变换的非线性信号处理

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摘要

Nonlinearities are often encountered in the analysis and processing of real-world signals. We introduce two new structures for nonlinear signal processing. The new structures simplify the analysis, design, and implementation of nonlinear filters and can be applied to obtain more reliable estimates of higher order statistics. Both structures are based on a two-step decomposition consisting of a linear orthogonal signal expansion followed by scalar polynomial transformations of the resulting signal coefficients. Most existing approaches to nonlinear signal processing characterize the nonlinearity in the time domain or frequency domain; in our framework any orthogonal signal expansion can be employed. In fact, there are good reasons for characterizing nonlinearity using more general signal representations like the wavelet expansion. Wavelet expansions often provide very concise signal representations and thereby can simplify subsequent nonlinear analysis and processing. Wavelets also enable local nonlinear analysis and processing in both time and frequency, which can be advantageous in nonstationary problems. Moreover, we show that the wavelet domain offers significant theoretical advantages over classical time or frequency domain approaches to nonlinear signal analysis and processing.
机译:在现实世界信号的分析和处理中经常会遇到非线性。我们介绍了两种用于非线性信号处理的新结构。新结构简化了非线性滤波器的分析,设计和实现,可用于获得更可靠的高阶统计量估计。两种结构均基于两步分解,该分解包括线性正交信号扩展,然后是所得信号系数的标量多项式变换。现有的大多数非线性信号处理方法都表征了时域或频域的非线性。在我们的框架中,可以采用任何正交信号扩展。实际上,有充分的理由使用小波展开等更通用的信号表示来表征非线性。小波展开通常提供非常简洁的信号表示,从而可以简化后续的非线性分析和处理。小波还可以在时间和频率上进行局部非线性分析和处理,这在非平稳问题中可能是有利的。此外,我们表明,与经典的时域或频域方法相比,小波域在非线性信号分析和处理方面具有重要的理论优势。

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