Discrete Wavelet Denoising via Kernel Based Nonlinear Component Analysis: Case Studies

Z. Ye, Hang Yin, R. Belu, H. Mohamadian, Hua Cao, Yongmao Ye
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Abstract

All complex real world problems are essentially nonlinear. Linear models are relatively simple but inaccurate to describe the nonlinear aspects of dynamic system behaviors. Denoising techniques have been broadly applied to numerous applications in the spatial domain, frequency domain, and time domain. To increase the adaptability of denoising techniques to signal processing of arbitrary nonlinear systems, kernel based nonlinear component analysis is proposed to enhance wavelet denoising. In the multilevel wavelet decomposition, the low frequency approximations and high frequency details are produced at each level. Discrete wavelet transform (DWT) will help to decompose low frequency approximations exclusively at the subsequent levels, while the wavelet packet transform decomposes both approximations and high frequency details at each level. DWT is selected for wavelet denoising in this study, where details at each level and the approximation at specified level are all subject to simplification using nonlinear component analysis. Case studies of typical nonlinear denoising problems in various domains are conducted. The results manifest strong feasibility and adaptability across diverse denoising problems of nonlinear systems.
基于核非线性分量分析的离散小波去噪:案例研究
所有复杂的现实问题本质上都是非线性的。线性模型相对简单,但不能准确地描述动态系统行为的非线性方面。去噪技术在空间域、频率域和时间域都有广泛的应用。为了提高小波去噪技术对任意非线性系统信号处理的适应性,提出了基于核的非线性分量分析来增强小波去噪。在多层小波分解中,每一层产生低频近似和高频细节。离散小波变换(DWT)将有助于在后续级别分解低频近似,而小波包变换在每个级别分解近似和高频细节。本研究选择DWT进行小波去噪,每一层的细节和指定层的近似都采用非线性分量分析进行化简。对各个领域的典型非线性去噪问题进行了实例研究。结果表明,该方法对各种非线性系统的去噪问题具有较强的可行性和适应性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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