优化小波设计降噪和特征提取

B. Molavi, A. Sadr
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引用次数: 2

摘要

本文设计了一种最优的小波去噪和检测方法。该方法是基于搜索提供给定信号的最佳非线性逼近的小波基。结果表明,在信号估计误差较小的情况下,该基具有最佳的小波去噪性能。此外,这种小波可以用几个大系数更紧凑地表示信号,这些系数可以认为是信号的特征。仿真和实验结果比较了所设计的小波与标准小波的性能。结果表明,在相同长度的多道小波信号去噪过程中,仿真结果改善了1.2 dB,实验结果改善了1dB。最优小波还成功地从实验信号中提取了Daubechies小波无法检测到的特定特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimum wavelet design for noise reduction and feature extraction
In this paper an optimum wavelet for denoising and detection applications is designed. The approach is based on searching for a wavelet basis that provides the best non linear approximation of a given signal. It is shown that such a basis will have the best wavelet denoising performance in the sense of signal estimation error. In addition, such a wavelet can represent the signal more compactly with a few large coefficients which can be considered as the features of the signal. Simulation and experimental results are presented to compare the designed wavelet performance with that of standard wavelets. The optimum wavelet proves effective by providing up to 1.2 dB improvement in the simulations and up to 1dB improvement in the experiments over the same length Daubechies wavelet in denoising signals. The optimum wavelet is also successfully used for extracting specific features which can not be detected by Daubechies wavelet from the experimental signals.
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