基于遗传算法的小波去噪

Majd S. Matti, Ahmed Khorsheed Al-Sulaifanie
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引用次数: 5

摘要

本研究将遗传算法(GA)与小波变换(WT)结合起来进行信号去噪。小波变换是一种时频信号分析,遗传算法是一种基于最优解生存的优化技术,利用从适应度函数中得到的最大或最小适应度值进行优化。在本研究中,使用WT的参数作为遗传算法的输入,对被高斯白噪声破坏的输入信号进行去噪,并给出MSEo作为适应度值的输出。输入的损坏信号通过分解提取近似和细节系数,然后使用阈值对细节系数进行阈值处理以去除噪声,最后使用近似和去噪的细节系数重建信号。采用四个标准的基准信号对该方法进行了测试,并与同类领域的其他研究进行了比较,结果表明该方法的效果更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wavelet Denoising Based on Genetic Algorithm
This study is about using the genetic algorithm (GA) with wavelet transform (WT) for signal denoising purposes. The WT is a time-frequency signal analysis, and the GA is an optimization technique based on survival of the best solution using the maximized or minimized fitness value obtained from the fitness function. In this study, the parameters of WT are used as inputs for the GA for denoising the input signal that is corrupted by white Gaussian noise and gives an output of MSEo as fitness value. The input corrupted signal will pass through decomposition process to extract approximation and details coefficients, then thresholding the details coefficients using a threshold value in order to remove the noise, and finally reconstruction of the signal using the approximation and denoised details coefficients. Four standard benchmark signals are used to test this technique then a comparison is done with other studies in the same field, and the comparison showed that the results of this work is better.
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