基于优化算法的小波去噪阈值选择

Han Xiao, D. Hu, Jiajun Wang
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引用次数: 0

摘要

小波阈值去噪被广泛用于抑制噪声的干扰,提高信号处理的精度。对分解系数选择合适的阈值对噪声滤波的效果至关重要。阈值选择问题可以通过使用不同的算法转化为优化任务。本研究采用Aquila优化器(AO)、梯度优化器(GBO)和改进的灰狼优化器(GNHGWO)对阈值进行优化。利用Blocks、Bumps、Doppler和Heavy sine等著名的基准信号来验证不同方法的效果。用信噪比(SNR)和均方根误差(RMSE)两项指标评价去噪后的信号。在4个基准信号上的仿真结果表明,本文所采用的AO、G-NHGWO、GBO优化算法在小波去噪阈值选择方面具有良好的有效性和实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Threshold selection of wavelet denoising based on optimization algorithms
The wavelet threshold denoising is widely used to suppress the interference of noise and improve the precision of signal processing. The selection of appropriate thresholding values applied to the decomposition coefficients is very critical for the effect of noise filtering. The issue of threshold selection can be converted to optimization tasks by using different algorithms. In this study, the Aquila optimizer (AO), the gradient-based optimizer (GBO) and the modified grey wolf optimizer (GNHGWO) were utilized to optimize the threshold values. The well-known benchmark signals such as Blocks, Bumps, Doppler and Heavy sine were used for verifying the effect of different methods. The denoised signals were evaluated by two indices of signal-to-noise ratio (SNR) and root mean square error (RMSE). The simulation results on four benchmark signals have shown that the AO, G-NHGWO, GBO optimization algorithms used in this study have exhibited an encouraging effectiveness and practicability in threshold selection of wavelet denoising.
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