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首页> 外文期刊>Indian Journal of Science and Technology >Least Square based Signal Denoising and Deconvolution using Wavelet Filters
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Least Square based Signal Denoising and Deconvolution using Wavelet Filters

机译:使用小波滤波器的基于最小二乘的信号去噪和去卷积

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摘要

Noise, the unwanted information in a signal reduces the quality of signal. Hence to improve the signal quality, denoising is done. The main aim of the proposed method in this paper is to deconvolve and denoise a noisy signal by least square approach using wavelet filters. In this paper, least square approach given by Selesnick is modified by using different wavelet filters in place of second order sparse matrix applied for deconvolution and smoothing. The wavelet filters used in the proposed approach for denoising are Haar, Daubechies, Symlet, Coiflet, Biorthogonal and Reverse biorthogonal. The result of the proposed experiment is validated in terms of Peak Signal to Noise Ratio (PSNR). Analysis of the experiment results notify that proposed denoising based on least square using wavelet filters are comparable to the performances given by deconvolution and smoothing using the existing second order filter.
机译:噪声,信号中不需要的信息会降低信号质量。因此,为了改善信号质量,进行了去噪。本文提出的方法的主要目的是使用小波滤波器通过最小二乘法对噪声信号进行去卷积和去噪。在本文中,通过使用不同的小波滤波器代替用于解卷积和平滑的二阶稀疏矩阵,修改了Selesnick给出的最小二乘法。所提出的去噪方法中使用的小波滤波器是Haar,Daubechies,Symlet,Coiflet,Biorthogonal和Reverse birthogonal。提出的实验结果通过峰值信噪比(PSNR)进行了验证。对实验结果的分析表明,使用小波滤波器基于最小二乘法提出的去噪与使用现有二阶滤波器进行去卷积和平滑处理所给出的性能相当。

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