Analysis of DWT signal denoising on various biomedical signals by neural network

G. Kaushik, H. P. Sinha, L. Dewan
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引用次数: 3

Abstract

A detailed analysis of Discrete Wavelet Transform (DWT) denoising and identification on various wavelet families and biomedical signals (ECG, EEG and EMG) is presented in this paper. The main intention of this work is to explore the wavelet function which is optimal for denoising the signals. Nevertheless, wavelet transforms offer better results for denoising biomedical signals, but identification is a crucial process. This paper proposes an artificial neural network in which the wavelet types are used to denoise the signals optimally by using a learning back propagation algorithm. Also the, performances of the various wavelet types are tabulated and compared with the existing techniques, in terms of the evaluation parameters signal to noise ratio, percent root mean square difference, mean-square error and compression ratio. The simulation results expose the efficiency of the proposed method for the denoising of biomedical signals.
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用神经网络对各种生物医学信号进行DWT信号去噪分析
详细分析了离散小波变换(DWT)对各种小波族和生物医学信号(心电、脑电图和肌电)的去噪和识别。本工作的主要目的是探索最适合信号去噪的小波函数。尽管如此,小波变换对生物医学信号的去噪效果更好,但识别是一个关键的过程。本文提出了一种人工神经网络,该网络采用学习反向传播算法,利用小波类型对信号进行最优降噪。并从信噪比、均方根差百分比、均方误差和压缩比等评价指标对各种小波的性能进行了比较。仿真结果表明了该方法对生物医学信号去噪的有效性。
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