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Wavelet-based neural network adaptive filter for sEMG denoising

机译:基于小波神经网络自适应滤波的sEMG去噪

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For the large computation workload of the adaptive filter algorithm and the low filtering speed of the adaptive filter model based on wavelet transform,a wavelet-based neural network adaptive filter model is constructed in this paper.As the neural network has the capacity of distributed storage and fast self-evolution,Hopfield neural network is used to implement adaptive filtering algorithm LMS,so as to increase the computing speed.The model applied to sEMG signal denoising can achieve a better filtering effect.
机译:针对自适应滤波器算法的计算量大,基于小波变换的自适应滤波器模型滤波速度慢的问题,本文构建了基于小波的神经网络自适应滤波器模型。为了实现快速自进化,采用了Hopfield神经网络来实现自适应滤波算法LMS,从而提高了计算速度。该模型应用于sEMG信号去噪可以达到较好的滤波效果。

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