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Study on Best Wavelet Packet Based Independent Threshold De-noising for MUAP

机译:基于独立阈值去噪的最佳小波包的研究

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Currently, wavelet packet technology is widely used in Electromyography (EMG) signal de-noising. However, most of these methods use global threshold to remove the noises from EMG signal. This paper proposes a new method, different nodes use different thresholds. The detected EMG signal is the summation of motor unit action potential (MUAP) trains from all active motor units. In our method, we use emglab software to abstract the MUAP of EMG, then calculate the best wavelet package tree and deal with each terminal node by independent threshold. Finally, the signal can be reconstructed by these processed coefficients. Compared with the wavelet packet de-noise with global default threshold, wavelet packet de-noise with level independent default threshold, the proposed method has distinguish advantageous.
机译:目前,小波包技术广泛用于肌电图(EMG)信号去噪。但是,大多数这些方法都使用全局阈值来从EMG信号中删除噪声。本文提出了一种新方法,不同的节点使用不同的阈值。检测到的EMG信号是来自所有主动电机单元的电动机单元动作电位(MUAP)列车的总和。在我们的方法中,我们使用Emglab软件抽象EMG的MUAP,然后通过独立的阈值计算最佳小波包树并处理每个终端节点。最后,可以由这些处理的系数重建信号。与具有全局默认阈值的小波包发电噪声相比,小波分组噪声具有独立默认阈值,所提出的方法具有区分有利的。

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