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首页> 外文期刊>Fluctuation and Noise Letters >WAVELET-BASED DENOISING ALGORITHM FOR ROBUST EMG PATTERN RECOGNITION
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WAVELET-BASED DENOISING ALGORITHM FOR ROBUST EMG PATTERN RECOGNITION

机译:基于小波的去噪算法在鲁棒肌电图识别中的应用

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摘要

A successful pre-processing stage based on wavelet denoising algorithm for electromyography (EMG) signal recognition is proposed. From the limitation of traditional universal wavelet denoising, the optimal weighted parameter is assigned for universal thresholding method. The optimal weight for increasing EMG recognition accuracy is 50–60% of traditional universal threshold with hard transformation. Experimental results show that it improved approximately from 2 to 50% of recognition accuracy for EMG with signal-to-noise ratio (SNR) in the range of 20 to 0 dB compared to a baseline system (without pre-processing stage) and traditional universal wavelet denoising. The results are evaluated through a large EMG dataset with seven kinds of hand movements and eight types of muscle positions.
机译:提出了一种基于小波去噪的肌电信号识别方法。从传统通用小波去噪的局限性出发,为通用阈值法分配了最优的加权参数。提高EMG识别准确度的最佳权重是经过硬转换的传统通用阈值的50-60%。实验结果表明,与基线系统(无预处理阶段)和传统通用系统相比,它的EMG的识别精度大约提高了2%至50%,信噪比(SNR)在20至0 dB范围内小波去噪。通过具有7种手部动作和8种肌肉位置的大型EMG数据集评估结果。

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