论文标题

分析各种窗口超参数对基于SEMG的运动意图分类的深入CNN的影响

Analyzing the Impact of Varied Window Hyper-parameters on Deep CNN for sEMG based Motion Intent Classification

论文作者

Kulwa, Frank, Samuel, Oluwarotimi Williams, Asogbon, Mojisola Grace, Obe, Olumide Olayinka, Li, Guanglin

论文摘要

通过从EMG信号自动学习肌肉激活模式,在基于肌电图(EMG)基于肌电图(EMG)的假体控制中使用深神经网络。同时,将RAW EMG信号用作卷积神经网络(CNN)的输入提供了一种简单,快速且理想的方案,以有效控制假体。因此,本研究研究了窗口长度和重叠之间的关系,这可能会影响用于在CNN中应用的强大原始EMG 2维(2D)信号的产生。以及这些参数正确组合可以保证最佳网络性能的经验法则。此外,我们研究了CNN接受窗口大小与原始EMG信号大小之间的关系。实验结果表明,CNN的性能随着生成的信号内重叠的增加而增加,当重叠率为窗口长度的75%时,精度的最高提高了9.49%的精度,而实现了23.33%的F1速度。同样,网络性能随接收窗口(内核)大小的增加而增加。这项研究的发现表明,在2D EMG信号中有75%重叠的组合和更广泛的网络内核可以为基于EMG-CNN的适当假体控制方案提供理想的运动意图分类。

The use of deep neural networks in electromyogram (EMG) based prostheses control provides a promising alternative to the hand-crafted features by automatically learning muscle activation patterns from the EMG signals. Meanwhile, the use of raw EMG signals as input to convolution neural networks (CNN) offers a simple, fast, and ideal scheme for effective control of prostheses. Therefore, this study investigates the relationship between window length and overlap, which may influence the generation of robust raw EMG 2-dimensional (2D) signals for application in CNN. And a rule of thumb for a proper combination of these parameters that could guarantee optimal network performance was derived. Moreover, we investigate the relationship between the CNN receptive window size and the raw EMG signal size. Experimental results show that the performance of the CNN increases with the increase in overlap within the generated signals, with the highest improvement of 9.49% accuracy and 23.33% F1-score realized when the overlap is 75% of the window length. Similarly, the network performance increases with the increase in receptive window (kernel) size. Findings from this study suggest that a combination of 75% overlap in 2D EMG signals and wider network kernels may provide ideal motor intents classification for adequate EMG-CNN based prostheses control scheme.

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