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On the robustness of EMG features for pattern recognition based myoelectric control; A multi-dataset comparison

机译:基于模式识别的肌电控制的肌电特征的鲁棒性;多数据集比较

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The selection of optimal features has long been a subject of debate for pattern recognition based myoelectric control. Studies have compared many features, but have typically used small or constrained data sets. Herein, the performance of various features is evaluated using data from six previously reported data sets. The number of channels, the contraction dynamics (dynamic vs static), and classifier type all yielded significant interactions (p<0.05) with the feature set. When using 8 channels, the addition of the tested features produced no improvement over a standard time domain (TD) feature set alone (p>0.05). When using fewer channels, however, autoregressive, Cepstral coefficients, Willison amplitude and sample entropy features all provided significant improvement during dynamic contractions (p<0.05). The simple Willison amplitude is highlighted, showing that it can provide significant improvement when used as a replacement for any one of the standard TD features.
机译:最佳特征的选择长期以来一直是基于模式识别的肌电控制的争论的主题。研究比较了许多功能,但通常使用小或约束数据集。这里,使用来自六个先前报告的数据集的数据来评估各种特征的性能。通道数量,收缩动态(动态VS静态)和分类器类型的数量都产生了显着的交互(P <0.05),具有特征集。使用8个通道时,添加测试的功能在单独的标准时域(TD)功能上没有改进(P> 0.05)。然而,当使用较少的频道时,自回归,剖腹产系数,威霉素幅度和样本熵特征在动态收缩期间都提供了显着的改善(P <0.05)。突出显示简单的Willison幅度,显示当用作任何一个标准T​​D特征的替代时,它可以提供显着的改进。

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