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首页> 外文期刊>International Journal of Biomechatronics and Biomedical Robotics >Feature-channel subset selection for optimising myoelectric human-machine interface design
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Feature-channel subset selection for optimising myoelectric human-machine interface design

机译:特征通道子集选择,优化肌电人机界面设计

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摘要

This paper proposes a feature-channel subset selection method for obtaining an optimal subset of features and channels of myoelectric human-machine interface applied to classify upper limb's motions using multi-channel myoelectric signals. It employs a multi-objective genetic algorithm as a search strategy and either data separability index or classification rate as an objective function. A wide range of features in time, frequency, and time-scale domains are examined, and a modification that reduces the bias of cardinality in the separability index is evaluated. The proposed method produces a compact subset of features and channels, which results in high accuracy by linear classifiers without a need of preliminary tailor-made adjustments.
机译:本文提出了一种特征通道子集选择方法,用于获得肌电人机界面的特征和通道的最优子集,该方法用于基于多通道肌电信号对上肢运动进行分类。它采用多目标遗传算法作为搜索策略,并将数据可分离性指数或分类率作为目标函数。考察了时域,频域和时标域中的各种特征,并评估了可减少可分离性指数中基数偏差的修改。所提出的方法产生了特征和通道的紧凑子集,这可以通过线性分类器实现高精度,而无需预先进行量身定制的调整。

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