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A Comprehensive Channel and Feature Selection Method for Myoelectric Pattern Recognition

机译:用于肌电模式识别的综合通道与特征选择方法

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The advent of myoelectric control schemes provides promising chances for locomotion empowerment and restoration of those with disabilities. Despite substantial efforts have been made into advancing sEMG-based motion recognition, it may be a little tricky to determine appropriate muscles and features for people with muscle disorders or different muscle use preferences. To mitigate it, an advantageous sEMG channel and feature selection method based on ReliefF algorithm was proposed. Related experiments were conducted on a eight able-bodied subject database to showcase the feasibility and efficiency of the proposed approach, that is, considerably high classification performance was maintained with the original feature set reduced by more than half. Ulteriorly, we also investigated the influences of different number of neighbors or features on classification accuracy for ascertaining the optimal values. The strengths of our proposed method lie in not only customizing channel and feature selection for individual users, but also offering preliminary insight for a general mapping mechanism between human muscles and corresponding motions.
机译:肌电控制方案的出现提供了有希望的机器赋权和恢复残疾人的机会。尽管已经努力推进了基于Semg的运动识别,但对于用肌肉疾病或不同的肌肉使用偏好确定适当的肌肉和特征可能有点棘手。为了缓解它,提出了基于Relieff算法的有利半通道和特征选择方法。相关实验在八个能够的体系数据库上进行,以展示所提出的方法的可行性和效率,即大幅度的分类性能维持,原始功能集减少超过一半。概括地,我们还调查了不同数量的邻居或特征对分类准确性的影响,以确定最佳值。我们所提出的方法的优势不仅是定制个人用户的渠道和特征选择,而且还为人类肌肉和相应运动之间的一般绘图机制提供了初步洞察力。

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