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Person-specific gesture set selection for optimised movement classification from EMG signals

机译:特定于人的手势集选择,可根据EMG信号优化运动分类

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Movement classification from electromyography (EMG) signals is a promising vector for improvement of human computer interaction and prosthetic control. Conventional work in this area typically makes use of expert knowledge to select a set of movements a priori and then design classifiers based around these movements. The disadvantage of this approach is that different individuals might have different sets of movements that would lead to high classification accuracy. The novel approach we take here is to instead use a data-driven diagnostic test to select a set of person-specific movements. This new approach leads to an optimised set of movements for a specific person with regards to classification performance.
机译:肌电图(EMG)信号的运动分类是改善人机交互和修复控制的有前途的载体。该领域的常规工作通常利用专家知识来先验地选择一组运动,然后基于这些运动来设计分类器。这种方法的缺点是不同的人可能会有不同的动作集,这将导致较高的分类精度。我们在这里采用的新颖方法是改为使用数据驱动的诊断测试来选择一组特定于人的动作。这种新方法可以针对特定人员针对分类表现优化一组动作。

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