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Confidence-Based Rejection for Improved Pattern Recognition Myoelectric Control

机译:基于置信度的拒绝,用于改进的模式识别肌电控制

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摘要

This study describes a novel myoelectric control scheme that is capable of motion rejection. As an extension of the commonly used linear discriminant analysis (LDA), this system generates a confidence score for each decision, providing the ability to reject those with a score below a selected threshold. The thresholds are class-specific and affect only the rejection characteristics of the associated class. Furthermore, because the rejection stage is implemented using the outputs of the LDA, the active motion classification accuracy of the proposed system is shown to outperform that of the LDA for all values of rejection threshold. The proposed scheme was compared to a baseline LDA-based pattern recognition system using a real-time Fitts’ law-based target acquisition task. The use of velocity-based myoelectric control using the rejection classifier is shown to obey Fitts’ law, producing linear regression fittings with high coefficients of determination $(R^{2}$ > 0.943). Significantly higher (p?
机译:这项研究描述了一种新颖的肌电控制方案,能够抑制运动。作为常用线性判别分析(LDA)的扩展,该系统为每个决策生成置信度得分,从而能够拒绝得分低于所选阈值的那些决策。阈值是特定于类别的,并且仅影响相关类别的拒绝特性。此外,由于拒绝阶段是使用LDA的输出实现的,因此对于所有拒绝阈值,提出的系统的主动运动分类精度均优于LDA。使用实时Fitts的基于法则的目标获取任务,将该提议的方案与基于LDA的基线模式识别系统进行了比较。使用基于速度分类器的基于速度的肌电控制,可以遵循费茨定律,从而产生具有高确定系数的线性回归拟合。<公式式> inline“> $(R ^ { 2} $

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