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Individual hand movement detection and classification using peripheral nerve signals

机译:使用周围神经信号进行单个手部运动检测和分类

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This paper investigates whether the movement intent of an amputee can be detected and classified in real-time as the individual moved his/her phantom hand. We present a method to detect movement intent using neural signals from the peripheral nervous system (PNS). In addition, we classify eight types of individual hand movements using 300 ms signal segments beginning with our detected starting time. Classification is performed by applying linear discriminant analysis (LDA) on different kind of features. We compared the classification results using segments started with the detected starting time and the starting time of the command given to a subject as neural signals were recorded. The average accuracies were 73.5% in the former case and 59.4% in the latter.
机译:本文研究了当个体移动其幻影手时,是否可以实时检测到被截肢者的运动意图并对其进行分类。我们提出了一种使用来自周围神经系统(PNS)的神经信号检测运动意图的方法。此外,我们从检测到的开始时间开始,使用300 ms信号段将八种类型的个人手部运动进行分类。通过对不同类型的特征应用线性判别分析(LDA)进行分类。我们使用从检测到的开始时间开始的片段和以神经信号被记录到对象的命令的开始时间开始的分类结果进行比较。前者的平均准确度为73.5%,后者为59.4%。

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