首页> 外国专利> MULTI-DIMENSIONAL SURFACE ELECTROMYOGRAM SIGNAL PROSTHETIC HAND CONTROL METHOD BASED ON PRINCIPAL COMPONENT ANALYSIS

MULTI-DIMENSIONAL SURFACE ELECTROMYOGRAM SIGNAL PROSTHETIC HAND CONTROL METHOD BASED ON PRINCIPAL COMPONENT ANALYSIS

机译:基于主成分分析的多维表面肌电信号人工手控制方法

摘要

The present invention discloses a multi-dimensional surface electromyogram signal prosthetic hand control method based on principal component analysis. The method comprises the following steps. Wear an armlet provided with a 24-channel array electromyography sensor to a front arm of a subject, and respectively wear five finger joint attitude sensors at a distal phalanx of a thumb and at middle phalanxes of remaining fingers of the subject. Perform independent bending and stretching training on the five fingers of the subject, and meanwhile, collect data of an array electromyography sensor and data of the finger joint attitude sensors. Decouple the data of the array electromyography sensor by principal component analysis to form a finger motion training set. Perform data fitting on the finger motion training set by a neural network method, and construct a finger continuous motion prediction model. Predict a current bending angle of the finger through the finger continuous motion model.
机译:本发明公开了一种基于主成分分析的多维表面肌电信号假肢手控制方法。该方法包括以下步骤。将配备有24通道阵列肌电传感器的臂环戴到受试者的前臂上,并在拇指的远方指骨和受试者其余手指的中指骨分别佩戴五个手指关节姿势传感器。对对象的五个手指进行独立的弯曲和拉伸训练,同时,收集阵列肌电图传感器的数据和手指关节姿势传感器的数据。通过主成分分析将阵列肌电图传感器的数据解耦,以形成手指运动训练集。通过神经网络方法对手指运动训练集进行数据拟合,并构建手指连续运动预测模型。通过手指连续运动模型预测手指的当前弯曲角度。

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