基于基分类器能力校正的两阶段多分类器系统在生物假手控制中的应用

M. Kurzynski, Maciej Krysmann, Pawel Trajdos, A. Wolczowski
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引用次数: 7

摘要

提出了一种在灵巧抓取和操纵物体过程中识别患者移动假肢意图的先进方法。该方法基于动态集成选择方案(DES)和概率能力函数的两阶段分层多分类器系统(MCS)对电图和机械图生物信号的识别。此外,将假体传感器的反馈信号应用于MCS操作过程中基分类器的能力校正。利用实际数据对五种抓取动作的识别进行了实验比较,并与无反馈信息和单阶段结构的MCS进行了比较。该系统实现了最高的分类精度,展示了两阶段MCS与假体传感器反馈信号控制生物假手的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Two-Stage Multiclassifier System with Correction of Competence of Base Classifiers Applied to the Control of Bioprosthetic Hand
The paper presents an advanced method of recognition of patient's intention to move hand prosthesis during the grasping and manipulation of objects in a dexterous manner. The proposed method is based on recognition of electromiographic (EMG) and mechanomiographic (MMG) bio signals using two-stage hierarchical multiclassifier system (MCS) with dynamic ensemble selection scheme (DES) and probabilistic competence function. Additionally, the feedback signals derived from the prosthesis sensors are applied to the correction of competences of base classifiers during MCS operation. The performance of proposed MCS was experimetally compared against MCS's without feedback information and with one-stage structure using real data concerning the recognition of five types of grasping movements. The system developed achieved the highest classification accuracy demonstrating the potential of two-stage MCS with feedback signals from prosthesis sensors for the control of bio prosthetic hand.
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