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确定基于模式识别的肌电控制的最佳窗口长度:平衡分类错误和控制器延迟的竞争影响。

Determining the optimal window length for pattern recognition-based myoelectric control: balancing the competing effects of classification error and controller delay.

机构信息

Feinberg School of Medicine, Northwestern University, Chicago, IL 60611 USA.

出版信息

IEEE Trans Neural Syst Rehabil Eng. 2011 Apr;19(2):186-92. doi: 10.1109/TNSRE.2010.2100828. Epub 2010 Dec 30.

DOI:10.1109/TNSRE.2010.2100828
PMID:21193383
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC4241762/
Abstract

Pattern recognition-based control of myoelectric prostheses has shown great promise in research environments, but has not been optimized for use in a clinical setting. To explore the relationship between classification error, controller delay, and real-time controllability, 13 able-bodied subjects were trained to operate a virtual upper-limb prosthesis using pattern recognition of electromyogram (EMG) signals. Classification error and controller delay were varied by training different classifiers with a variety of analysis window lengths ranging from 50 to 550 ms and either two or four EMG input channels. Offline analysis showed that classification error decreased with longer window lengths (p < 0.01 ). Real-time controllability was evaluated with the target achievement control (TAC) test, which prompted users to maneuver the virtual prosthesis into various target postures. The results indicated that user performance improved with lower classification error (p < 0.01 ) and was reduced with longer controller delay (p < 0.01 ), as determined by the window length. Therefore, both of these effects should be considered when choosing a window length; it may be beneficial to increase the window length if this results in a reduced classification error, despite the corresponding increase in controller delay. For the system employed in this study, the optimal window length was found to be between 150 and 250 ms, which is within acceptable controller delays for conventional multistate amplitude controllers.

摘要

基于模式识别的肌电假肢控制在研究环境中显示出巨大的潜力,但尚未针对临床环境进行优化。为了探索分类错误、控制器延迟和实时可控性之间的关系,13 名健全受试者接受了使用肌电图(EMG)信号模式识别来操作虚拟上肢假肢的训练。通过使用不同的分析窗口长度(50 到 550 毫秒)和两个或四个 EMG 输入通道来训练不同的分类器,从而改变分类错误和控制器延迟。离线分析表明,分类错误随着窗口长度的增加而降低(p<0.01)。实时可控性通过目标达成控制(TAC)测试进行评估,该测试提示用户将虚拟假肢操纵到各种目标姿势。结果表明,用户性能随着分类错误的降低而提高(p<0.01),随着控制器延迟的增加而降低(p<0.01),这取决于窗口长度。因此,在选择窗口长度时应考虑这两个因素;如果这导致分类错误降低,尽管控制器延迟相应增加,但增加窗口长度可能是有益的。对于本研究中使用的系统,发现最佳窗口长度在 150 到 250 毫秒之间,这在传统多状态幅度控制器的可接受控制器延迟范围内。

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