Li Xiangxin, Chen Shixiong, Zhang Haoshi, Zhang Xiufeng, Li Guanglin
Annu Int Conf IEEE Eng Med Biol Soc. 2014;2014:2569-72. doi: 10.1109/EMBC.2014.6944147.
In electromyography pattern-recognition-based control of a multifunctional prosthesis, it would be inevitable for the users to unintentionally perform some classes of movements that are excluded from the training motion classes of a classifier, which might decay the performance of a trained classifier. It remains unknown how these untrained movements, designated as non-target movements (NTMs) in the study, would affect the performance of a trained classifier in the control of multifunctional prostheses. The goal of the current study was to evaluate the effects of NTMs on the performance of movement classification. Five classes of target movements (TMs) and four classes of NTMs were considered in this pilot study. A classifier based on a linear discriminant analysis (LDA) was trained with the electromyography (EMG) signals from the five TMs and the effects of the four NTMs were examined by feeding the EMG signals of the four NTMs to the trained classifier. Our results showed that these NTMs were classified into one or more classes of the TMs, which would cause the unexpected movements of prostheses. A method to reduce the effects of NTMs has been proposed in the study and our results showed that the averaged classification accuracies of the corrected classifiers were above 99% for the healthy subjects.
在基于肌电图模式识别的多功能假肢控制中,用户不可避免地会无意执行一些未包含在分类器训练运动类别中的运动类型,这可能会降低训练好的分类器的性能。目前尚不清楚这些在本研究中被指定为非目标运动(NTMs)的未训练运动如何影响多功能假肢控制中训练好的分类器的性能。本研究的目的是评估非目标运动对运动分类性能的影响。在这项初步研究中考虑了五类目标运动(TMs)和四类非目标运动。基于线性判别分析(LDA)的分类器使用来自五类目标运动的肌电图(EMG)信号进行训练,并通过将四类非目标运动的肌电图信号输入到训练好的分类器中来检验这四类非目标运动的影响。我们的结果表明,这些非目标运动被分类到一类或多类目标运动中,这会导致假肢出现意外运动。本研究中提出了一种减少非目标运动影响的方法,我们的结果表明,校正后的分类器对健康受试者的平均分类准确率高于99%。