基于分形特征的技术识别前臂细微运动并利用生理信号(肌电图、脑电图)测量警觉性

S. Arjunan, D.K. Kumar
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引用次数: 5

摘要

本文报道了基于分形特征的生理信号处理技术,如表面肌电图(sEMG)、脑电图(EEG)等,在医学和保健领域的生物信号处理中受到越来越多的关注。本研究报道了分形维数(一种生理信号的分形复杂度度量)的使用,并报道了表面肌电信号的一个新特征——最大分形长度(maximum fractal length, MFL)的发现,该特征可以更好地衡量人类活动中微小或低水平的变化。作者提出,FD是信号复杂性的有用指标,MFL是活动水平的有用指标,两者的结合适用于利用表面肌电信号识别与低水平肌肉收缩相对应的动作和手势,并利用脑电图估计操作者的整体警觉性水平。结果表明,用户任务绩效和假设水平的波动与用户任务绩效的波动有关。
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Fractal features based technique to identify subtle forearm movements and to measure alertness using physiological signals (sEMG, EEG)
This research paper reports the use of fractal features based technique in physiological signals like surface electromyogram (sEMG), electroencephalogram (EEG) which has gained increasing attention in biosignal processing for medical and healthcare applications. This research reports the use of fractal dimension, a fractal complexity measure in physiological signals and also reports identification of a new feature of sEMG, maximum fractal length (MFL), as a better measure of small or low level changes in the human activity. The authors propose that FD is a useful indicator of the complexity in signals and MFL is a useful indicator of the level of activity, and the combination of these is suitable for identifying actions and gestures corresponding to low-level muscle contraction using surface EMG signal and using EEG to estimate operatorpsilas global level of alertness. The results indicate that MFL is correlated with the fluctuations of the userpsilas task performance and putative level.
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