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EEG/EMG based Architecture for the Early Detection of Slip-induced Lack of Balance

机译:基于EEG / EMG的架构,可及早发现滑移引起的平衡不足

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In this paper, we propose the preliminary version of a novel pre-impact fall detection (PIFD) strategy, optimized for the early recognition of balance loss during the steady walking.The technique has been implemented in a multi-sensor architecture aiming to jointly analyzes the muscular and cortical activity. The physiological signals were acquired from 10 electromyography (EMC) electrodes on the lower limbs and 13 electroencephalography (EEG) sites all along the scalp.Data from the EMGs are statistically treated and used both to identify abnormal muscular activities and to trigger the cortical activity assessment. The EEG computation branch evaluate the rate of variation of the EEG power spectrum density, named m, to describe the cortical responsiveness in live bands of interest. Then, a logical conditions network allows the system to recognize the loss of balance induced by the slippage, by considering both the evaluated muscular parameters and the cortical ones.Experimental validation on six adults (supported by the motion capture system) showed that the system reacts in a time compliant with the fall dynamic request (403.16 ms), ensuring a competitive detection accuracy (Sensitivity =93.33%, Specificity=99.82 %).
机译:在本文中,我们提出了一种新颖的撞击前跌倒检测(PIFD)策略的初步版本,该策略针对稳定行走过程中的平衡损失的早期识别进行了优化。该技术已在多传感器架构中实现,旨在共同分析肌肉和皮层活动。从下肢的10个肌电图(EMC)电极和头皮的13个脑电图(EEG)位置获取生理信号,对EMG的数据进行统计处理,并用于识别异常的肌肉活动和触发皮层活动评估。 EEG计算分支评估名为m的EEG功率谱密度的变化率,以描述感兴趣的实时频带中的皮质响应性。然后,逻辑条件网络允许系统通过同时考虑评估的肌肉参数和皮质参数来识别由滑移引起的平衡损失。对六名成年人(由运动捕捉系统支持)的实验验证表明,该系统做出了反应在符合跌落动态请求的时间(403.16毫秒)中,确保了具有竞争力的检测精度(灵敏度= 93.33%,特异性= 99.82%)。

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