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A surface electromyography-based pre-impact fall detection method

机译:基于表面肌电图的撞击前跌倒检测方法

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Falls and fall related injuries seriously threaten the health of the elderly. To deal with the problem, a human pre-impact fall detection method based on surface electromyography (sEMG) signals was proposed. 20 subjects were recruited to collect the lower limb sEMG signals of their activities of daily living (ADLs) and fall process. The motion capture system was used to collect the coordinates of marker points in the subject's motion in real time. Time-domain features of the 4-channel EMG signals were extracted to construct feature vectors. Then Support Vector Machine(SVM) was trained and the activity was identified using the obtained classifiers. The experimental results showed that the sensitivity of the method reached 93.71%, the specificity reached 92.67%, and the average lead time was 202.4ms. This method can effectively predict falls and distinguish them from ADLs.
机译:跌倒和跌倒相关的伤害严重威胁着老年人的健康。针对该问题,提出了一种基于表面肌电信号的人体撞击前跌倒检测方法。招募了20名受试者以收集其下肢活动(ADL)和跌倒过程的下肢sEMG信号。运动捕捉系统用于实时收集对象运动中标记点的坐标。提取4通道EMG信号的时域特征以构建特征向量。然后训练支持向量机(SVM),并使用获得的分类器识别活动。实验结果表明,该方法的灵敏度达到93.71%,特异性达到92.67%,平均交货时间为202.4ms。这种方法可以有效地预测跌倒并将其与ADL区别开。

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