Activity Detection from Wearable Electromyogram Sensors using Hidden Markov Model

Rinki Gupta, Karush Suri
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Abstract

Surface electromyography (sEMG) has gained significant importance during recent advancements in consumer electronics for healthcare systems, gesture analysis and recognition and sign language communication. For such a system, it is imperative to determine the regions of activity in a continuously recorded sEMG signal. The proposed work provides a novel activity detection approach based on Hidden Markov Models (HMM) using sEMG signals recorded when various hand gestures are performed. Detection procedure is designed based on a probabilistic outlook by making use of mathematical models. The requirement of a threshold for activity detection is obviated making it subject and activity independent. Correctness of the predicted outputs is asserted by classifying the signal segments around the detected transition regions as activity or rest. Classified outputs are compared with the transition regions in a stimulus given to the subject to perform the activity. The activity onsets are detected with an average of 96.25% accuracy whereas the activity termination regions with an average of 87.5% accuracy with the considered set of six activities and four subjects.
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基于隐马尔可夫模型的可穿戴式肌电传感器活动检测
表面肌电图(sEMG)在最近的医疗保健系统,手势分析和识别以及手语交流的消费电子领域取得了重大进展。对于这样一个系统,必须确定连续记录的表面肌电信号中的活动区域。提出的工作提供了一种基于隐马尔可夫模型(HMM)的新颖活动检测方法,该方法使用各种手势时记录的表面肌电信号。利用数学模型,设计了基于概率观的检测程序。消除了对活动检测阈值的要求,使其独立于主体和活动。通过将检测到的过渡区域周围的信号段分类为活动或休息来断言预测输出的正确性。分类输出与给定给受试者执行活动的刺激中的过渡区域进行比较。在考虑的6个活动和4个受试者的集合中,检测活动开始区域的平均准确率为96.25%,而检测活动终止区域的平均准确率为87.5%。
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