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Artificial Intelligence-based Approach for Gait Pattern Identification Using Surface Electromyography (SEMG)

机译:基于人工智能的步态模式识别方法使用表面肌电图(SEMG)

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Internet of Things (IoT) is gaining significant development for various applications, including healthcare and medical field. The connectivity of sensor nodes using IoT enables the possibility of extracting more features from the data gathered. This information can be used to prepare real-time assistive technology and help in supervision, alert generation, training, and logging the activity for future purposes. In this work wearable Electromyography (EMG) based system is being presented to measure gait parameters in everyday life. EMG is implemented for recording the electrical activity of muscle tissue. Therefore, surface EMG (SEMG) is employed in most research works to get information related to muscle movements in health and posture recognition. We use gait prediction of a person using SEMG to monitor daily living activities, which includes climbing, walking, jogging, and jumping. The MyoWare muscle sensor is used for the experiment. The fetched data is processed using a deep neural network model to recognize the above-mentioned activities. The 98.44 percent accuracy is observed with the convolutional neural network model.
机译:事情互联网(物联网)对各种申请的显着发展,包括医疗保健和医疗领域。使用IOT的传感器节点的连接使得能够从收集的数据中提取更多功能。此信息可用于准备实时辅助技术,并帮助监督,警报生成,培训和记录活动以备将来目的。在这项工作中,正在展示可穿戴的肌电图(EMG)的系统,以测量日常生活中的步态参数。实施EMG用于记录肌肉组织的电活动。因此,在大多数研究工作中采用表面EMG(SEMG),以获取与健康和姿势识别的肌肉运动有关的信息。我们使用SEMG的人的步态预测监测日常生活活动,包括攀登,走路,慢跑和跳跃。 Myoware肌肉传感器用于实验。使用深神经网络模型处理获取的数据以识别上述活动。用卷积神经网络模型观察到98.44%的精度。

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