Ankle Intention Detection Algorithm with HD-EMG Sensor

Inwoo Kim, H. Jung, Jongkyu Kim, Sihwan Kim, Jong-Myung Park, Soo-Hong Lee
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Abstract

The ankle plays a very large role as an end effector in gait and leg erection. As the number of people with reduced mobility in the ankle joint due to aging and nerve damage increases, rehabilitation and related research are steadily increasing. However, most studies overlook the eversion action that plays an important role in stability. In this study, an intention detection algorithm including the eversion motion was developed, and a multi-channel EMG sensor module was developed and utilized. By moving the ankle in a specific direction, 36 channels of EMG signals were measured to determine the correlation between ankle motion and EMG signals. CNN and ADAM were used for algorithm production, and ankle motion was estimated with high accuracy.
基于HD-EMG传感器的踝关节意图检测算法
踝关节作为末端执行器在步态和腿部勃起中起着非常重要的作用。随着因衰老和神经损伤导致踝关节活动能力降低的人群越来越多,康复及相关研究也在不断增加。然而,大多数研究忽略了在稳定性中起重要作用的外翻作用。在本研究中,开发了一种包含外倾运动的意图检测算法,并开发和利用了多通道肌电传感器模块。通过特定方向运动踝关节,测量36个通道的肌电信号,确定踝关节运动与肌电信号的相关性。算法制作采用CNN和ADAM,踝关节运动估计精度较高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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