首页> 外文会议>International Conference on Advanced Robotics and Mechatronics >Comparative Study of Motion Recognition with Temporal Modelling of Electromyography for Thumb and Index Finger Movements aiming for Wearable Robotic Finger Exercises
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Comparative Study of Motion Recognition with Temporal Modelling of Electromyography for Thumb and Index Finger Movements aiming for Wearable Robotic Finger Exercises

机译:旨在进行可穿戴机器人手指运动的拇指和食指运动的运动识别与肌电图时间建模的比较研究

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The project aims to perform pattern recognition of thumb and index finger gestures from the Electromyography (EMG) recordings acquired by a recently introduced External Wearable device. On the basis of the selected time domain features as reviewed based on classification performance, machine learning techniques, such as K-nearest neighbour (KNN), Support Vector Machine (SVM), Discriminant Analysis etc. are compared to choose a suitable model for recognition of same and different finger movements. The recognition model obtained for a set of six hand-finger gestures shows an accuracy of 80-86% in KNN model for two Different movements of Thumb and index finger and about S2-SS% in SVM model for two same movements of index finger and thumb using single myo armband. The trained model obtained from single myo armband was also tested with data from double myo armbands. As a result, the accuracy obtained was in a range of 66-82% for various gestures. The post-analysis results are promising and competent evidence for available literature and for developing user-friendly medical devices. The purpose of analyzing the following gestures using Myo armband is to implement a suitable model for creating an intuitive human-machine interface like robotic Hand exoskeleton for rehabilitation purposes.
机译:该项目旨在从最近推出的“外部可穿戴设备”获取的肌电图(EMG)记录中进行拇指和食指手势的模式识别。根据分类性能回顾的所选时域特征,比较机器学习技术(例如K最近邻(KNN),支持向量机(SVM),判别分析等)以选择合适的模型进行识别相同和不同的手指动作。针对一组六个手部手势获得的识别模型显示,在拇指和食指两个不同动作的KNN模型中,其准确性为80-86%;在食指和手指两个相同动作的SVM模型中,该模型的准确性为S2-SS%。拇指使用单个Myo臂章。从单肌臂章获得的训练模型也用双肌臂的数据进行了测试。结果,对于各种手势,获得的精度在66-82%的范围内。分析后的结果为现有文献和开发用户友好型医疗设备提供了有前途且有力的证据。使用Myo臂章分析以下手势的目的是实现一个合适的模型,以创建直观的人机界面,例如用于康复目的的机械手外骨骼。

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