Klasifikasi Gerakan Jari Tangan Berdasarkan Sinyal Electromyogram Pada Lengan

Catur Atmaji, Yusuf Waraqa Santoso, Roghib Muhammad Hujja, Andi Dharmawan, Danang Lelono
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引用次数: 1

Abstract

An electromyogram is a recording of muscle activity. These signals have been used both for medical diagnosis and engineering such as finger motion detection in healthy people and rehabilitation patients. Many studies have been conducted to map the relationship between electromyogram and finger movements, one of which is the relationship between the number of channels used and the complexity of the system. The number of channels used is directly proportional to the complexity of a system. The more complex the system, the heavier the data processing is so that it requires greater resources. Therefore, this study focuses on the construction of a classification system for human finger movements using fewer channels. The number of channels used in this study is 4. Root Mean Square is applied in a sliding window as feature extraction. The classifier used is the artificial neural network. System validation is done with 10-fold cross-validation. The test results of the average accuracy value for the thumb, index finger, middle finger, ring finger, little finger, grip, and relaxation were 89%, 90%, 93%, 95%, 93%, 94%, and 91% respectively which can be said to be quite good considering the number of channels relatively few compared to previous studies.
手部肌电信号对手部运动的分类
肌电图是对肌肉活动的记录。这些信号已被用于医学诊断和工程,如健康人和康复患者的手指运动检测。已经进行了许多研究来绘制肌电图和手指运动之间的关系,其中之一是所使用的通道数量和系统复杂性之间的关系。所使用的通道数量与系统的复杂性成正比。系统越复杂,数据处理就越繁重,因此需要更多的资源。因此,本研究的重点是构建一个使用较少通道的人类手指运动分类系统。本研究中使用的通道数量为4个。均方根作为特征提取应用于滑动窗口中。所使用的分类器是人工神经网络。系统验证采用10倍交叉验证。拇指、食指、中指、无名指、小指、握持和放松的平均准确度值的测试结果分别为89%、90%、93%、95%、93%、94%和91%,考虑到与先前研究相比通道数量相对较少,这可以说是相当好的。
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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