首页> 外文会议>IEEE International Conference on Biomedical Robotics and Biomechatronics >Hand Gesture Classification in Transradial Amputees Using the Myo Armband Classifier* This work was partially supported by the Swiss National Science Foundation Sinergia project # 410160837 MeganePro.
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Hand Gesture Classification in Transradial Amputees Using the Myo Armband Classifier* This work was partially supported by the Swiss National Science Foundation Sinergia project # 410160837 MeganePro.

机译:使用Myo臂章分类器对Trans骨截肢者的手势进行分类*这项工作得到了瑞士国家科学基金会Sinergia项目#410160837 MeganePro的部分支持。

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Dexterous hand prostheses controlled via surface electromyography represent the most advanced non invasive functional restorative solution for hand amputees. However, control difficulties, comfort problems and high costs are still the main limitations of such commercial devices. The high cost can represent a barrier that is difficult to overcome, especially for pediatric populations and in developing countries. Low-cost technology was successfully used in the hand prosthetics field in recent years. In previous work, a low-cost gesture recognition armband called Myo showed promising results for hand gesture classification tasks in intact subjects. Most of these applications were based on machine learning techniques applied to the Myo raw data. However, the classifier provided with the Myo is able to identify five hand gestures, providing capabilities as a myoelectric control system. No studies have quantitatively investigated its performance in subjects with hand amputation, yet. The aim of this study is to quantitatively evaluate the performance of the Myo hand gesture classifier in hand amputees. Three subjects with hand amputation were asked to attempt performing the five pre-set hand gestures. Each gesture was repeated three times with the arm in three different postures. The subjects did not perform any training and did not receive any feedback. Overall classification accuracy for the four hand gestures based on electromyographic data ranged between 50% and 97%. A clear relation between the length of the residual limb and the classification accuracy was observed. The results show that the Myo built-in classifier can provide good performance when tested on hand amputees, supporting its applicability as a low-cost myoelectric control system.
机译:通过表面肌电图控制的敏捷手部假肢是手截肢者最先进的无创功能性修复解决方案。然而,控制困难,舒适性问题和高成本仍然是这种商用设备的主要限制。高昂的费用可能是一个难以克服的障碍,特别是对于儿科人群和发展中国家而言。近年来,低成本技术已成功应用于手部修复术领域。在以前的工作中,一个名为Myo的低成本手势识别臂章在完整受试者的手势分类任务中显示出了可喜的成果。这些应用程序大多数基于应用于Myo原始数据的机器学习技术。但是,Myo随附的分类器能够识别五个手势,提供了作为肌电控制系统的功能。尚无研究定量研究其在截肢患者中的表现。这项研究的目的是定量评估手截肢者中Myo手势分类器的性能。要求三名截肢患者尝试执行五种预设手势。手臂以三种不同姿势重复每个手势3次。受试者没有进行任何训练,也没有收到任何反馈。基于肌电数据的四种手势的总体分类准确度介于50%和97%之间。观察到残肢的长度与分类准确度之间的明确关系。结果表明,Myo内置分类器在手持截肢者身上进行测试时可以提供良好的性能,从而支持其作为低成本肌电控制系统的适用性。

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