一种便携式MIDI控制器,使用基于肌电图的单个手指运动分类

F. Bitar, N. Madi, E. Ramly, M. Saghir, F. Karameh
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引用次数: 6

摘要

利用前臂的非侵入性生物信号读数对手的五个手指的运动进行分类仍然是一个未解决的研究挑战。它的解决方案适用于免提遥控设备、舞台现场表演、消费娱乐、视频游戏行业,最重要的是,适用于截肢者的假肢设计。本文提出了一种利用连续小波变换(CWT)对前臂肌肉肌电信号进行分解和支持向量机(SVM)分类的解决方案。最终的设计是一个低成本、低功耗、低复杂性的便携式嵌入式系统,它被绑在手臂上,在那里它收集肌电信号,实时分类,并通过蓝牙将结果分类标签发送到远程接口。然后将这些标签转换为乐器数字接口(MIDI)命令,可用于控制任何MIDI可控设备。虽然该设计充其量还处于原型阶段,但它提供了一个概念验证,即仅根据前臂肌肉的肌电图读数进行非侵入性手指运动分类。预期系统的实验仿真精度达到91%。
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A Portable MIDI Controller Using EMG-Based Individual Finger Motion Classification
Classifying the motion of the five fingers of the hand using non-invasive bio-signal readings from the forearm is still an unsolved research challenge. Its solution is relevant to hands-free remote control devices, on-stage live performances, consumer entertainment, the video game industry, and most importantly the design of hand prosthetics for amputees. This paper proposes a solution that uses the continuous wavelet transform (CWT) decompositions of electromyography (EMG) signals from the forearm muscles, and Support Vector Machines (SVM) classification. The resulting design is a low cost, low power and low complexity portable embedded system that is strapped to the arm, where it collects EMG signals, classifies them in real-time, and sends the resulting class labels via Bluetooth to a remote interface. These labels are then converted into musical instrument digital interface (MIDI) commands that can be used to control any MIDI-controllable device. While the design is still at the prototype stage at best, it provides a proof-of-concept of non-invasive finger motion classification solely based on EMG readings from the forearm muscles. Experimental simulation of the expected system achieved 91% accuracy.
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