3D Printed Brain-Controlled Robot-Arm Prosthetic via Embedded Deep Learning From sEMG Sensors

David Lonsdale, Li Zhang, Richard Jiang
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引用次数: 7

Abstract

In this paper, we present our work on developing robot arm prosthetic via deep learning. Our work proposes to use transfer learning techniques applied to the Google Inception model to retrain the final layer for surface electromyography (sEMG) classification. Data have been collected using the Thalmic Labs Myo Armband and used to generate graph images comprised of 8 subplots per image containing sEMG data captured from 40 data points per sensor, corresponding to the array of 8 sEMG sensors in the armband. Data captured were then classified into four categories (Fist, Thumbs Up, Open Hand, Rest) via using a deep learning model, Inception-v3, with transfer learning to train the model for accurate prediction of each on real-time input of new data. This trained model was then downloaded to the ARM processor based embedding system to enable the brain-controlled robot-arm prosthetic manufactured from our 3D printer. Testing of the functionality of the method, a robotic arm was produced using a 3D printer and off-the-shelf hardware to control it. SSH communication protocols are employed to execute python files hosted on an embedded Raspberry Pi with ARM processors to trigger movement on the robot arm of the predicted gesture.
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3D打印脑控机械臂假肢,通过嵌入式深度学习从表面肌电信号传感器
在本文中,我们介绍了通过深度学习开发机械手臂假肢的工作。我们的工作建议使用应用于Google Inception模型的迁移学习技术来重新训练表面肌电图(sEMG)分类的最后一层。使用Thalmic Labs Myo臂带收集数据,并用于生成由8个子图组成的图形图像,每个图像包含从每个传感器40个数据点捕获的肌电信号数据,对应于臂带中的8个肌电信号传感器阵列。然后,通过使用深度学习模型Inception-v3,将捕获的数据分为四类(拳头、竖起大拇指、张开手、休息),并使用迁移学习来训练模型,以便在实时输入新数据时准确预测每种数据。然后将训练好的模型下载到基于ARM处理器的嵌入系统中,使我们的3D打印机制造的脑控机械臂假肢成为可能。为了测试该方法的功能,使用3D打印机和现成的硬件来控制机械臂。SSH通信协议用于执行托管在带有ARM处理器的嵌入式树莓派上的python文件,以触发预测手势的机械臂上的运动。
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