Toward a Better Robotic Hand Prosthesis Control: Using EMG and IMU Features for a Subject Independent Multi Joint Regression Model

Francesca Stival, S. Michieletto, Andrea De Agnoi, E. Pagello
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引用次数: 6

Abstract

Ahstract- The interest on wearable prosthetic devices has boost the research for a robust framework to help injured subjects to regain their lost functionality. A great number of solutions exploit physiological human signals, such as Electromyography (EMG), to naturally control the prosthesis, reproducing what happens in the human limbs. In this paper, we propose for the first time a way to integrate EMG signals with Inertial Measurement Unit (IMU) information, as a way to improve subject-independent models for controlling robotic hands. EMG data are very sensitive to both physical and physiological variations, and this is particularly true between different subjects. The introduction of IMUs aims at enriching the subject-independent model, making it more robust with information not strictly dependent from the physiological characteristics of the subject. We compare three different models: the first based on EMG solely, the second merging data from EMG and the 2 best IMUs available, and the third using EMG and IMUs information corresponding to the same 3 electrodes. The three techniques are tested on two different movements executed by 35 healthy subjects, by using a leave-one-out approach. The framework is able to estimate online the bending angles of the joints involved in the motion, obtaining an accuracy up to 0.8634. The resulting joint angles are used to actuate a robotic hand in a simulated environment.
面向更好的机械手假体控制:基于EMG和IMU特征的主体独立多关节回归模型
摘要:对可穿戴假肢设备的兴趣推动了对一个强大框架的研究,以帮助受伤受试者恢复其失去的功能。大量的解决方案利用人体生理信号,如肌电图(EMG),来自然地控制假肢,重现人类四肢发生的事情。在本文中,我们首次提出了一种将肌电信号与惯性测量单元(IMU)信息相结合的方法,作为一种改进机器人手控制的主体无关模型的方法。肌电图数据对生理和生理变化都非常敏感,在不同的受试者之间尤其如此。引入imu的目的是丰富主体独立模型,使其具有不严格依赖于主体生理特征的信息,从而更加稳健。我们比较了三种不同的模型:第一种模型仅基于肌电图,第二种模型将肌电图和2个最佳的imu数据合并,第三种模型使用肌电图和imu信息对应相同的3个电极。这三种技术在35名健康受试者的两种不同动作中进行了测试,采用了“留一”的方法。该框架能够在线估计参与运动的关节的弯曲角度,精度高达0.8634。得到的关节角度用于在模拟环境中驱动机械手。
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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