Abstract

BackgroundA brain-machine interface (BMI) should be able to help people with disabilities by replacing their lost motor functions. To replace lost functions, robot arms have been developed that are controlled by invasive neural signals. Although invasive neural signals have a high spatial resolution, non-invasive neural signals are valuable because they provide an interface without surgery. Thus, various researchers have developed robot arms driven by non-invasive neural signals. However, robot arm control based on the imagined trajectory of a human hand can be more intuitive for patients. In this study, therefore, an integrated robot arm-gripper system (IRAGS) that is driven by three-dimensional (3D) hand trajectories predicted from non-invasive neural signals was developed and verified.MethodsThe IRAGS was developed by integrating a six-degree of freedom robot arm and adaptive robot gripper. The system was used to perform reaching and grasping motions for verification. The non-invasive neural signals, magnetoencephalography (MEG) and electroencephalography (EEG), were obtained to control the system. The 3D trajectories were predicted by multiple linear regressions. A target sphere was placed at the terminal point of the real trajectories, and the system was commanded to grasp the target at the terminal point of the predicted trajectories.ResultsThe average correlation coefficient between the predicted and real trajectories in the MEG case was 0.705 pm 0.292 ({text{p}} < 0.001). In the EEG case, it was 0.684 pm 0.309 ({text{p}} < 0.001). The success rates in grasping the target plastic sphere were 18.75 and 7.50 % with MEG and EEG, respectively. The success rates of touching the target were 52.50 and 58.75 % respectively.ConclusionsA robot arm driven by 3D trajectories predicted from non-invasive neural signals was implemented, and reaching and grasping motions were performed. In most cases, the robot closely approached the target, but the success rate was not very high because the non-invasive neural signal is less accurate. However the success rate could be sufficiently improved for practical applications by using additional sensors. Robot arm control based on hand trajectories predicted from EEG would allow for portability, and the performance with EEG was comparable to that with MEG.

Highlights

  • A brain-machine interface (BMI) should be able to help people with disabilities by replacing their lost motor functions

  • Monkeys have fed themselves by controlling a robotic arm [10], and humans have used invasive neural signals to control a seven-degree of freedom (DOF) robot arm as if it were their own arm [11, 12]

  • The invasive BMI studies achieved control of a robot arm with seven DOFs [11, 12], the present study focused only on the three DOFs of the translational movements

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Summary

Introduction

A brain-machine interface (BMI) should be able to help people with disabilities by replacing their lost motor functions. Robot arms have been developed that are controlled by invasive neural signals. An integrated robot arm-gripper system (IRAGS) that is driven by three-dimensional (3D) hand trajectories predicted from non-invasive neural signals was developed and verified. An invasive electrode array collects the neural signal directly from the brain tissues It has the advantage of high spatial resolution, which allows for accurate prediction of the human intention. In these studies, robot arms were controlled according to the predicted three-dimensional (3D) trajectories of a human hand. This approach enables subjects to control a robot arm intuitively as if it were their own arm

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