2017
DOI: 10.3389/fnbot.2017.00060
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Closed-Loop Hybrid Gaze Brain-Machine Interface Based Robotic Arm Control with Augmented Reality Feedback

Abstract: Brain-machine interface (BMI) can be used to control the robotic arm to assist paralysis people for performing activities of daily living. However, it is still a complex task for the BMI users to control the process of objects grasping and lifting with the robotic arm. It is hard to achieve high efficiency and accuracy even after extensive trainings. One important reason is lacking of sufficient feedback information for the user to perform the closed-loop control. In this study, we proposed a method of augment… Show more

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Cited by 60 publications
(44 citation statements)
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“…In addition, an indirect measurement method typified by computer vision has excellent recognition performance with the help of deep learning [2] , but the recognition accuracy is affected by intensity of surrounding light, image background, and obstacle occlusion. Recently, bio-signal based hand recognition has become a hotspot [3][4][5] , which has the advantages of comfortable wearing, unrestricted hand shape and outdoor usage. Since the motion of the hand and wrist is mainly innervated by the forearm muscles, one of the mainstream research directions is to extract potential motion intentions from the forearm muscles signals.…”
Section: Introductionmentioning
confidence: 99%
“…In addition, an indirect measurement method typified by computer vision has excellent recognition performance with the help of deep learning [2] , but the recognition accuracy is affected by intensity of surrounding light, image background, and obstacle occlusion. Recently, bio-signal based hand recognition has become a hotspot [3][4][5] , which has the advantages of comfortable wearing, unrestricted hand shape and outdoor usage. Since the motion of the hand and wrist is mainly innervated by the forearm muscles, one of the mainstream research directions is to extract potential motion intentions from the forearm muscles signals.…”
Section: Introductionmentioning
confidence: 99%
“…In case the obstacle were to be knocked away by the end-effector in a run, it would then be relocated to the fixed coordinates in the next run. In our previous work, we investigated how to improve the robot grasping performance with the hybrid gaze-BMI control (Zeng et al, 2017). Thereby, we will focus on improving the reaching performance in the current study, and the grasping task will be completed automatically.…”
Section: Methodsmentioning
confidence: 99%
“…In this work, the hybrid gaze-BMI operated in two modes. In stage 1, as in Frisoli et al (2012), McMullen et al (2014), and Zeng et al (2017), the user exploited the interface in a discrete selection mode to specify the intended target location for the system by firstly gazing at the center of the target object in GUI and then issuing the confirmation once the posterior probability value for the MI state exceeded the threshold (0.6 in our experiment). After a successful target object selection indicated by the augmented reality (AR) feedback (illustrated in subsection "Camera, GUI and Computer Vision"), the hybrid gaze-BMI automatically entered the continuous-valued velocity control mode in stage 2 (the horizontal reaching).…”
Section: Two Operation Modes Of the Hybrid Gaze-bmi Controlmentioning
confidence: 99%
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