眼-手协调
计算机科学
球(数学)
人工智能
机器人
顺利追击
眼球运动
计算机视觉
模拟
培训体系
物理医学与康复
数学
经济增长
医学
数学分析
经济
作者
Xiao Li,Hong Zeng,C. Kevin Yang,Aiguo Song
标识
DOI:10.1109/icra48891.2023.10160956
摘要
Robot-assisted eye-hand coordination rehabilitation training system is extremely urgent to study since recent evidence suggests that eye-hand coordination can be brutally disturbed by stroke with critical consequences on motor behavior. In this paper, we develop a robot-assisted eye-hand coordination training system by estimating motion direction using smooth-pursuit eye movements. Firstly, we design a Pong Game, which requires users to extrapolate the direction of a linearly moving ball and to predict whether this ball would be hit. Secondly, the motion direction of the ball is estimated via smooth-pursuit eye movements, allowing the robot quickly establish an assistive force field to hit the ball. Thirdly, adding haptic feedback technology into this training system to make users more immersive. Finally, we conduct a feasibility study with eight healthy subjects to verify the effectiveness of the proposed system. The experimental results show that the mean success rate for hitting the pong ball of the experiment group (assistance turn-on) is 28.33% higher than that of the control group (assistance turn-off), and the mean interception time of the experiment group is 0.35s shorter than that of the control group. Therefore, the developed system may be promising for transferring to the robot-assisted eye-hand coordination rehabilitation training for post-stroke patients.
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