Automation of a wheelchair mounted robotic arm using computer vision interface

Priyanka Karuppiah, Hemant D. Metalia, K. George
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引用次数: 11

Abstract

Assistive robotic devices have great potential to improve the quality of life for individuals suffering with movement disorders. One such device is a robot-arm which helps people with upper body mobility to perform daily tasks. Manual control of robot arms can be challenging for wheelchair users with upper extremity disorders. This research presents an autonomous wheelchair mounted robotic arm built using a computer vision interface. The design utilizes a robotic arm with six degrees of freedom, an electric wheelchair, computer system and two vision sensors. One vision sensor detects the coarse position of the colored objects placed randomly on a shelf located in front of the wheelchair by using a computer vision algorithm. The other vision sensor provides fine localization by ensuring the object is correctly positioned in front of the gripper. The arm is then controlled automatically to pick up the object and return it to the user. Tests have been conducted by placing objects at different locations and the performance of the robotic arm is tabulated. An average task completion time of 37.52 seconds is achieved.
基于计算机视觉接口的轮椅机械臂自动化
辅助机器人设备在改善运动障碍患者的生活质量方面具有巨大的潜力。其中一种设备是机器人手臂,它可以帮助上肢活动的人完成日常任务。对于上肢疾病的轮椅使用者来说,手动控制机器人手臂是一项挑战。本研究提出了一种基于计算机视觉界面的自动轮椅机械臂。该设计利用了一个有六个自由度的机械臂、一个电动轮椅、计算机系统和两个视觉传感器。一个视觉传感器通过计算机视觉算法检测随机放置在轮椅前面架子上的彩色物体的粗略位置。另一个视觉传感器通过确保物体在抓手前方的正确位置来提供精确的定位。然后自动控制手臂拿起物体并将其返回给用户。通过将物体放置在不同位置进行测试,并将机械臂的性能制成表格。平均任务完成时间为37.52秒。
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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