利用辅助机器人进行基于视觉的物体操作,为日常生活活动提供帮助

Md. Tanzil Shahria, J. Ghommam, R. Fareh, M. H. Rahman
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引用次数: 0

摘要

上肢和下肢(ULE)功能缺陷的发生率越来越高,这对个人独立完成日常任务的能力构成了巨大的挑战。机器人设备正在成为辅助设备,帮助上肢和下肢(ULE)功能受限的人完成日常活动(ADL)。虽然有了辅助机械手,但通过操纵杆等传统方法进行手动控制可能会很麻烦,特别是对于手部有严重损伤和视力受限的人来说。因此,自主/半自主控制机器人辅助设备来执行任何 ADL 任务的研究仍有待进行。本研究提出了一种创造性的方法,以满足在日常活动中培养独立性的需要。我们针对半自主 "拾放 "任务(ADLs 中最常见的活动之一)设计了一个六自由度(DoF)机器人机械手的基于视觉的控制系统。我们的方法包括利用 47 个 ADL 物体数据集选择和训练基于深度学习的物体检测模型,为 3D ADL 物体定位算法奠定基础。所提出的基于视觉的控制系统集成了这一定位技术,可实时识别和操纵 ADL 物体(如苹果、橘子、辣椒和杯子),将它们送回特定位置,以完成 "拾放 "任务。用 UFACTORY 的 xArm6(6 DoF)机器人在不同环境下进行的实验验证证明了该系统的适应性和有效性,在检测、定位和执行 ADL 任务方面的总体成功率达到 72.9%。这项研究为不断发展的自主辅助设备领域做出了贡献,提高了有功能障碍的个人的独立性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vision-Based Object Manipulation for Activities of Daily Living Assistance Using Assistive Robot
The increasing prevalence of upper and lower extremity (ULE) functional deficiencies presents a significant challenge, as it restricts individuals’ ability to perform daily tasks independently. Robotic devices are emerging as assistive devices to assist individuals with limited ULE functionalities in activities of daily living (ADLs). While assistive manipulators are available, manual control through traditional methods like joysticks can be cumbersome, particularly for individuals with severe hand impairments and vision limitations. Therefore, autonomous/semi-autonomous control of a robotic assistive device to perform any ADL task is open to research. This study addresses the necessity of fostering independence in ADLs by proposing a creative approach. We present a vision-based control system for a six-degrees-of-freedom (DoF) robotic manipulator designed for semi-autonomous “pick-and-place” tasks, one of the most common activities among ADLs. Our approach involves selecting and training a deep-learning-based object detection model with a dataset of 47 ADL objects, forming the base for a 3D ADL object localization algorithm. The proposed vision-based control system integrates this localization technique to identify and manipulate ADL objects (e.g., apples, oranges, capsicums, and cups) in real time, returning them to specific locations to complete the “pick-and-place” task. Experimental validation involving an xArm6 (six DoF) robot from UFACTORY in diverse settings demonstrates the system’s adaptability and effectiveness, achieving an overall 72.9% success rate in detecting, localizing, and executing ADL tasks. This research contributes to the growing field of autonomous assistive devices, enhancing independence for individuals with functional impairments.
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CiteScore
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