Vision-based adaptive grasping of a humanoid robot arm

K. Song, Shih-Cheng Tsai
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引用次数: 16

Abstract

This paper presents a motion planning and control design of a humanoid robot arm for vision-based grasping in an obstructed environment. A Kinect depth camera is utilized to recognize and find the target object in the environment and grasp it in real-time. First, gradient direction in a depth image is applied to segment environment into several planes. Then, speed up robust feature(SURF) is used to match features between segmented planes and locate the target object. This approach effectively speeds up the matching operation by decreasing the area to match in image planes. Moreover, this study proposes a design for safe operation of the robot arm in an unknown environment. Two safe indices are designed to improve the robustness in safe grasping in an obstructed environment. One index defines the degree of influence of obstacles to the manipulator. Another index classifies the workspace into three regions, namely safe, uncertainty and danger region. The robot employs these indices to move to safe regions by using a potential field for motion planning. Practical experiments show that the six degree- of-freedom robot arm can effectively avoid obstacles and complete the grasping task.
基于视觉的仿人机械臂自适应抓取
提出了一种基于视觉抓取的仿人机械臂在障碍物环境下的运动规划与控制设计。Kinect深度摄像头用于识别和寻找环境中的目标物体并实时抓取。首先,利用深度图像中的梯度方向将环境分割成多个平面;然后,利用加速鲁棒特征(SURF)在分割平面之间进行特征匹配,实现目标物体的定位。该方法通过减小图像平面上的匹配面积,有效地加快了匹配速度。此外,本研究提出了一种未知环境下机械臂的安全操作设计。设计了两个安全指标,以提高在障碍物环境中安全抓取的鲁棒性。一个指标定义了障碍对操纵器的影响程度。另一项指标将工作空间分为三个区域,即安全、不确定和危险区域。机器人利用这些指标,利用势场进行运动规划,从而移动到安全区域。实际实验表明,该六自由度机械臂能够有效地避开障碍物,完成抓取任务。
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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