Robotic Path Planning for Inspection of Complex-Shaped Objects

Min-Woo Na, Jae-Bok Song
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引用次数: 1

Abstract

In 3D measurement inspection systems, precise registration between measured point clouds is required to obtain high quality results. In such cases, it is critical that there be proper overlaps between the measurements and that the overall shapes be measured without any blank areas. Thus, if the inspection system does not reflect the shape of the object, unmeasured areas may remain, causing the registration to fail or deteriorate. To solve this problem, a robotic path planning method to measure all areas of complex shaped objects is proposed. First, a segmentation-based view planning to extract a viewpoint that properly reflects the object shape is presented. In addition, occlusions that may occur in the extracted viewpoints are prevented, and path planning is performed to make the viewpoint available to a measurement system comprising a robot and rotary table. Furthermore, it is shown that a complex-shaped object can be measured without occlusions using the proposed method.
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复杂形状物体检测的机器人路径规划
在三维测量检测系统中,测量点云之间需要精确配准才能获得高质量的测量结果。在这种情况下,在测量之间有适当的重叠是至关重要的,并且测量的整体形状没有任何空白区域。因此,如果检测系统不能反映物体的形状,未测量的区域可能会留下,导致注册失败或恶化。为了解决这一问题,提出了一种测量复杂形状物体所有区域的机器人路径规划方法。首先,提出了一种基于分割的视图规划方法,以提取一个正确反映物体形状的视点;此外,可以防止在提取的视点中可能发生的遮挡,并执行路径规划,使视点可用于由机器人和转台组成的测量系统。结果表明,该方法可以实现无遮挡的复杂形状物体的测量。
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