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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Eye-in-hand vision-based robotic bin-picking with active laser projection
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Eye-in-hand vision-based robotic bin-picking with active laser projection

机译:基于主动视觉的基于手眼视觉的机器人拾取箱

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摘要

In this paper, an eye-in-hand vision-based robotic bin-picking system is proposed. The system can identify the pose of a plumbing part from a pile and grip it correctly. A monocular eye-in-hand camera and a laser projector are employed to reconstruct the 3-D point cloud of plumbing parts stacked together. The projection direction of the laser line projector is controlled to change in order to scan the pile of objects while the camera is observing. 3-D points can then be determined by the a priori known geometry between the camera and the laser line projector. To estimate the pose of an object, the iterative closest point (ICP) is employed to match the point clouds of the object and the model. The transformation between the object and the model can thus be determined. A computed closer point (CCP) approach is proposed to estimate the pose of an object since the deviation from the object to the model is initially large in nature. The proposed CCP approach combining with the ICP algorithm can improve the success rate and accuracy of point cloud matching. The proposed system has been validated by experiments with potential applications in production lines.
机译:本文提出了一种基于手眼视觉的机器人垃圾箱拣选系统。该系统可以从堆中识别出管道部件的姿势并正确抓紧它。采用单眼手持摄像机和激光投影仪来重建堆叠在一起的管道部件的3D点云。控制激光线投影仪的投影方向以改变方向,以便在照相机观察时扫描一堆物体。然后,可以通过照相机和激光线投影仪之间的先验几何形状来确定3-D点。为了估计对象的姿态,采用迭代最近点(ICP)来匹配对象和模型的点云。因此可以确定对象与模型之间的转换。由于从对象到模型的偏差本质上是很大的,因此提出了一种计算的近点(CCP)方法来估计对象的姿态。提出的CCP方法结合ICP算法可以提高点云匹配的成功率和准确性。所提出的系统已经通过在生产线中的潜在应用进行了实验验证。

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