6D Pose Estimation for Precision Assembly

Ola Skeik, M. S. Erden, X. Kong
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Abstract

The assembly of 3D products with complex geometry and material, such as a concentrator photovoltaics solar panel unit, is typically conducted manually. This results in low efficiency, precision and throughput. This study is motivated by an actual industrial need and targeted towards automation of the currently manual assembly process. By replacing the manual assembly with robotic assembly systems, the efficiency and throughput could be improved. Prior to assembly, it is essential to estimate the pose of the objects to be assembled with high precision. The choice of the machine vision is important and plays a critical role in the overall accuracy of such a complex task. Therefore, this work focuses on the 6D pose estimation for precision assembly utilizing a 3D vision sensor. The sensor we use is a 3D structured light scanner which can generate high quality point cloud data in addition to 2D images. A 6D pose estimation method is developed for an actual industrial solar-cell object, which is one of the four objects of an assembly unit of concentrator photovoltaics solar panel. The proposed approach is a hybrid approach where a mask R-CNN network is trained on our custom dataset and the trained model is utilized such that the predicted 2D bounding boxes are used for point cloud segmentation. Then, the iterative closest point algorithm is used to estimate the object's pose by matching the CAD model to the segmented object in point cloud.
高精度装配的6D姿态估计
具有复杂几何形状和材料的3D产品的组装,例如聚光光伏太阳能电池板单元,通常是手动进行的。这导致了低效率,精度和吞吐量。本研究的动机是实际的工业需求,并针对目前手工装配过程的自动化。用机器人装配系统代替人工装配,可以提高效率和产量。在装配之前,必须对被装配物体的姿态进行高精度估计。机器视觉的选择是非常重要的,并且对这样一个复杂任务的整体精度起着至关重要的作用。因此,这项工作的重点是利用3D视觉传感器进行精确装配的6D姿态估计。我们使用的传感器是一个3D结构光扫描仪,除了2D图像外,还可以生成高质量的点云数据。针对聚光光伏太阳能电池板装配单元中四个物体之一的实际工业太阳能电池物体,提出了一种6D姿态估计方法。提出的方法是一种混合方法,其中在我们的自定义数据集上训练掩模R-CNN网络,并利用训练好的模型,使预测的2D边界框用于点云分割。然后,利用迭代最近点算法将CAD模型与点云中分割的目标进行匹配,估计目标的姿态;
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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