Research of high-efficiency extraction of edges of large complex components in three-dimensional point clouds

Jing Li, Jiangchuan Fan, Nanyan Shen, Hui Qian
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Abstract

With the rapid development of the automobile manufacturing industry, major automobile manufacturers around the world are stepping up digital transformation to achieve high-flexible, efficient and high-quality automobile production to adapt to the increasingly competitive market situation. Robots play an important role in automobile manufacturing. In the process of automobile manufacturing, the performance and quality of the product largely depend on the size accuracy of the parts, so edge information needs to be tested before the product is produced and assembled. At the same time, in the field of path planning, people need to obtain geometric feature information such as the edge of components in advance. However, large components are due to various the accuracy of the error needs to be scanned on the spot, and then processed after obtaining the point cloud. In this paper, a new method for quickly extracting edge contours from large-scale point clouds is studied. In the process of finding edges in two-dimensional images, some optimizations have also been made to make them more suitable for edge extraction of such plane structures. We also demonstrated the application of this method in a bus and compared it with two traditional methods.
三维点云中大型复杂成分边缘的高效提取研究
随着汽车制造业的快速发展,世界各大汽车制造商都在加紧数字化转型,以实现高灵活、高效、高质量的汽车生产,以适应竞争日益激烈的市场形势。机器人在汽车制造中起着重要的作用。在汽车制造过程中,产品的性能和质量在很大程度上取决于零件的尺寸精度,因此在产品生产和组装之前需要对边缘信息进行测试。同时,在路径规划领域,人们需要提前获取构件的边缘等几何特征信息。然而,较大的部件则由于精度的各种误差需要在现场进行扫描,然后在获得点云后再进行处理。研究了一种从大规模点云中快速提取边缘轮廓的新方法。在二维图像中寻找边缘的过程中,也进行了一些优化,使其更适合于这类平面结构的边缘提取。最后,通过实例验证了该方法的应用,并与两种传统方法进行了比较。
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