首页> 外文期刊>IEEE transactions on automation science and engineering >Coarse Alignment for Model Fitting of Point Clouds Using a Curvature-Based Descriptor
【24h】

Coarse Alignment for Model Fitting of Point Clouds Using a Curvature-Based Descriptor

机译:使用基于曲率的描述符进行点云模型拟合的粗对准

获取原文
获取原文并翻译 | 示例
           

摘要

This paper presents a method for coarse alignment of point clouds by introducing a new descriptor based on the local curvature. The method is developed for model fitting a CAD model for use in robotic assembly. The method is based on selecting keypoints depending on shape factors calculated from the local covariance matrix of the surface. A descriptor is then calculated for each keypoint by fitting two spheres that describe the curvature of the surface. The spheres are calculated using conformal geometric algebra, which gives a convenient and efficient description of the geometry. The keypoint descriptors for the model and the observed point cloud are then compared to estimate the corresponding keypoints, which are used to calculate the displacement. The method is tested in several experiments. One experiment is for robotic assembly, where objects are placed on a table and their position and orientation is estimated using a 3-D CAD model.Note to Practitioners-3-D cameras can be used in robotic assembly for recognizing objects, and for determining the position and orientation of parts to be assembled. In such applications, 3-D CAD models will be available for the objects, and point clouds representing each object can be generated for comparison with the observed point clouds from the 3-D camera. It is not straightforward to use existing descriptors in this paper, as the point cloud from the CAD model and the observed point cloud may differ due to different viewpoints and potential occlusions. The method proposed in this paper is intended to be easy to apply to industrial assembly problems where there is a need for a robust estimation of the displacement of an object, either as a coarse estimate for use in grasping or as an initial guess to use in fine registration for demanding assembly operations with close tolerances. The method exploits the curvature of the point clouds to accurately describe the surrounding surface of each point. This method serves as a basis for future industrial implementations.
机译:本文介绍了一种通过引入基于局部曲率的新描述符来粗略对准点云的方法。开发了该方法以对用于机器人装配的CAD模型进行模型拟合。该方法基于根据根据表面局部协方差矩阵计算出的形状因子选择关键点。然后,通过拟合描述表面曲率的两个球体,为每个关键点计算一个描述符。使用共形几何代数计算球体,从而方便,有效地描述几何。然后将模型的关键点描述符和观察到的点云进行比较,以估计相应的关键点,这些关键点用于计算位移。该方法在几个实验中进行了测试。一个实验是针对机器人装配的,将物体放在桌子上,并使用3-D CAD模型估计其位置和方向.Practitioners-3-D相机的注释可用于机器人装配中的物体识别和确定待组装零件的位置和方向。在此类应用中,将为对象提供3-D CAD模型,并生成代表每个对象的点云,以便与从3-D摄像机观察到的点云进行比较。在本文中使用现有的描述符并不是一件容易的事,因为来自CAD模型的点云和观察到的点云可能由于不同的观点和潜在的遮挡而有所不同。本文提出的方法旨在轻松应用于需要稳健估计对象位移的工业装配问题,既可以用作抓握的粗略估计,也可以用作用于抓取的初始猜测。对要求严格的装配操作进行精确配准,公差小。该方法利用点云的曲率来准确描述每个点的周围表面。这种方法是将来工业实现的基础。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号