A Novel Method for the Localization of Convex Workpieces in Robot Workspace Using Gauss Map

Jie Hu, P. Pagilla, S. Darbha
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Abstract

Workpiece localization is the process of obtaining the location of a workpiece in a robot workspace. The location (position and orientation) is represented by the transformation between the workpiece (local) coordinate frame and the reference (world) frame. In this work, we propose a workpiece localization strategy to automate the localization process by collecting data sequentially and efficiently without the two common restrictive assumptions: the data used to calculate the transformation is readily available and the correspondence between the features used for calculation is known. Correspondingly, two subproblems are involved: (1) determining the correspondence between the measured data and the CAD model data, and (2) determining the next-best-views (NBVs) in case of limited measurement data. We assume the workpiece is convex and has at least three flat surfaces. We use the extended Gaussian images (EGIs) from the Gauss map of both the CAD model point clouds and measured point clouds to find the flat surfaces on the workpiece. A mixed integer convex optimization problem is solved to estimate the correspondence and the rotation between the flat surfaces in the CAD model and the measured point clouds. The translation part of the homogeneous transformation is obtained by solving a least-squares problem using the estimated correspondence. Potential views for further measuring the workpiece are generated by evaluating a defined search region to find the NBVs based on a specified criterion. The workpiece is considered to be fully localized when the distances in the estimated homogeneous transformation matrices are within a predefined threshold. Simulation results are provided to show the effectiveness of the proposed localization method.
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基于高斯映射的机器人工作空间凸件定位新方法
工件定位是获得工件在机器人工作空间中的位置的过程。位置(位置和方向)由工件(局部)坐标系和参考(世界)坐标系之间的变换表示。在这项工作中,我们提出了一种工件定位策略,通过顺序有效地收集数据来实现定位过程的自动化,而不需要两个常见的限制性假设:用于计算转换的数据是现成的,并且用于计算的特征之间的对应关系是已知的。相应地,涉及两个子问题:(1)确定测量数据与CAD模型数据之间的对应关系;(2)确定有限测量数据情况下的次优视图(NBVs)。我们假设工件是凸的,并且至少有三个平面。我们使用来自CAD模型点云和测量点云的高斯图的扩展高斯图像(EGIs)来寻找工件上的平面。解决了一个混合整数凸优化问题,以估计CAD模型中平面与测量点云之间的对应关系和旋转。利用估计的对应关系求解最小二乘问题,得到齐次变换的平移部分。进一步测量工件的潜在视图是通过评估一个定义的搜索区域来生成的,以根据指定的标准找到nvb。当估计的齐次变换矩阵中的距离在预定义的阈值内时,工件被认为是完全局部化的。仿真结果表明了所提出的定位方法的有效性。
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