自动化光学三维计量任务工具链的开发

Prakash Jamakatel, Maximilian Eberhardt, F. Kerber
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摘要

现代制造过程的特点是产品的多样性和复杂性不断增加。因此,对快速灵活的过程自动化的需求不断增加。然而,更高的个性和较小的批量大小阻碍了标准机器人自动化系统的使用,这些系统非常适合重复任务,但在未知环境中挣扎。现代机械手,如协作工业机器人,为灵活的自动化提供了扩展功能。提出了一种基于自适应ros的视觉引导机器人过程自动化端到端工具链。处理步骤包括几个连续的任务:基于cad的对象配准,传感器引导应用的姿态生成,机器人机械手的轨迹生成,传感器引导机器人过程的执行,测试和结果评估。ROS框架的主要优点是易于适用于数字孪生功能的工具和为各种机械手系统建立的接口。为了验证该方法的有效性,以三维视觉系统为例进行了表面重构。在这个例子中,特征提取是视点生成的基础,而视点生成又定义了执行检查任务的机器人轨迹。分别使用神经网络和Voronoi协方差度量实现和评估了两种不同的特征点提取算法,以证明所提出工具链的通用性。结果表明,该方法可以实现复杂几何图形的自动重建,并且优于标准方法。因此,扩展到其他视觉控制应用程序似乎是可行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of a Toolchain for Automated Optical 3D Metrology Tasks
Modern manufacturing processes are characterized by growing product diversities and complexities alike. As a result, the demand for fast and flexible process automation is ever increasing. However, higher individuality and smaller batch sizes hamper the use of standard robotic automation systems, which are well suited for repetitive tasks but struggle in unknown environments. Modern manipulators, such as collaborative industrial robots, provide extended capabilities for flexible automation. In this paper, an adaptive ROS-based end-to-end toolchain for vision-guided robotic process automation is presented. The processing steps comprise several consecutive tasks: CAD-based object registration, pose generation for sensor-guided applications, trajectory generation for the robotic manipulator, the execution of sensor-guided robotic processes, test and the evaluation of the results. The main benefits of the ROS framework are readily applicable tools for digital twin functionalities and established interfaces for various manipulator systems. To prove the validity of this approach, an application example for surface reconstruction was implemented with a 3D vision system. In this example, feature extraction is the basis for viewpoint generation, which, in turn, defines robotic trajectories to perform the inspection task. Two different feature point extraction algorithms using neural networks and Voronoi covariance measures, respectively, are implemented and evaluated to demonstrate the versatility of the proposed toolchain. The results showed that complex geometries can be automatically reconstructed, and they outperformed a standard method used as a reference. Hence, extensions to other vision-controlled applications seem to be feasible.
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