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A Graphical-oriented Approach to Improve the Programmability of a Robotic System

机译:以图形为导向的方法,提高机器人系统的可编程性

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Plenary Talk Industrial manufacturers are constantly looking to increase the degree of automation of their plants by searching for valid alternatives and supports for human workers. One of the most important aspects is the interaction between robot and its environment and implicit the flexibility/modularity of robot programming. Although the new type of robots (i.e. collaborative robots) are designed to physically interact with humans while still providing a safe environment, the robot programing still requires experts and a-priori knowledge in order to complete the programming work. Due to the increasing need for automated and flexible manufacturing in the last few years, tremendous research is carried out to simplify the robot programming and to reduce the expertise required in robot programming. Learning from demonstration is one popular flexible robot programming approach in which the robot end effector is dragged manually by an operator to desired waypoints in order to teach the tasks. Although the process of learning by demonstration is efficient, it was designed particularly for collaborative robots. However, more than 80% of the manufacturing industry makes use of the industrial robots and therefore a solution available for all type of robots is needed. A key to improve the programmability of the control code is to investigate the possibility of robot programming by using drawings or images. In fact, using a graphic oriented programming method can save programming time and allow to perform highly elaborated trajectories. The main idea introduced here is to compute a goal-path for the robot using visual features extracted from an image. Using object features from an image is an extremely powerful tool to improve the degree of automation of a robotic system and to enable a ‘free’ motion planning phase.
机译:全体谈论工业制造商正在不断寻求通过寻找有效的替代品和人类工人支持来提高其植物的自动化程度。其中一个最重要的方面是机器人及其环境之间的相互作用,隐含机器人编程的灵活性/模块化。虽然新型的机器人(即,协作机器人)旨在与人类进行物理交互,同时仍然提供安全的环境,但机器人编程仍然需要专家和先验知识,以便完成编程工作。由于在过去几年中越来越需要自动化和灵活的制造,进行了巨大的研究,以简化机器人编程,并减少机器人编程所需的专业知识。从演示学习是一种流行的灵活机器人编程方法,其中机器人末端执行器被操作者手动拖动到所需的航点以教导任务。虽然通过演示学习的过程是有效的,但它是专为协作机器人而设计的。然而,超过80%的制造业利用工业机器人,因此需要为所有类型机器人提供的解决方案。提高控制代码可编程性的关键是通过使用附图或图像来研究机器人编程的可能性。实际上,使用图形面向的编程方法可以节省编程时间并允许执行高度阐述的轨迹。这里介绍的主要思想是使用从图像中提取的可视特征来计算机器人的目标路径。使用来自图像的对象特征是一种极其强大的工具,可以提高机器人系统的自动化程度,并启用“免费”运动规划阶段。

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