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Model-based stereo-tracking of non-polyhedral objects for automatic disassembly experiments

机译:基于模型的非多面体对象的立体跟踪,用于自动拆卸实验

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Automatic disassembly tasks in the engine compartment of a used car constitute a challenge for control of a disassembly robot by machine vision. Experience in exploratory experiments under such conditions forced us to abandon data-driven aggregation of edge elements into straight-line data segments in favor of a direct association of individual edge elements with model segments obtained from scene domain models of tools and workpieces. In addition, we had to switch from a conventional single camera hand-eye configuration to a movable stereoconfiguration mounted on a separate 'observer' robot. A eneralisation of our model-based tracking includes the parameters, which characterize the relative pose of one camera with respect to the other one of the stereo-camera set-up, into the set of parameters to be re-estimated for each new stereo image pair. This results in a continuous re-calibration during a relative movement between stereo-camera set-up and tracked objects. Our approach had to be extended further in order to cope with non-polyhedral objects. The methodological improvements of machine vision in the course of this research are treated in detail. We discuss, moreover, the systematic trading-off of computational resources for increased robustness which is vital for visual control of automatic disassembly robots. [References: 32]
机译:二手车的发动机舱中的自动拆卸任务对于通过机器视觉控制拆卸机器人是一个挑战。在这种条件下进行探索性实验的经验迫使我们放弃将数据驱动的边缘元素聚合为直线数据段,而将各个边缘元素与从工具和工件的场景域模型获得的模型段直接关联。此外,我们必须从传统的单摄像机手眼配置切换到安装在单独的“观察者”机器人上的可移动立体声配置。我们基于模型的跟踪的概化包括将参数(这些参数表征一台摄像机相对于另一台立体摄像机设置的相对姿势)的参数集,以针对每个新的立体图像重新估算这些参数对。这导致在立体相机设置和被跟踪对象之间的相对运动过程中进行连续的重新校准。我们的方法必须进一步扩展,以应对非多面体物体。在研究过程中,对机器视觉的方法学改进进行了详细论述。此外,我们讨论了为提高鲁棒性而对计算资源进行的系统权衡,这对于自动拆卸机器人的视觉控制至关重要。 [参考:32]

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