Model-Based Stereo-Tracking of Non-Polyhedral Objects for Automatic Disassembly Experiments

作者:Martin Tonko, Hans-Hellmut Nagel

摘要

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 stereo-configuration mounted on a separate ‘observer’ robot. A generalisation 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.

论文关键词:machine vision, visual servoing, image sequence evaluation, stereo-vision, model-based tracking, non-polyhedral objects, Kalman-filtering, disassembly

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论文官网地址:https://doi.org/10.1023/A:1008133614366