Tuomas Seppälä, Janne Saukkoriipi, Taneli Lohi, Samuli Soutukorva, T. Heikkilä, J. Koskinen
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引用次数: 1
Abstract
This paper presents a feature-based object detection and pose estimation method. In this approach, a user selects geometric features from a CAD model of an object. The selected features are then matched against measured features from the 3D cameras. Software modules were developed for the method and were tested in a robot cell. Based on the results, our approach provides a fast way to configure and program the pose estimation system for new objects. Target applications of the approach are in small series and agile, even one-of-a-kind manufacturing.