In this work we present a method to detect and estimate the three-dimensional pose of planar and textureless objects placed randomly on a conveyor belt or inside a bin. The method is based on analysis of single 2D images acquired by a standard camera. The algorithm exploits a template matching method to recognize the objects. A set of pose hypotheses are then refined and, based on a gradient orientation scoring, the best object to be manipulated is selected. The method is flexible and can be used with different objects without changing parameters since it exploits a CAD model as input for template generation. We validated the method using synthetic images. An experimental setup has been also designed using a fixed standard camera to localize planar metal objects in various scenarios.

Model based Detection and 3D Localization of Planar Objects for Industrial Setups

SAKCAK, BASAK;BASCETTA, LUCA;FERRETTI, GIANNI
2016-01-01

Abstract

In this work we present a method to detect and estimate the three-dimensional pose of planar and textureless objects placed randomly on a conveyor belt or inside a bin. The method is based on analysis of single 2D images acquired by a standard camera. The algorithm exploits a template matching method to recognize the objects. A set of pose hypotheses are then refined and, based on a gradient orientation scoring, the best object to be manipulated is selected. The method is flexible and can be used with different objects without changing parameters since it exploits a CAD model as input for template generation. We validated the method using synthetic images. An experimental setup has been also designed using a fixed standard camera to localize planar metal objects in various scenarios.
2016
Proceedings of the 13th International Conference on Informatics in Control, Automation and Robotics - (Volume 2)
978-989-758-198-4
Model based Object Recognition, Pose Estimation, Chamfer Matching
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11311/999203
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