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Robotic vision: 3D object recognition and pose determination

Andrew K. C. Wong, Rong Li, Xiaohong Liang

Year
2002
Citations
18

Abstract

A challenge in 3D computer vision is to automatically acquire 3D models of objects through a CCD camera and to use the acquired models to recognize objects and estimate their poses. The PAMI System works on images acquired from a single CCD camera. It first detects salient features from an image and then groups them according to their types as well as their spatial, geometrical and topological relations. The feature grouping types include: a) four corner points and triplets of lines forming corners; b) curve segments fitted into ellipses. The use of matching hypotheses generated based on feature groupings is usually more robust and effective than the combinatorial matching of point features.

Keywords

Artificial intelligenceComputer visionComputer scienceFeature (linguistics)EllipseSalientMatching (statistics)Cognitive neuroscience of visual object recognitionPoint (geometry)Pattern recognition (psychology)

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