posted on 2017-08-08, 10:39authored byHarshana Dantanarayana, Jonathan Huntley
Object recognition and pose estimation is a fundamental problem in automated quality control and assembly in the manufacturing industry. Real world objects present in a manufacturing engineering setting tend to contain more smooth surfaces and edges than unique key points, making state-of-the-art algorithms that are mainly based on key-point
detection, and key-point description with RANSAC and Hough based correspondence aggregators, unsuitable. An alternative approach using maximum likelihood has recently been proposed in which surface patches are regarded as the features of interest1. In the current study, the results of extending this algorithm to include curved features are presented. The proposed algorithm that combines both surfaces and curves improved the pose estimation by a factor up to 3×, compared to surfaces alone, and reduced the overall misalignment error down to 0.61 mm.
Funding
The research was funded by the Engineering and Physical Sciences Research Council under the Light Controlled Factory project EP/K018124/1.
History
School
Mechanical, Electrical and Manufacturing Engineering
Published in
Automated Visual Inspection and Machine Vision II
Volume
103340D
Citation
DANTANARAYANA, H.G. and HUNTLEY, J.M., 2017. Improved maximum likelihood estimation of object pose from 3D point clouds using curves as features. Proc. SPIE 10334, Automated Visual Inspection and Machine Vision II, 103340D (June 26, 2017); doi:10.1117/12.2270197.
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