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Bolt loosening angle detection based on binocular vision

Shixu Wang, Jiang Wu, Zheng Zhao, Yixin Du, Shuiting Ding, Farong Du

2022Measurement Science and Technology10 citationsDOIOpen Access PDF

Abstract

Abstract Bolt looseness detection is critical in preventing bolt connection failure. Compared to traditional sensor-based bolt looseness detection, image-based methods are low-cost and contactless and have thus become the highlight of research. However, current monocular vision-based detection methods are prone to error scaused by the camera perspective . In this paper, we present a novel bolt loosening angle detection method based on binocular vision. Key points on the bolt are detected and matched by SuperPoint Gauss network for 3D coordinates reconstruction and motion tracking. The bolt loosening angle is solved by fitting the rotation equation using random sample consensus. Experiments verify the proposed method performs well under different perspectives of camera and illumination conditions with an average error of 1.5°. Comparative test shows our method is superior to the monocular vision-based method in terms of accuracy when there is a large perspective angle. The proposed method is mark-free and robust to various working conditions, which makes it of great value for engineering application.

Topics & Concepts

Artificial intelligenceComputer visionComputer sciencePerspective (graphical)MonocularCorner detectionBinocular visionMonocular visionRotation (mathematics)Image (mathematics)Image and Object Detection TechniquesAdvanced Measurement and Detection MethodsOptical measurement and interference techniques
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