Design of bridge widening algorithm based on multi-angle input image analysis

  • Junli LiuEmail author
  • Xuezhi Yu


With the development of our country’s economic construction and road and bridge construction, the bridge widening project will be presented to us more and more. How to do the old bridge widening and rebuilding work well is a topic for the bridge builders. With the development of image processing technology, this paper introduces the image analysis technology into the bridge widening application, and realizes the real time analysis of the bridge by multi-angle input image analysis technology. Then, the specific location of bridge changes can be analyzed by multi-angle input image analysis results, and the specific bridge widening processing can be made for this position. In addition, the multi-angle input image analysis method can be used to model and analyze the bridge effectively, and it can be used to analyze the real situation of the bridge effectively. In addition, it can meet the specific needs of the application of the bridge to broaden the construction. Finally, through experiments, we can see that the proposed algorithm of bridge widening based on multi-angle input image analysis can effectively improve the efficiency of bridge widening, and can reduce the cost of bridge widening.


Bridge widening algorithm Multi-angle input image analysis 



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© Springer Science+Business Media, LLC, part of Springer Nature 2019

Authors and Affiliations

  1. 1.GuangXi Key Laboratory of Geomechanics and Geotechnical EngineeringGuilin University of TechnologGuilinChina
  2. 2.School of Civil Engineering and ArchitectureGuilin University of TechnologyGuilinChina

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