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Poster Session II

Deep Learning based detection and segmentation for masonry structural analysis: crack length measurement

초록

영어

Masonry structures account for a large proportion of the building stock worldwide. Presently, the structural conditions of such structures are mostly inspected manually, and which is expensive, laborious and subjective processes. As deep learning technique for computer vision advances, there is an opportunity to automate the visual inspection process using digital images. Several studies are in progress to automatically detect cracks in masonry structures using Deep Learning. However, it is important not only detecting a crack, but also measuring a length of the crack. This is because it is necessary to consider various factors required in the actual environment, such as calculating the cost of reinforcement work. In this paper, we propose the method that detects masonry cracks and measures the length of cracks with digital images. The aim of this study is to implement Deep Learning model for crack detection on masonry structure and to apply the method of crack length measurement additionally.

목차

Abstract
I. INTRODUCTION
II. MATERIALS AND METHODS
A. Proposed overall framework
B. Proposed model and methods
C. Dataset for training and testing the model
III. EXPERIMENT AND RESULT
A. Metrics for evaluation of the model
B. Experiment environments
C. Results of the model
D. Results of the proposed framework
IV. CONCLUSION
REFERENCES

저자정보

  • Hanil Na Department of Computer and Engineering Sejong university
  • Seonbin Choi Department of Computer and Engineering Sejong university
  • Yong Nam Kim Mirae Structural Engineers Seoul, Korea
  • Ki-Hak Lee Department of Architectural Engineering Sejong university
  • Hyeonjoon Moon Department of Computer and Engineering Sejong university

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