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CNN 모델을 활용한 콘크리트 균열 검출 및 시각화 방법
Concrete Crack Detection and Visualization Method Using CNN Model
최주희 ( Choi Ju-hee ) , 김영관 ( Kim Young-kwan ) , 이한승 ( Lee Han-seung )
UCI I410-ECN-0102-2023-500-000733550
이 자료는 4페이지 이하의 자료입니다.

Concrete structures occupy the largest proportion of modern infrastructure, and concrete structures often have cracking problems. Existing concrete crack diagnosis methods have limitations in crack evaluation because they rely on expert visual inspection. Therefore, in this study, we design a deep learning model that detects, visualizes, and outputs cracks on the surface of RC structures based on image data by using a CNN (Convolution Neural Networks) model that can process two- and three-dimensional data such as video and image data. do. An experimental study was conducted on an algorithm to automatically detect concrete cracks and visualize them using a CNN model. For the three deep learning models used for algorithm learning in this study, the concrete crack prediction accuracy satisfies 90%, and in particular, the ‘InceptionV3’-based CNN model showed the highest accuracy. In the case of the crack detection visualization model, it showed high crack detection prediction accuracy of more than 95% on average for data with crack width of 0.2 mm or more.

[자료제공 : 네이버학술정보]
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