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(사)한국터널지하공간학회

Adversarial learning for underground structure concrete crack detection based on semisupervised semantic segmentation

(사)한국터널지하공간학회 / (사)한국터널지하공간학회, (P)2233-8292; (E)2287-4747
2020, v.22 no.5, pp.515-528
https://doi.org/10.9711/KTAJ.2020.22.5.515




Abstract

Underground concrete structures are usually designed to be used for decades, but in recent years, many of them are nearing their original life expectancy. As a result, it is necessary to promptly inspect and repair the structure, since it can cause lost of fundamental functions and bring unexpected problems. Therefore, personnel-based inspections and repairs have been underway for maintenance of underground structures, but nowadays, objective inspection technologies have been actively developed through the fusion of deep learning and image process. In particular, various researches have been conducted on developing a concrete crack detection algorithm based on supervised learning. Most of these studies requires a large amount of image data, especially, label images. In order to secure those images, it takes a lot of time and labor in reality. To resolve this problem, we introduce a method to increase the accuracy of crack area detection, improved by 0.25% on average by applying adversarial learning in this paper. The adversarial learning consists of a segmentation neural network and a discriminator neural network, and it is an algorithm that improves recognition performance by generating a virtual label image in a competitive

keywords
적대적 학습, 균열 탐지, 의미론적 분할, 상태 점검, 영상처리, Adversarial learning, Crack detection, Semantic segmentation, Health monitoring, Image processing

(사)한국터널지하공간학회