Efficient Dataset Collection for Concrete Crack Detection With Spatial-Adaptive Data Augmentation

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초록

In this paper, we propose a data augmentation technique based on Convolutional Neural Networks (CNN or ConvNet) training to efficiently obtain a dataset of images containing concrete cracks. Concrete cracks usually do not have a standardized shape and have complex patterns, making it difficult to obtain images of them, and there is a risk of exposure to dangerous situations when securing data. Therefore, in this paper, we efficiently address the difficulty of dataset collection by using a data augmentation technique based on learning the direction and thickness of cracks, which is cost-effective and time-efficient. Moreover, to improve efficiency, we introduce a method of adaptively handling crack data by constructing a quadtree based on the presence of cracks. To confirm the extent of the improvement in accuracy, we conducted experiments applying the crack detection algorithm to various scenes, and the accuracy was improved in all scenes when measured by IoU (Intersection over union) accuracy. When the algorithm was performed without augmenting the crack data, the false detection rate was about 25%. However, when we augmented the data using our method, the false detection rate significantly decreased to 3%.

키워드

Spatial-adaptive augmentationconcrete crackdata augmentationconvolutional neural networkscrack directioncrack thicknessANISOTROPY
제목
Efficient Dataset Collection for Concrete Crack Detection With Spatial-Adaptive Data Augmentation
저자
Kim, Jong-HyunLee, Jung
DOI
10.1109/ACCESS.2023.3328243
발행일
2023
유형
Article
저널명
IEEE Access
11
페이지
121902 ~ 121913