Abstract
Drones are used in various fields, including land survey, transportation, forestry/agriculture, marine, environment, disaster prevention, water resources, cultural assets, and construction, as their industrial importance and market size have increased. In this study, image data for deep learning was collected using a mavic3 drone capturing images at a shooting altitude was 20 m with ×7 magnification. Swin Transformer and UperNet were employed as the backbone and architecture of the deep learning model. About 800 sheets of labeled data were augmented to increase the amount of data. The learning process encompassed three rounds. The Cross-Entropy loss function was used in the first and second learning; the Tversky loss function was used in the third learning. In the future, when the crack detection model is advanced through convergence with the Internet of Things (IoT) through additional research, it will be possible to detect patching or potholes. In addition, it is expected that real-time detection tasks of drones can quickly secure the detection of pavement maintenance sections.
Translated title of the contribution | Development of Deep Learning Model for Detecting Road Cracks Based on Drone Image Data |
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Original language | Korean |
Pages (from-to) | 125-135 |
Number of pages | 11 |
Journal | 토지주택연구 |
Volume | 14 |
Issue number | 2 |
DOIs | |
State | Published - Feb 2023 |