Abstract
To effectively manage the terrestrial firefighting fleet in a forest fire scenario, namely, to optimize its displacement in the field, it is crucial to have a well-structured and accurate mapping of rural roads. The landscape’s complexity, mainly due to severe shadows cast by the wild vegetation and trees, makes it challenging to extract rural roads based on processing aerial or satellite images, leading to heterogeneous results. This article proposes a method to improve the automatic detection of rural roads and the extraction of their centerlines from aerial images. This method has two main stages: (i) the use of a deep learning model (DeepLabV3+) for predicting rural road segments; (ii) an optimization strategy to improve the connections between predicted rural road segments, followed by a morphological approach to extract the rural road centerlines using thinning algorithms, such as those proposed by Zhang–Suen and Guo–Hall. After completing these two stages, the proposed method automatically detected and extracted rural road centerlines from complex rural environments. This is useful for developing real-time mapping applications.
Subject
General Earth and Planetary Sciences
Reference37 articles.
1. (2020). National Forestry Accounting Plan—Portugal 2021–2025, Agência Portuguesa do Ambiente.
2. Jesus, T.C., Costa, D.G., Portugal, P., and Vasques, F. (2022). A Survey on Monitoring Quality Assessment for Wireless Visual Sensor Networks. Future Internet, 14.
3. Pereira-Pires, J.E., Aubard, V., Ribeiro, R.A., Fonseca, J.M., Silva, J.M.N., and Mora, A. (2020). Semi-Automatic Methodology for Fire Break Maintenance Operations Detection with Sentinel-2 Imagery and Artificial Neural Network. Remote Sens., 12.
4. (2022, June 15). Bee2FireDetection. Early Fire Detection and Decision Support System. Available online: https://www.ceb-solutions.com/products/bee2firedetection/.
5. Zhu, Y., Xie, L., and Yuan, T. (2012, January 6–8). Monitoring system for forest fire based on wireless sensor network. Proceedings of the 10th World Congress on Intelligent Control and Automation, Beijing, China.
Cited by
3 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献