Paper
10 February 2023 Flooded cropland mapping based on GF-3 and Mapbox imagery using semantic segmentation: a case study of Typhoon Siamba in western Guangdong in July 2022
Mengjun Ku, Hao Jiang, Dan Li, Chongyang Wang
Author Affiliations +
Proceedings Volume 12552, International Conference on Geographic Information and Remote Sensing Technology (GIRST 2022); 1255215 (2023) https://doi.org/10.1117/12.2667422
Event: International Conference on Geographic Information and Remote Sensing Technology (GIRST 2022), 2022, Kunming, China
Abstract
Typhoon Siamba made landfall in western Guangdong on July 2, 2022, causing great losses to crops in western Guangdong. Radar remote sensing can penetrate through clouds and fog and is suitable for identifying flooded areas before or after typhoons and in rainy weather. However, radar flooded waterbody mapping faces two major problems: distinguishing between flooded areas and natural waterbody, and the other is noise interference from confusing ground objects. Aiming at these problems, the study proposes a method of high-precision cropland information combined with waterbody identification. Based on GF-3 and Mapbox data, this paper first uses watershed semantic segmentation to extract initial waterbody, then uses SegFormer deep learning technology to identify cropland, and finally realizes flooded cropland mapping based on cropland information. This study concluded that the affected cropland in Zhanjiang and Maoming City, Guangdong Province, China is 75.437 km2 and 31.175 km2 respectively. The cropland extraction accuracy and Intersection over Union (IoU) are 96.65% and 92.64% respectively. The study shows that flood monitoring combined with cropland identification information can effectively avoid noise interference and accurately extract the flood range, and achieve high-precision flooded cropland mapping.
© (2023) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Mengjun Ku, Hao Jiang, Dan Li, and Chongyang Wang "Flooded cropland mapping based on GF-3 and Mapbox imagery using semantic segmentation: a case study of Typhoon Siamba in western Guangdong in July 2022", Proc. SPIE 12552, International Conference on Geographic Information and Remote Sensing Technology (GIRST 2022), 1255215 (10 February 2023); https://doi.org/10.1117/12.2667422
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KEYWORDS
Image segmentation

Semantics

Floods

Synthetic aperture radar

Transformers

Education and training

Remote sensing

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