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Scientific Article details

Title Semi-supervised identification and mapping of surface water extent using street-level monitoring videos
ID_Doc 41505
Authors Wang, RQ; Ding, YM
Title Semi-supervised identification and mapping of surface water extent using street-level monitoring videos
Year 2023
Published Big Earth Data, 7, 4
DOI 10.1080/20964471.2022.2123352
Abstract Urban flooding is becoming a common and devastating hazard, which causes life loss and economic damage. Monitoring and understanding urban flooding in a highly localized scale is a challenging task due to the complicated urban landscape, intricate hydraulic process, and the lack of high-quality and resolution data. The emerging smart city technology such as monitoring cameras provides an unprecedented opportunity to address the data issue. However, estimating water ponding extents on land surfaces based on monitoring footage is unreliable using the traditional segmentation technique because the boundary of the water ponding, under the influence of varying weather, background, and illumination, is usually too fuzzy to identify, and the oblique angle and image distortion in the video monitoring data prevents georeferencing and object-based measurements. This paper presents a novel semi-supervised segmentation scheme for surface water extent recognition from the footage of an oblique monitoring camera. The semi-supervised segmentation algorithm was found suitable to determine the water boundary and the monoplotting method was successfully applied to georeference the pixels of the monitoring video for the virtual quantification of the local drainage process. The correlation and mechanism-based analysis demonstrate the value of the proposed method in advancing the understanding of local drainage hydraulics. The workflow and created methods in this study have a great potential to study other street-level and earth surface processes.
Author Keywords Segmentation; deep learning; monoplotting; smart city; monocular visual data
Index Keywords Index Keywords
Document Type Other
Open Access Open Access
Source Emerging Sources Citation Index (ESCI)
EID WOS:000884717300001
WoS Category Computer Science, Information Systems; Geosciences, Multidisciplinary; Remote Sensing
Research Area Computer Science; Geology; Remote Sensing
PDF https://doi.org/10.1080/20964471.2022.2123352
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