Direct local building inundation depth determination in 3-D point clouds generated from user-generated flood images
In recent years, the number of people affected by flooding caused by extreme weather events has increased considerably. In order to provide support in disaster recovery or to develop mitigation plans, accurate flood information is necessary. Particularly pluvial urban floods, characterized by hi...
Main Authors: | , , |
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Format: | Article |
Language: | English |
Published: |
Copernicus Publications
2017-07-01
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Series: | Natural Hazards and Earth System Sciences |
Online Access: | https://www.nat-hazards-earth-syst-sci.net/17/1191/2017/nhess-17-1191-2017.pdf |
Summary: | In recent years, the number of people affected by
flooding caused by extreme weather events has increased considerably. In
order to provide support in disaster recovery or to develop mitigation
plans, accurate flood information is necessary. Particularly pluvial urban
floods, characterized by high temporal and spatial variations, are not well
documented. This study proposes a new, low-cost approach to determining
local flood elevation and inundation depth of buildings based on
user-generated flood images. It first applies close-range digital
photogrammetry to generate a geo-referenced 3-D point cloud. Second, based on
estimated camera orientation parameters, the flood level captured in a
single flood image is mapped to the previously derived point cloud. The
local flood elevation and the building inundation depth can then be derived
automatically from the point cloud. The proposed method is carried out once
for each of 66 different flood images showing the same building façade.
An overall accuracy of 0.05 m with an uncertainty of ±0.13 m for the
derived flood elevation within the area of interest as well as an accuracy of
0.13 m ± 0.10 m for the determined building inundation depth is
achieved. Our results demonstrate that the proposed method can provide
reliable flood information on a local scale using user-generated flood
images as input. The approach can thus allow inundation depth maps to be
derived even in complex urban environments with relatively high accuracies. |
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ISSN: | 1561-8633 1684-9981 |