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Main Authors: Polushko, Vladyslav, Jenal, Alexander, Bongartz, Jens, Weber, Immanuel, Hatic, Damjan, Rösch, Ronald, März, Thomas, Rauhut, Markus, Weinmann, Andreas
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2407.05007
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author Polushko, Vladyslav
Jenal, Alexander
Bongartz, Jens
Weber, Immanuel
Hatic, Damjan
Rösch, Ronald
März, Thomas
Rauhut, Markus
Weinmann, Andreas
author_facet Polushko, Vladyslav
Jenal, Alexander
Bongartz, Jens
Weber, Immanuel
Hatic, Damjan
Rösch, Ronald
März, Thomas
Rauhut, Markus
Weinmann, Andreas
contents Floods are an increasingly common global threat, causing emergencies and severe damage to infrastructure. During crises, organisations such as the World Food Programme use remotely sensed imagery, typically obtained through drones, for rapid situational analysis to plan life-saving actions. Computer Vision tools are needed to support task force experts on-site in the evaluation of the imagery to improve their efficiency and to allocate resources strategically. We introduce the BlessemFlood21 dataset to stimulate research on efficient flood detection tools. The imagery was acquired during the 2021 Erftstadt-Blessem flooding event and consists of high-resolution and georeferenced RGB-NIR images. In the resulting RGB dataset, the images are supplemented with detailed water masks, obtained via a semi-supervised human-in-the-loop technique, where in particular the NIR information is leveraged to classify pixels as either water or non-water. We evaluate our dataset by training and testing established Deep Learning models for semantic segmentation. With BlessemFlood21 we provide labeled high-resolution RGB data and a baseline for further development of algorithmic solutions tailored to flood detection in RGB imagery.
format Preprint
id arxiv_https___arxiv_org_abs_2407_05007
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle BlessemFlood21: Advancing Flood Analysis with a High-Resolution Georeferenced Dataset for Humanitarian Aid Support
Polushko, Vladyslav
Jenal, Alexander
Bongartz, Jens
Weber, Immanuel
Hatic, Damjan
Rösch, Ronald
März, Thomas
Rauhut, Markus
Weinmann, Andreas
Computer Vision and Pattern Recognition
Image and Video Processing
Floods are an increasingly common global threat, causing emergencies and severe damage to infrastructure. During crises, organisations such as the World Food Programme use remotely sensed imagery, typically obtained through drones, for rapid situational analysis to plan life-saving actions. Computer Vision tools are needed to support task force experts on-site in the evaluation of the imagery to improve their efficiency and to allocate resources strategically. We introduce the BlessemFlood21 dataset to stimulate research on efficient flood detection tools. The imagery was acquired during the 2021 Erftstadt-Blessem flooding event and consists of high-resolution and georeferenced RGB-NIR images. In the resulting RGB dataset, the images are supplemented with detailed water masks, obtained via a semi-supervised human-in-the-loop technique, where in particular the NIR information is leveraged to classify pixels as either water or non-water. We evaluate our dataset by training and testing established Deep Learning models for semantic segmentation. With BlessemFlood21 we provide labeled high-resolution RGB data and a baseline for further development of algorithmic solutions tailored to flood detection in RGB imagery.
title BlessemFlood21: Advancing Flood Analysis with a High-Resolution Georeferenced Dataset for Humanitarian Aid Support
topic Computer Vision and Pattern Recognition
Image and Video Processing
url https://arxiv.org/abs/2407.05007