Cross-Geography Generalization of Machine Learning Methods for Classification of Flooded Regions in Aerial Images
Sushant Lenka, Pratyush Kerhalkar, Pranav Shetty, Harsh Gupta, Bhavam, Vidyarthi, Ujjwal Verma

TL;DR
This paper introduces two methods for detecting flooded regions in UAV aerial images and evaluates their ability to generalize across different geographical areas, showing promising results for rapid disaster assessment.
Contribution
It presents texture-based unsupervised segmentation and neural network classification approaches that perform well across different regions, addressing the challenge of cross-geography generalization.
Findings
F1-score of 0.89 with the segmentation approach
Models generalize well across different geographical regions
Proposed methods require minimal user intervention
Abstract
Identification of regions affected by floods is a crucial piece of information required for better planning and management of post-disaster relief and rescue efforts. Traditionally, remote sensing images are analysed to identify the extent of damage caused by flooding. The data acquired from sensors onboard earth observation satellites are analyzed to detect the flooded regions, which can be affected by low spatial and temporal resolution. However, in recent years, the images acquired from Unmanned Aerial Vehicles (UAVs) have also been utilized to assess post-disaster damage. Indeed, a UAV based platform can be rapidly deployed with a customized flight plan and minimum dependence on the ground infrastructure. This work proposes two approaches for identifying flooded regions in UAV aerial images. The first approach utilizes texture-based unsupervised segmentation to detect flooded areas,…
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Taxonomy
TopicsFlood Risk Assessment and Management · Anomaly Detection Techniques and Applications · Multimodal Machine Learning Applications
