Abstract

Floods are one of the most fatal and devastating disasters, instigating an immense loss of human lives and damage to property, infrastructure, and agricultural lands. To cater to this, there is a need to develop and implement real-time flood management systems that could instantly detect flooded regions to initiate relief activities as early as possible. Current imaging systems, relying on satellites, have demonstrated low accuracy and delayed response, making them unreliable and impractical to be used in emergency responses to natural disasters such as flooding. This research employs Unmanned Aerial Vehicles (UAVs) to develop an automated imaging system that can identify inundated areas from aerial images. The Haar cascade classifier was explored in the case study to detect landmarks such as roads and buildings from the aerial images captured by UAVs and identify flooded areas. The extracted landmarks are added to the training dataset that is used to train a deep learning algorithm. Experimental results show that buildings and roads can be detected from the images with 91% and 94% accuracy, respectively. The overall accuracy of 91% is recorded in classifying flooded and non-flooded regions from the input case study images. The system has shown promising results on test images belonging to both pre- and post-flood classes. The flood relief and rescue workers can quickly locate flooded regions and rescue stranded people using this system. Such real-time flood inundation systems will help transform the disaster management systems in line with modern smart cities initiatives.

Highlights

  • IntroductionIntroduction and BackgroundOn average, 60,000 lives are lost to natural disasters every year, accounting for 0.1% of the global deaths [1]

  • Introduction and BackgroundOn average, 60,000 lives are lost to natural disasters every year, accounting for 0.1% of the global deaths [1]

  • This study presented a hybrid model for landmarks-based feature selection and Convolution Neural Network (CNN)-based flood detection

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Summary

Introduction

Introduction and BackgroundOn average, 60,000 lives are lost to natural disasters every year, accounting for 0.1% of the global deaths [1]. Due to untimely detection of floods and lack of accurate and fast technologies that could automatically detect the occurrence of flooding in an area, lives are lost as aids and recovery services cannot be provided on time This signifies the need to use advanced digital technologies to detect flood-affected areas quickly and accurately so that rescue activities can be initiated as soon as possible [2,12,13,14,15,16,17,18]. Such timely flood detection is crucial to efficiently plan relief missions and rescue the stranded people, minimizing its economic impacts and casualties [19,20,21]

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