학술논문

Flood Extent Mapping with Unmanned Aerial Vehicles Data using Deep Convolutional Neural Network
Document Type
Conference
Source
2023 International Conference on Sustainable Computing and Smart Systems (ICSCSS) Sustainable Computing and Smart Systems (ICSCSS), 2023 International Conference on. :466-471 Jun, 2023
Subject
Communication, Networking and Broadcast Technologies
Components, Circuits, Devices and Systems
Computing and Processing
Robotics and Control Systems
Signal Processing and Analysis
Deep learning
Computational modeling
Urban areas
Vegetation mapping
Autonomous aerial vehicles
Data augmentation
Feature extraction
Flooding
CNN(Convolutional Neural Network)
UAV(Unmanned Aerial Vehicle)
RG(Region Growing)
DEM(Digital Elevation Model)
Language
Abstract
Flooding is a common occurrence that results in human fatalities, severe environmental harm, and major infrastructural damage. A method for mapping areas with apparent and subterranean vegetation flooding that integrates CNN and region growing (RG). To determine the number of floods beneath plants that are hidden from photojournalism using the digital elevation model(dem), the Region Growing technique is applied, whereas to extract areas which are flooded a Convolutional classifier is used. The CNN-based classifier is trained using a data augmentation strategy to enhance the classification outcomes. This paper develops an automatic flood detection system for UAV aerial photographs using deep learning algorithms. Unmanned aerial vehicles (UAVs) have the potential to offer high-resolution data with the ability to quickly and accurately detect inundated areas under intricate urban environments. This research makes use of unmanned aerial vehicles to develop an automated imaging system that can identify waterlogged areas from aerial pictures. The suggested method combines CNN and region growth methodologies for mapping regions with visible and subsurface vegetation flooding, resulting in a more complete flood detection system.UAVs offer high-resolution data collecting as well as the rapid and precise detection of flooded regions in complicated urban contexts. The use of data augmentation improves the classification results of the CNN-based classifier.