PERFORMANCE EVALUATION OF 3-D CONVOLUTIONAL NEURAL NETWORK FOR MULTITEMPORAL FLOOD CLASSIFICATION FRAMEWORK WITH SYNTHETIC APERTURE RADAR IMAGE DATA

Performance Evaluation of 3-D Convolutional Neural Network for Multitemporal Flood Classification Framework With Synthetic Aperture Radar Image Data

Performance Evaluation of 3-D Convolutional Neural Network for Multitemporal Flood Classification Framework With Synthetic Aperture Radar Image Data

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Urban flooding significantly impacts populations and often coincides with heavy rainfall, making optical satellite observation challenging due to cloud cover.This study proposes a novel approach using synthetic aperture radar (SAR) sensors, which can penetrate clouds, to classify flooded urban areas.The framework Keryboard employs a 3-D convolutional neural network (3-D CNN) to process multitemporal SAR data from Sentinel-1 (S-1).The dataset included 24 S-1 scenes with Dual VV and VH polarization from March 2019 to February 2020, divided into two co-event images, 18 preevent images, and four postevent images.The 3-D CNN achieved an average overall accuracy of 70.

3% and a Dishes peak accuracy of 71.8%.These results demonstrate the 3-D CNN's potential to accurately estimate flood extent and identify flood-prone areas, supporting early detection and flood prevention in other cities.

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