Flooding is the world's most costly type of natural disaster in terms of both economic losses and human causalities. A first and essential procedure towards flood monitoring is based on identifying the area most vulnerable to flooding, which gives authorities relevant regions to focus. In this work, we propose several methods to perform flooding identification in high-resolution remote sensing images using deep learning. Specifically, some proposed techniques are based upon unique networks, such as dilated and deconvolutional ones, while other was conceived to exploit diversity of distinct networks in order to extract the maximum performance of each classifier. Evaluation of the proposed algorithms were conducted in a high-resolution remote sensing dataset. Results show that the proposed algorithms outperformed several state-of-the-art baselines, providing improvements ranging from 1 to 4% in terms of the Jaccard Index.
@article{arxiv.1711.03564,
title = {Exploiting ConvNet Diversity for Flooding Identification},
author = {Keiller Nogueira and Samuel G. Fadel and Ícaro C. Dourado and Rafael de O. Werneck and Javier A. V. Muñoz and Otávio A. B. Penatti and Rodrigo T. Calumby and Lin Tzy Li and Jefersson A. dos Santos and Ricardo da S. Torres},
journal= {arXiv preprint arXiv:1711.03564},
year = {2018}
}
Comments
Work winner of the Flood-Detection in Satellite Images, a subtask of 2017 Multimedia Satellite Task (MediaEval Benchmark) Accepted for publication in the Geoscience and Remote Sensing Letters (GRSL)