Authors
Cinzia Albertini, Andrea Gioia, Vito Iacobellis, George P Petropoulos, Salvatore Manfreda
Publication date
2024/8/1
Journal
Remote Sensing Applications: Society and Environment
Volume
35
Pages
101239
Publisher
Elsevier
Description
Flood extent delineation techniques have benefited from the increasing availability of remote sensing imagery, classification techniques and the introduction of geomorphic descriptors derived from Digital Elevation Models (DEM). On the other hand, high-performing Machine Learning (ML) methods have allowed for the development of accurate flood maps by integrating several predictor variables into supervised or unsupervised algorithms. Among others, Random Forest (RF) is a powerful and widely applied ML classifier, providing accurate predictions also with complex datasets and for varying parameters set. In the present study, the effectiveness of this algorithm for mapping flooded areas was evaluated. Various geospatial data sources were integrated, including morphological indicators, such as the Geomorphic Flood Index (GFI), Sentinel-2 bands, multispectral indices, and Sentinel-1 polarizations. The …
Scholar articles
C Albertini, A Gioia, V Iacobellis, GP Petropoulos… - Remote Sensing Applications: Society and …, 2024