Articolo in rivista, 2020, ENG, 10.3390/s20072090

Cloud Detection: An Assessment Study from the ESA Round Robin Exercise for PROBA-V

U. Amato, A. Antoniadis, MF Carfora

ISASI CNR, Université Joseph Fourier Grenoble, IAC CNR

A Round Robin exercise was implemented by ESA to compare different classification methods in detecting clouds from images taken by the PROBA-V sensor. A high-quality dataset of 1350 reflectances and Clear/Cloudy corresponding labels had been prepared by ESA in the framework of the exercise. Motivated by both the experience acquired by one of the authors in this exercise and the availability of such a reliable annotated dataset, we present a full assessment of the methodology proposed therein. Our objective is also to investigate specific issues related to cloud detection when remotely sensed images comprise only a few spectral bands in the visible and near-infrared. For this purpose, we consider a bunch of well-known classification methods. First, we demonstrate the feasibility of using a training dataset semi-automatically obtained from other accurate algorithms. In addition, we investigate the effect of ancillary information, e.g., surface type or climate, on accuracy. Then we compare the different classification methods using the same training dataset under different configurations. We also perform a consensus analysis aimed at estimating the degree of mutual agreement among classification methods in detecting Clear or Cloudy sky conditions.

Sensors (Basel) 20 (7)

Keywords

cloud detection, PROBA-V, statistical learning, machine learning, cumulative discriminant analysis, K-Nearest Neighbor, neural networks

CNR authors

Amato Umberto, Carfora Maria Francesca

CNR institutes

IAC – Istituto per le applicazioni del calcolo "Mauro Picone", ISASI – Istituto di Scienze Applicate e Sistemi Intelligenti "Eduardo Caianiello"

ID: 420101

Year: 2020

Type: Articolo in rivista

Creation: 2020-04-20 11:18:13.000

Last update: 2021-03-30 19:28:04.000

External links

OAI-PMH: Dublin Core

OAI-PMH: Mods

OAI-PMH: RDF

DOI: 10.3390/s20072090

URL: https://www.mdpi.com/1424-8220/20/7/2090

External IDs

CNR OAI-PMH: oai:it.cnr:prodotti:420101

DOI: 10.3390/s20072090