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

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.

[1]  Lin Sun,et al.  Satellite data cloud detection using deep learning supported by hyperspectral data , 2020, International Journal of Remote Sensing.

[2]  Marian-Daniel Iordache,et al.  Proba-V cloud detection Round Robin: Validation results and recommendations , 2017, 2017 9th International Workshop on the Analysis of Multitemporal Remote Sensing Images (MultiTemp).

[3]  Limin Yang,et al.  Development of a global land cover characteristics database and IGBP DISCover from 1 km AVHRR data , 2000 .

[4]  F ROSENBLATT,et al.  The perceptron: a probabilistic model for information storage and organization in the brain. , 1958, Psychological review.

[5]  Guido Masiello,et al.  Demonstration of random projections applied to the retrieval problem of geophysical parameters from hyper-spectral infrared observations. , 2016, Applied optics.

[6]  K. Moffett,et al.  Remote Sens , 2015 .

[7]  Zhiguo Jiang,et al.  A Cloud Detection Method for Landsat 8 Images Based on PCANet , 2018, Remote. Sens..

[8]  M. Derrien,et al.  MSG/SEVIRI cloud mask and type from SAFNWC , 2005 .

[9]  J. Besag On the Statistical Analysis of Dirty Pictures , 1986 .

[10]  Laurent Poutier,et al.  Physical Retrieval of Land Surface Emissivity Spectra from Hyper-Spectral Infrared Observations and Validation with In Situ Measurements , 2018, Remote. Sens..

[11]  W. Dierckx,et al.  PROBA-V mission for global vegetation monitoring: standard products and image quality , 2014 .

[12]  Fabio Del Frate,et al.  Multilayer Perceptron Neural Networks Model for Meteosat Second Generation SEVIRI Daytime Cloud Masking , 2015, Remote. Sens..

[13]  Zhiwei Li,et al.  Deep learning based cloud detection for remote sensing images by the fusion of multi-scale convolutional features , 2018, ISPRS Journal of Photogrammetry and Remote Sensing.

[14]  Rune Hylsberg Jacobsen,et al.  A cloud detection algorithm for satellite imagery based on deep learning , 2019, Remote Sensing of Environment.

[15]  Panagiotis Sidiropoulos,et al.  CloudFCN: Accurate and Robust Cloud Detection for Satellite Imagery with Deep Learning , 2019, Remote. Sens..

[16]  Yannik Rist,et al.  Deep learning for multi-modal classification of cloud, shadow and land cover scenes in PlanetScope and Sentinel-2 imagery , 2019, ISPRS Journal of Photogrammetry and Remote Sensing.

[17]  Stefan Adriaensen,et al.  Evaluation of PROBA-V Collection 1: Refined Radiometry, Geometry, and Cloud Screening , 2018, Remote. Sens..

[18]  Anestis Antoniadis,et al.  Statistical cloud detection from SEVIRI multispectral images , 2008 .

[19]  Guido Masiello,et al.  Cloud mask via cumulative discriminant analysis applied to satellite infrared observations : scientific basis and initial evaluation , 2014 .

[20]  Peter Vogt,et al.  A cloud mask methodology for high resolution remote sensing data combining information from high and medium resolution optical sensors , 2011 .

[21]  W S McCulloch,et al.  A logical calculus of the ideas immanent in nervous activity , 1990, The Philosophy of Artificial Intelligence.

[22]  Bin He,et al.  Energy-based cloud detection in multispectral images based on the SVM technique , 2019 .

[23]  C. J. Stone,et al.  Consistent Nonparametric Regression , 1977 .

[24]  Umberto Amato,et al.  Localized empirical discriminant analysis , 2008, Comput. Stat. Data Anal..

[25]  Zhe Zhu,et al.  Cloud detection algorithm comparison and validation for operational Landsat data products , 2017 .

[26]  Charles K. Gatebe,et al.  New neural network cloud mask algorithm based on radiative transfer simulations , 2018, Remote Sensing of Environment.

[27]  Luis Guanter,et al.  Ready-to-Use Methods for the Detection of Clouds, Cirrus, Snow, Shadow, Water and Clear Sky Pixels in Sentinel-2 MSI Images , 2016, Remote. Sens..