Abstract

In land monitoring applications, clouds and shadows are considered noise that should be removed as automatically and quickly as possible, before further analysis. This paper presents a method to detect clouds and shadows in Suomi NPP satellite’s VIIRS (Visible Infrared Imaging Radiometer Suite) satellite images. The proposed cloud and shadow detection method has two distinct features when compared to many other methods. First, the method does not use the thermal bands and can thus be applied to other sensors which do not contain thermal channels, such as Sentinel-2 data. Secondly, the method uses the ratio between blue and green reflectance to detect shadows. Seven hundred and forty-seven VIIRS images over Fennoscandia from August 2014 to April 2016 were processed to train and develop the method. Twenty four points from every tenth of the images were used in accuracy assessment. These 1752 points were interpreted visually to cloud, cloud shadow and clear classes, then compared to the output of the cloud and shadow detection. The comparison on VIIRS images showed 94.2% correct detection rates and 11.1% false alarms for clouds, and respectively 36.1% and 82.7% for shadows. The results on cloud detection were similar to state-of-the-art methods. Shadows showed correctly on the northern edge of the clouds, but many shadows were wrongly assigned to other classes in some cases (e.g., to water class on lake and forest boundary, or with shadows over cloud). This may be due to the low spatial resolution of VIIRS images, where shadows are only a few pixels wide and contain lots of mixed pixels.

Highlights

  • Cloud and shadow detection in satellite images is a crucial step before analysis

  • We propose an automatic cloud and shadow detection method for optical satellite images (e.g., Suomi NPP VIIRS or Sentinel-2)

  • A new method for cloud and shadow detection was developed for optical satellite images

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Summary

Introduction

Cloud and shadow detection in satellite images is a crucial step before analysis. Clouds and shadows disturb the modelling of land cover parameters from the reflectance values. Frequently imaging satellites like Suomi NPP (National Polar-orbiting Partnership) and its potential to near real-time (NRT) operational applications, the detection method has to be robust and automated to allow for fast analysis without extra delays. The Suomi NPP satellite was launched in October 2011 by NASA Space Administration) to monitor and predict climate change and weather conditions over land, sea and atmosphere. Its optical VIIRS (Visible Infrared Imaging Radiometer Suite) instrument provides for instance critical data for environmental assessments, forecasts and warnings [1]. In this study the Remote Sens. 2017, 9, 806; doi:10.3390/rs9080806 www.mdpi.com/journal/remotesensing

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