Abstract

Abstract. The historic MERIS (Medium Resolution Imaging Spectrometer) sensor on board Envisat (Environmental Satellite, operation 2002–2012) provides valuable remote sensing data for the retrievals of summer sea ice in the Arctic. MERIS data together with the data of recently launched successor OLCI (Ocean and Land Colour Instrument) on board Sentinel 3A and 3B (2016 onwards) can be used to assess the long-term change of the Arctic summer sea ice. An important prerequisite to a high-quality remote sensing dataset is an accurate separation of cloudy and clear pixels to ensure lowest cloud contamination of the resulting product. The presence of 15 visible and near-infrared spectral channels of MERIS allows high-quality retrievals of sea ice albedo and melt pond fraction, but it makes cloud screening a challenge as snow, sea ice and clouds have similar optical features in the available spectral range of 412.5–900 nm. In this paper, we present a new cloud screening method MECOSI (MERIS Cloud Screening Over Sea Ice) for the retrievals of spectral albedo and melt pond fraction (MPF) from MERIS. The method utilizes all 15 MERIS channels, including the oxygen A absorption band. For the latter, a smile effect correction has been developed to ensure high-quality screening throughout the whole swath. A total of 3 years of reference cloud mask from AATSR (Advanced Along-Track Scanning Radiometer) (Istomina et al., 2010) have been used to train the Bayesian cloud screening for the available limited MERIS spectral range. Whiteness and brightness criteria as well as normalized difference thresholds have been used as well. The comparison of the developed cloud mask to the operational AATSR and MODIS (Moderate Resolution Imaging Spectroradiometer) cloud masks shows a considerable improvement in the detection of clouds over snow and sea ice, with about 10 % false clear detections during May–July and less than 5 % false clear detections in the rest of the melting season. This seasonal behavior is expected as the sea ice surface is generally brighter and more challenging for cloud detection in the beginning of the melting season. The effect of the improved cloud screening on the MPF–albedo datasets is demonstrated on both temporal and spatial scales. In the absence of cloud contamination, the time sequence of MPFs displays a greater range of values throughout the whole summer. The daily maps of the MPF now show spatially uniform values without cloud artifacts, which were clearly visible in the previous version of the dataset. The developed cloud screening routine can be applied to address cloud contamination in remote sensing data over sea ice. The resulting cloud mask for the MERIS operating time, as well as the improved MPF–albedo datasets for the Arctic region, is available at https://www.seaice.uni-bremen.de/start/ (Istomina et al., 2017).

Highlights

  • No other surface type of satellite imagery has the unique features of bright, reflecting white snow surface

  • MECOSI is being applied as preprocessing for the retrieval of melt pond fraction and spectral albedo of summer sea ice (MPD)

  • If we focus on the differences between AATSR and MECOSI cloud mask, we find that both masks lead to a similar melt pond fraction (MPF) time series

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Summary

Introduction

No other surface type of satellite imagery has the unique features of bright, reflecting white snow surface. The task of snow detection would be an easy task in the absence of clouds. The snow spectral signature (e.g., Warren, 1982) is a feature of water and especially of ice clouds (Kokhanovsky, 2006). Snow grain size differences and liquid water content create fine differences between many snow types (Warren, 1982), Published by Copernicus Publications on behalf of the European Geosciences Union. L. Istomina et al.: Improved cloud detection over sea ice and snow during Arctic summer but in general the spectra of snow and cloud are similar in the visible and near infrared, with the difference occurring beyond 1 μm (e.g., channels at 1.6, 3.7, 11 and 12 μm)

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