Abstract

With the increasing availability of SAR imagery in recent years, more research is being conducted using deep learning (DL) for the classification of ice and open water; however, ice and open water classification using conventional DL methods such as convolutional neural networks (CNNs) is not yet accurate enough to replace manual analysis for operational ice chart mapping. Understanding the uncertainties associated with CNN model predictions can help to quantify errors and, therefore, guide efforts on potential enhancements using more–advanced DL models and/or synergistic approaches. This paper evaluates an approach for estimating the aleatoric uncertainty [a measure used to identify the noise inherent in data] of CNN probabilities to map ice and open water with a custom loss function applied to RADARSAT–2 HH and HV observations. The images were acquired during the 2014 ice season of Lake Erie and Lake Ontario, two of the five Laurentian Great Lakes of North America. Operational image analysis charts from the Canadian Ice Service (CIS), which are based on visual interpretation of SAR imagery, are used to provide training and testing labels for the CNN model and to evaluate the accuracy of the model predictions. Bathymetry, as a variable that has an impact on the ice regime of lakes, was also incorporated during model training in supplementary experiments. Adding aleatoric loss and bathymetry information improved the accuracy of mapping water and ice. Results are evaluated quantitatively (accuracy metrics) and qualitatively (visual comparisons). Ice and open water scores were improved in some sections of the lakes by using aleatoric loss and including bathymetry. In Lake Erie, the ice score was improved by ∼2 on average in the shallow near–shore zone as a result of better mapping of dark ice (low backscatter) in the western basin. As for Lake Ontario, the open water score was improved by ∼6 on average in the deepest profundal off–shore zone.

Highlights

  • Lake ice cover is an essential variable for monitoring climate change [1]

  • Capsule networks (CapsNets) as new neural network structures with the capability of recognizing the spatial information of the image space are being merged with convolutional neural networks (CNNs) to classify complex image scenes [27]

  • We have presented a framework that incorporates aleatoric uncertainty in the CNN

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Summary

Introduction

Lake ice cover is an essential variable for monitoring climate change [1]. There are many suitable sources of observations available for mapping and monitoring lake ice coverage such as optical satellite data (e.g., Moderate Resolution Imaging Spectroradiometer (MODIS) and Visible Infrared. CNN applications via remote sensing imagery have shown promise in recent studies, having been successfully applied to optical imagery and SAR observations for classification, object detection, and data fusion tasks. These studies have implemented CNN as either the core of their deep learning system or a significant part of them. Wang et al [23] mapped ice concentration in the Gulf of

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