4.7 Article

Sea Ice Classification of SAR Imagery Based on Convolution Neural Networks

Journal

REMOTE SENSING
Volume 13, Issue 9, Pages -

Publisher

MDPI
DOI: 10.3390/rs13091734

Keywords

convolutional neural network; ice edge detection; polar region; Sentinel-1; sea ice classification; synthetic aperture radar

Funding

  1. Centre for Integrated Remote Sensing and Forecasting for Arctic Operations (CIRFA)
  2. Research Council of Norway (RCN) [237906]
  3. European Union [825258]
  4. Fram Center under the Automised Large-scale Sea Ice Mapping (ALSIM) Polhavet flagship project

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This study explores the classification of sea ice using Sentinel-1 synthetic aperture radar data, addressing challenges in binary sea ice versus open-water classification and multi-class sea ice type classification. By constructing a dataset with manually annotated SAR images and utilizing data augmentation and a modified VGG-16 network model, accurate classification results were achieved, demonstrating improvements over existing models.
We explore new and existing convolutional neural network (CNN) architectures for sea ice classification using Sentinel-1 (S1) synthetic aperture radar (SAR) data by investigating two key challenges: binary sea ice versus open-water classification, and a multi-class sea ice type classification. The analysis of sea ice in SAR images is challenging because of the thermal noise effects and ambiguities in the radar backscatter for certain conditions that include the reflection of complex information from sea ice surfaces. We use manually annotated SAR images containing various sea ice types to construct a dataset for our Deep Learning (DL) analysis. To avoid contamination between classes we use a combination of near-simultaneous SAR images from S1 and fine resolution cloud-free optical data from Sentinel-2 (S2). For the classification, we use data augmentation to adjust for the imbalance of sea ice type classes in the training data. The SAR images are divided into small patches which are processed one at a time. We demonstrate that the combination of data augmentation and training of a proposed modified Visual Geometric Group 16-layer (VGG-16) network, trained from scratch, significantly improves the classification performance, compared to the original VGG-16 model and an ad hoc CNN model. The experimental results show both qualitatively and quantitatively that our models produce accurate classification results.

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