Abstract

Segmentation of marine oil spills in synthetic aperture radar (SAR) images is a challenging task because of the complexity and irregularities in SAR images. In this work, we aim to develop an effective segmentation method which addresses marine oil spill identification in SAR images by investigating the distribution representation of SAR images. To seek effective oil spill segmentation, we revisit the SAR imaging mechanism in order to attain the probability distribution representation of oil spill SAR images, in which the characteristics of SAR images are properly modelled. We then exploit the distribution representation to formulate the segmentation energy functional, by which oil spill characteristics are incorporated to guide oil spill segmentation. Moreover, the oil spill segmentation model contains the oil spill contour regularization term and the updated level set regularization term which enhance the representational power of the segmentation energy functional. Benefiting from the synchronization of SAR image representation and oil spill segmentation, our proposed method establishes an effective oil spill segmentation framework. Experimental evaluations demonstrate the effectiveness of our proposed segmentation framework for different types of marine oil spill SAR image segmentation.

Highlights

  • M ARINE oil spills, which are the release of liquid petroleum hydrocarbons into the marine environmental areas, occur at different scales and lead disastrous consequences to the natural marine ecosystem

  • We have presented our novel oil spill Synthetic Aperture Radar (SAR) image segmentation method by simultaneously considering oil spil SAR image formation and oil spill segmentation

  • We commenced by exploring SAR imaging for marine oil spill observation to obtain the probability distribution representation of SAR images

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Summary

Introduction

M ARINE oil spills, which are the release of liquid petroleum hydrocarbons into the marine environmental areas, occur at different scales and lead disastrous consequences to the natural marine ecosystem. These disasters have posed challenges to marine environmental protection [1] and are difficult to be cleaned up. In this regard, detecting oil spills efficiently has become extremely important in the field of geoscience and remote sensing [2]. We concentrate on accurately detecting marine oil spills in SAR images by developing an intelligent method which considers SAR image formation and oil spill segmentation simultaneously

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