Abstract

Compact polarimetric synthetic aperture radar (CP SAR), as a new technique or observation system, has attracted much attention in recent years. Compared with quad-polarization SAR (QP SAR), CP SAR provides an observation with a wider swath, while, compared with linear dual-polarization SAR, retains more polarization information in observations. These characteristics make CP SAR a useful tool in marine environmental applications. Previous studies showed the potential of CP SAR images for ship detection. However, false alarms, caused by ocean clutter and the lack of detailed information about ships, largely hinder traditional methods from feature selection for ship discrimination. In this paper, a segmentation method designed specifically for ship detection from CP SAR images is proposed. The pixel-wise detection is based on a fully convolutional network (i.e., U-Net). In particular, three classes (ship, land, and sea) were considered in the classification scheme. To extract features, a series of down-samplings with several convolutions were employed. Then, to generate classifications, deep semantic and shallow high-resolution features were used in up-sampling. Experiments on several CP SAR images simulated from Gaofen-3 QP SAR images demonstrate the effectiveness of the proposed method. Compared with Faster RCNN (region-based convolutional neural network), which is considered a popular and effective deep learning network for object detection, the newly proposed method, with precision and recall greater than 90% and a F1 score of 0.912, performs better at ship detection. Additionally, findings verify the advantages of the CP configuration compared with single polarization and linear dual-polarization.

Highlights

  • Due to the all-day, all-weather capabilities of synthetic aperture radar (SAR) systems, SAR images play an important role in maritime monitoring

  • As in a previous study [27], K-distribution with a PFA of 1e–6 was used in the application of CFAR, while land mask information was provided by the land segmentation results obtained by the proposed method

  • Likewise, compared with the linear dual-polarization SAR imaging mode, more information is available from an observed scene of compact polarimetric SAR (CP SAR)

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Summary

Introduction

Due to the all-day, all-weather capabilities of synthetic aperture radar (SAR) systems, SAR images play an important role in maritime monitoring. Compared with the QP SAR mode, the linear dual-polarization SAR mode, with lower system complexity, provides a wider swath width [1]. The compact polarimetric SAR (CP SAR) mode, which has attracted much attention, provides a compromise between swath width and scattering information [2]. The first CP configuration, pi/4 CP mode, was introduced in [3] which transmits a linear polarization microwave directed at 45◦ and receives signals in both H and V polarizations. DCP transmits and receives circular polarizations (RR, RL or LR, LL, where R and L denote right and left circular polarization, respectively). Different from the DCP configuration, the circular transmit-linear receive (CTLR) CP configuration transmits circular polarization while receiving two linear polarizations (RH and RV or LH and LV) [5]. Further investigations in this study are based mainly on CTLR CP SAR images

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