Abstract

With the capability to automatically learn discriminative features, deep learning has experienced great success in natural images but has rarely been explored for ship classification in high-resolution SAR images due to the training bottleneck caused by the small datasets. In this paper, convolutional neural networks (CNNs) are applied to ship classification by using SAR images with the small datasets. First, ship chips are constructed from high-resolution SAR images and split into training and validation datasets. Second, a ship classification model is constructed based on very deep convolutional networks (VGG). Then, VGG is pretrained via ImageNet, and fine tuning is utilized to train our model. Six scenes of COSMO-SkyMed images are used to evaluate our proposed model with regard to the classification accuracy. The experimental results reveal that (1) our proposed ship classification model trained by fine tuning achieves more than 95% average classification accuracy, even with 5-cross validation; (2) compared with other models, the ship classification model based on VGG16 achieves at least 2% higher accuracies for classification. These experimental results reveal the effectiveness of our proposed method.

Highlights

  • Due to their all-weather, all-day, and high-resolution advantages, synthetic aperture radar (SAR)images have recently been used for ship classification in marine surveillance

  • The aim of this paper focuses on the application of convolutional neural networks (CNNs) to ship classification in high-resolution SAR images using small dataset

  • Three kinds of ships are obtained from these images through SAR experts and field experiments, and there are 146 bulk carriers, 156 containers, and 144 oil tankers used for classification

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Summary

Introduction

Due to their all-weather, all-day, and high-resolution advantages, synthetic aperture radar (SAR)images have recently been used for ship classification in marine surveillance. There are several satellites that have provided high-resolution SAR images since 2007, such as ASI’s COSMO-SkyMed, DLR’s. Many researchers provide classifiers that aim for high-classification accuracy given the particularity of ships in SAR images, such as the analytical hierarchy process [2] and hierarchical scheme [3]. Since these methods are highly dependent on features and classifiers, researchers exploit several strategies to relieve the processes of feature

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