Abstract

As an important step of synthetic aperture radar image interpretation, synthetic aperture radar image segmentation aims at segmenting an image into different regions in terms of homogeneity. Because of the deficiency of the labeled samples and the existence of speckling noise, synthetic aperture radar image segmentation is a challenging task. We present a new method for synthetic aperture radar image segmentation in this article. Due to the large size of the original synthetic aperture radar image, we first divide the input image into small slices. Then the image slices are input to the attention-based fully convolutional network for obtaining the segmentation results. Finally, the fully connected conditional random field is adopted for improving the segmentation performance of the network. The innovations of our method are as follows: 1) The attention-based fully convolutional network is embedded with the multiscale attention network which is capable of enhancing the extraction of the image features through three strategies, namely, multiscale feature extraction, channel attention extraction, and spatial attention extraction. 2) We design a new loss function for the attention fully convolutional network by combining Lovasz-Softmax and cross-entropy losses. The new loss allows us to simultaneously optimize the intersection over union and the pixel classification accuracy of the segmentation results. The experiments are performed on two airborne synthetic aperture radar image databases. It has been proved that our method is superior to other state-of- the-art image segmentation approaches.

Highlights

  • B ECAUSE of the penetrating capability of synthetic aperture radar (SAR), we can acquire high-resolution SAR images regardless of weather conditions [1], [2]

  • We proposed the attention fully convolutional network (AFCN) model for SAR image segmentation

  • In the structure of AFCN, each convolution module is followed by a MANet which is utilized for enhancing the extraction of the SAR image features

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Summary

Introduction

B ECAUSE of the penetrating capability of synthetic aperture radar (SAR), we can acquire high-resolution SAR images regardless of weather conditions [1], [2]. SAR image interpretation includes image segmentation, target detection, target recognition, and so on [3]–[5]. Image segmentation is a key step of SAR image interpretation. Its purpose is to categorize the SAR images into different regions [6]. Used methods for SAR image segmentation include Markov random field (MRF), edge detection, and optimal thresholding-based methods [7], [8]. These methods heavily rely on handcrafted features. Because of speckle noise in SAR images, it is difficult to extract the desired hand-crafted features [9]

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