Abstract

Polarimetric synthetic aperture radar (PolSAR) image classification has become more and more widely used in recent years. It is well known that PolSAR image classification is a dense prediction problem. The recently proposed fully convolutional networks (FCN) model, which is very good at dealing with the dense prediction problem, has great potential in resolving the task of PolSAR image classification. Nevertheless, for FCN, there are some problems to solve in PolSAR image classification. Fortunately, Li et al. proposed the sliding window fully convolutional networks (SFCN) model to tackle the problems of FCN in PolSAR image classification. However, only when the labeled training sample is sufficient, can SFCN achieve good classification results. To address the above mentioned problem, we propose adversarial reconstruction-classification networks (ARCN), which is based on SFCN and introduces reconstruction-classification networks (RCN) and adversarial training. The merit of our method is threefold: (i) A single composite representation that encodes information for supervised image classification and unsupervised image reconstruction can be constructed; (ii) By introducing adversarial training, the higher-order inconsistencies between the true image and reconstructed image can be detected and revised. Our method can achieve impressive performance in PolSAR image classification with fewer labeled training samples. We have validated its performance by comparing it against several state-of-the-art methods. Experimental results obtained by classifying three PolSAR images demonstrate the efficiency of the proposed method.

Highlights

  • Polarimetric synthetic aperture (PolSAR) image classification is one of the most prominent applications in geoscience remote sensing [1]

  • Based on the sliding window fully convolutional networks (SFCN), deep reconstructionclassification network (DRCN) and adversarial training models, we propose adversarial reconstruction-classification networks (ARCN) in this paper

  • The performance of the proposed method is compared against support vector machine (SVM) [26], sparse representation classifier (SRC) [53], stacked auto-encoder (SAE) [33], convolutional neural network (CNN) [54], and SFCN [44]

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Summary

Introduction

Polarimetric synthetic aperture (PolSAR) image classification is one of the most prominent applications in geoscience remote sensing [1]. PolSAR image classification has gained significant research attention [3,4] and many methods to accomplish this task came into existence [4,5]. The research on PolInSAR technique has received a lot of attention [17,18,19,20,21]. All these methods mentioned above are highly depend on a complex analysis of PolSAR data [22], and the extensive analysis of the physical mechanism is hard [23]

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