A Feature Fusion-Net Using Deep Spatial Context Encoder and Nonstationary Joint Statistical Model for High Resolution SAR Image Classification
Wenkai Liang, Yan Wu, Ming Li, Peng Zhang, Yice Cao, Xin Hu

TL;DR
This paper introduces a novel end-to-end supervised classification method for high-resolution SAR images that combines a lightweight deep spatial context encoder with a nonstationary joint statistical model to improve feature discrimination.
Contribution
The paper proposes a new feature fusion network integrating a deep spatial context encoder and a nonstationary joint statistical model for enhanced SAR image classification.
Findings
Outperforms existing algorithms on four HR SAR datasets.
Effectively captures both spatial and statistical features.
Improves classification accuracy with limited training samples.
Abstract
Convolutional neural networks (CNNs) have been applied to learn spatial features for high-resolution (HR) synthetic aperture radar (SAR) image classification. However, there has been little work on integrating the unique statistical distributions of SAR images which can reveal physical properties of terrain objects, into CNNs in a supervised feature learning framework. To address this problem, a novel end-to-end supervised classification method is proposed for HR SAR images by considering both spatial context and statistical features. First, to extract more effective spatial features from SAR images, a new deep spatial context encoder network (DSCEN) is proposed, which is a lightweight structure and can be effectively trained with a small number of samples. Meanwhile, to enhance the diversity of statistics, the nonstationary joint statistical model (NS-JSM) is adopted to form the global…
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