A SAR Remote Sensing Image Change Detection Method Based on DR-UNet-CRF Model

Jianlong Zhang, Yifan Liu, Bin Wang, Chen Chen
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Abstract

A Synthetic aperture radar (SAR) image change detection method based on DR-UNet-CRF iterative structure is proposed by introducing a regional dynamic convolutional network to address the problems of semantic information fading phenomenon and indeterminacy of change boundaries due to differential image computation in remote sensing image change detection. Firstly, a DR-UNet segmentation network based on the dynamic region-aware convolution (DRConv) kernel is conceived to supply a univalent potential function for the conditional random field, and a guide-mask generation method guided mask generation method with feature pyramid network (FPN) based structure is presented to guide an improved dynamic convolutional UNet to obtain accurate remote sensing change regions by learning fine spatial region delineation. Secondly, the pair-wise potential function based on image grayscale features and spatial features is designed to model the inter-pixel relationship. Finally, we use a fully connected conditional random field (CRF) model to iteratively optimize for change regions to achieve semantic compensation, thus defining the boundaries of remote sensing images more precisely. By comparing with the mainstream change detection methods, it can be considered that method in this paper has better detection performance.
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基于DR-UNet-CRF模型的SAR遥感图像变化检测方法
通过引入区域动态卷积网络,提出了一种基于DR-UNet-CRF迭代结构的合成孔径雷达(SAR)图像变化检测方法,解决了遥感图像变化检测中由于图像差分计算导致的语义信息衰落现象和变化边界不确定等问题。首先,提出了一种基于动态区域感知卷积(DRConv)核的DR-UNet分割网络,为条件随飞机提供一价势函数,并提出了一种基于特征金字塔网络(FPN)结构的引导掩码生成方法,通过学习精细的空间区域划分,引导改进的动态卷积UNet获得精确的遥感变化区域。其次,设计了基于图像灰度特征和空间特征的成对势函数,对像素间关系进行建模;最后,利用全连通条件随机场(CRF)模型对变化区域进行迭代优化,实现语义补偿,从而更精确地定义遥感图像的边界。通过与主流变更检测方法的比较,可以认为本文方法具有更好的检测性能。
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