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Ground Surface Displacement Measurement from Sar Imagery Using Deep Learning

REMOTE SENSING OF ENVIRONMENT(2025)

Southern Methodist Univ | Univ Seoul

Cited 0|Views11
Abstract
Offset tracking using synthetic aperture radar (SAR) amplitude imagery is a valuable technique for detecting large ground displacements. However, the traditional offset tracking methods with the SAR datasets are computationally intensive and require significant time for processing. We have developed a novel cross- connection Siamese ResNet (CC-ResSiamNet). The model leverages multi-kernel offset tracking for preprocessing, followed by deep learning architectures that incorporate U-Net, cross-connections, and residual and attention blocks to predict pixel offsets between two SAR amplitude images. It is trained and tested on 200 K pairs of reference and secondary SAR amplitude images, alongside corresponding target offset data from Alaska's glaciers. The comparative analysis with multiple deep learning models confirmed that our designed model is highly generalizable, achieving rapid convergence, minimal overfitting, and high prediction accuracy. Through multi- scenario inference with glacier movements, earthquakes, and volcanic eruptions worldwide, the model demonstrates strong performance, closely matching the accuracy of traditional methods while offering significantly faster processing times through parallel computing. The model's rapid displacement mapping capability shows particular promise for improving disaster response and near real-time surface monitoring. While the approach encounters challenges in accurately capturing small-scale displacements, it opens new possibilities for SAR-based surface displacement prediction using machine learning. This research highlights the advantages of combining deep learning with SAR imagery for advancing geophysical analysis, with future applications anticipated as more commercial and scientific SAR missions launch globally.
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Key words
Offset tracking,SAR,Deep learning,Siamese ResNet,Displacement,Glacier,Earthquakes,Volcanoes
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要点】:本文提出了一种基于深度学习的SAR图像地面位移测量方法CC-ResSiamNet,实现了快速、准确的位移预测,提升了灾害响应和实时地表监测能力。

方法】:采用多核偏移跟踪预处理,并利用U-Net、交叉连接、残差和注意力块结构的深度学习模型预测SAR图像间的像素偏移。

实验】:模型在200 K对参考和次级SAR幅度图像及其相应的阿拉斯加冰川目标偏移数据上进行了训练和测试,通过多种场景(冰川运动、地震、火山爆发)的推理验证了模型的性能,结果显示模型准确性接近传统方法,且处理速度显著提高。