Deep Learning-based Cross-modal Reconstruction of Vehicle Target from Sparse 3D SAR Image
Da Li, Guoqiang Zhao, Chen Yao, Kaiqiang Zhu, Houjun Sun, Jiacheng Bao, Maokun Li

TL;DR
This paper introduces CMAR-Net, a deep learning model that fuses optical images with sparse 3D SAR data to improve vehicle reconstruction, demonstrating superior accuracy and generalization in real-world scenarios.
Contribution
The paper presents a novel cross-modal learning approach that integrates optical data into 3D SAR reconstruction, enhancing performance over existing unimodal methods.
Findings
CMAR-Net outperforms state-of-the-art methods in structural accuracy.
The model generalizes well from simulated to real-world data.
Effective in reconstructing vehicles from highly sparse observations.
Abstract
Three-dimensional synthetic aperture radar (3D SAR) is an advanced active microwave imaging technology widely utilized in remote sensing area. To achieve high-resolution 3D imaging,3D SAR requires observations from multiple aspects and altitude baselines surrounding the target. However, constrained flight trajectories often lead to sparse observations, which degrade imaging quality, particularly for anisotropic man-made small targets, such as vehicles and aircraft. In the past, compressive sensing (CS) was the mainstream approach for sparse 3D SAR image reconstruction. More recently, deep learning (DL) has emerged as a powerful alternative, markedly boosting reconstruction quality and efficiency. However, existing DL-based methods typically rely solely on high-quality 3D SAR images as supervisory signals to train deep neural networks (DNNs). This unimodal learning paradigm prevents the…
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Taxonomy
TopicsAdvanced SAR Imaging Techniques · Medical Imaging Techniques and Applications · Nuclear Physics and Applications
