论文标题
Aetomo-net:基于多维特征的层析成像成像的新型深度学习网络
AETomo-Net: A Novel Deep Learning Network for Tomographic SAR Imaging Based on Multi-dimensional Features
论文作者
论文摘要
基于深度学习的层析成像合成孔径雷达(Tomosar)成像算法可以有效降低计算成本。现有研究的想法是,使用深度折叠网络在一维网络中重建每个范围 - 齐路细胞的高程。但是,由于这些方法通常对信号稀疏度敏感,因此通常会导致一些缺点,例如连续的表面断裂,太多的离群值,\ textit {et al}。为了解决它们,在本文中,提出了基于多维特征的新型成像网络(Aetomo-net)。通过添加类似U-NET的结构,Aetomo-net通过每个方位角式切片进行重建,并在原始的深层展开网络中添加2D功能提取和融合功能。以这种方式,可以以更丰富的特征重建每个方位角式切片,并将提高成像结果的质量。实验表明,与传统的基于ISTA的方法和CV-LISTA相比,所提出的方法可以有效地解决上述缺陷,同时确保成像准确性和计算速度。
Tomographic synthetic aperture radar (TomoSAR) imaging algorithms based on deep learning can effectively reduce computational costs. The idea of existing researches is to reconstruct the elevation for each range-azimuth cell in one-dimensional using a deep-unfolding network. However, since these methods are commonly sensitive to signal sparsity level, it usually leads to some drawbacks like continuous surface fractures, too many outliers, \textit{et al}. To address them, in this paper, a novel imaging network (AETomo-Net) based on multi-dimensional features is proposed. By adding a U-Net-like structure, AETomo-Net performs reconstruction by each azimuth-elevation slice and adds 2D features extraction and fusion capabilities to the original deep unrolling network. In this way, each azimuth-elevation slice can be reconstructed with richer features and the quality of the imaging results will be improved. Experiments show that the proposed method can effectively solve the above defects while ensuring imaging accuracy and computation speed compared with the traditional ISTA-based method and CV-LISTA.