IEEE Trans Image Process. 2020;29:100-115. doi: 10.1109/TIP.2019.2927458. Epub 2019 Jul 15.
The inverse synthetic aperture radar (ISAR) imaging technique of a moving target with sparse sampling data has attracted wide attention due to its ability to reduce the data collection burden. However, traditional low-rank or 2D compressive sensing (CS)-based ISAR imaging methods can handle the random sampling or the separable sampling data only. When the specific data collection condition cannot be satisfied, low-rank or 2D CS-based methods cannot provide satisfactory imaging results any more. To remedy this problem, in this paper, we proposed a joint low-rank and sparsity priors' constrained model for ISAR imaging with various sparse data patterns. This model is inspired by the facts that the received radar data have a low-rank property and the ISAR image is sparse on the specific dictionary. Two reconstruction algorithms to solve the double priors' constrained optimization problem are developed under the alternative direction method of multipliers (ADMM) framework with the help of augmented Lagrange multipliers (ALM). Results on simulation data and real data show that the proposed methods are quite effective in recovering missing samples and focused image and perform better than the matrix completion-based method and the sparse representation-based method when dealing with the various kinds of sparse sampling data.
基于稀疏采样数据的逆合成孔径雷达(ISAR)成象技术由于能够降低数据采集负担而受到广泛关注。然而,传统的基于低秩或二维压缩感知(CS)的 ISAR 成像方法只能处理随机采样或可分离采样数据。当无法满足特定的数据采集条件时,基于低秩或二维 CS 的方法将无法提供令人满意的成像结果。为了解决这个问题,在本文中,我们提出了一种用于各种稀疏数据模式的 ISAR 成像的联合低秩和稀疏先验约束模型。该模型的灵感来源于接收雷达数据具有低秩特性和 ISAR 图像在特定字典上稀疏的事实。在增广拉格朗日乘子(ALM)的帮助下,基于交替方向乘子法(ADMM)框架开发了两种用于求解双先验约束优化问题的重建算法。仿真数据和真实数据的结果表明,所提出的方法在恢复缺失样本和聚焦图像方面非常有效,并且在处理各种稀疏采样数据时,其性能优于基于矩阵补全的方法和基于稀疏表示的方法。