The data-driven reduced order models (ROMs) have recently emerged as an efficient tool for the solution of the inverse scattering problems with applications to seismic and sonar imaging. One specification of this approach is that it requires the full square multiple-output/multiple-input (MIMO) matrix valued transfer function as data for multidimensional problems. The synthetic aperture radar (SAR), however, is limited to single input/single output (SISO) measurements corresponding to the diagonal of the matrix transfer function. Here we present a ROM based Lippmann-Schwinger approach overcoming this drawback. The ROMs are constructed to match the data for each source-receiver pair separately, and these are used to construct internal solutions for the corresponding source using only the data-driven Gramian. Efficiency of the proposed approach is demonstrated on 2D and 2.5D (3D propagation and 2D reflectors) numerical examples. The new algorithm not only suppresses multiple echoes seen in the Born imaging, but also takes advantage of illumination by them of some back sides of the reflectors, improving the quality of their mapping.
翻译:数据驱动减序模型(ROM)最近成为解决地震和声纳成像应用的反分散问题的有效工具。该方法的一个规格是,它要求将全正方形多输出/多输出(MIIMO)矩阵值转换功能作为多维问题的数据。合成孔径雷达(SAR)限于与矩阵传输函数对齐的单输入/单输出(SISO)测量。我们在这里提出了一个基于Lippmann-Schwinger的ROM方法,以克服这一缺陷。这些ROM是用来分别匹配每个源-接收对的数据的,并且仅使用数据驱动的Gramian为相应的源构建内部解决方案。拟议方法的效率在 2D 和 2.5D (3D 传播和 2D 反射器) 数字示例上得到了证明。新的算法不仅抑制了在原成像中看到的多个回声,而且还利用了它们向反射器的后侧的照明,提高了其绘图质量。