一种基于压缩采样匹配追踪算法的双网格微波重构方法

Huiyuan Zhou, R. Narayanan
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引用次数: 2

摘要

本文将压缩采样匹配追踪算法(CoSaMP)应用于二维非稀疏目标的微波重构。首先,采用自适应离散化方法——DistMesh方法,对感兴趣区域的图像域进行离散化;双网格方法能够在物体较重要的区域提供更密集、更小的离散单元,在其他区域提供更大的离散单元,从而在感兴趣的区域提供更多的细节,使计算负担保持在合理的水平。使用双网格方法的另一个好处是它可以自动生成尺寸函数,并适应几何形状的曲率和特征尺寸。此外,每个细胞的大小是逐渐变化的。其次,在畸变玻恩迭代法(DBIM)框架下求解逆散射问题。在DBIM的每次迭代过程中,将近场散射问题建模为一组线性方程。在此基础上,提出了一种压缩感知(CS)方法——压缩采样匹配追踪算法来解决非线性逆问题。在这个过程中,应用了两个创新步骤。首先,对于非稀疏目标的重建,我们的算法通过小波变换对输入的信号进行处理以获得稀疏度。其次,由于双网格方法将更重要的细胞离散在更小的尺寸上,这些细胞具有很高的被CoSaMP阈值过滤的潜力。因此,引入正则化矩阵来减小尺寸的影响。最后,结合正则化CoSaMP算法给出了双网格方法的数值实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A DUAL-MESH MICROWAVE RECONSTRUCTION METHOD BASED ON COMPRESSIVE SAMPLING MATCHING PURSUIT ALGORITHM
In this paper, the Compressive Sampling Matching Pursuit Algorithm (CoSaMP) is applied to microwave reconstruction of a 2-dimensional non-sparse object. First, an adaptive discretization method, DistMesh method, is applied to discretize the image domain based on the region of interest. The dual-mesh method is able to provide denser and smaller discretized cells in more important areas of the object and larger cells in other areas, thereby providing more details in the interest domain and keeping the computational burden at a reasonable level. Another benefit of using the dual-mesh method is that it automatically generates size functions and adapts to the curvature and the feature size of the geometry. In addition, the size of each cell changes gradually. Next, the inverse scattering problem is solved in frame of Distorted Born Iterative Method (DBIM). During each iteration of DBIM, the near field scattering problem is modeled as a set of linear equations. Furthermore, a compressive sensing (CS) method called the Compressive Sampling Matching Pursuit Algorithm is applied to solve the nonlinear inverse problem. During this process, two innovative steps are applied. First, for the reconstruction of the non-sparse object, the signal input to our algorithm is processed via a wavelet transformation to obtain sparsity. Second, as the dual-mesh method discretizes more important cells in smaller sizes, these cells have high potential to be filtered by the threshold of CoSaMP. As a result, a regularization matrix is introduced to reduce the effect of size. Finally, we present numerical experiment results based on our dual-mesh method combined with the regularized CoSaMP algorithm.
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