Compressive Sensing for Tomographic Imaging of a Target with a Narrowband Bistatic Radar

Sensors (Basel). 2019 Dec 13;19(24):5515. doi: 10.3390/s19245515.

Abstract

This paper introduces a new approach to bistatic radar tomographic imaging based on the concept of compressive sensing and sparse reconstruction. The field of compressive sensing has established a mathematical framework which guarantees sparse solutions for under-determined linear inverse problems. In this paper, we present a new formulation for the bistatic radar tomography problem based on sparse inversion, moving away from the conventional k-space tomography approach. The proposed sparse inversion approach allows high-quality images of the target to be obtained from limited narrowband radar data. In particular, we exploit the use of the parameter-refined orthogonal matching pursuit (PROMP) algorithm to obtain a sparse solution for the sparse-based tomography formulation. A key important feature of the PROMP algorithm is that it is capable of tackling the dictionary mismatch problem arising from off-grid scatterers by perturbing the dictionary atoms and allowing them to go off the grid. Performance evaluation studies involving both simulated and real data are presented to demonstrate the performance advantage of the proposed sparsity-based tomography method over the conventional k-space tomography method.

Keywords: bistatic radar; compressive sensing; k-space tomography; narrowband radar; off-grid compressive sensing; orthogonal matching pursuit (OMP); parameter-refined orthogonal matching pursuit (PROMP); radar imaging; radar tomography; sparse reconstruction.