1. Sparse direction of arrival estimation of co-prime MIMO radar using sparse aperture completion
- Author
-
Yu Tao, Gong Zhang, and Jingya Zhang
- Subjects
direction-of-arrival estimation ,matrix algebra ,compressed sensing ,mimo radar ,array signal processing ,radar signal processing ,matched filters ,structured measurement matrices ,output data ,match filters ,space–time compressed signal ,virtual uniform linear array ,space–time recovery scheme ,sparse target scene ,accurate doa estimation ,cs-based difference co-array methods ,co-prime mimo radar ,sparse aperture completion scheme ,virtual receive aperture ,sparse direction of arrival estimation ,compressive sensing multiple-input and multiple-output radars ,co-prime receive arrays ,Engineering (General). Civil engineering (General) ,TA1-2040 - Abstract
In this study, the authors consider the problem of direction of arrival (DOA) estimation in compressive sensing multiple-input and multiple-output (CS-MIMO) radars with co-prime receive arrays. A sparse aperture completion scheme is proposed to fill the ‘holes’ that in the difference co-array, achieving the full virtual receive aperture. Structured measurement matrices are devised in order that the output data of match filters can be seen as space–time compressed signal of a virtual uniform linear array. By employing the space–time recovery scheme, the sparse target scene can be accurately recovered while the amount of samples is further reduced. Numerical results demonstrate that the proposed scheme can achieve accurate DOA estimation with space–time compressed data and outperform the CS-based difference co-array methods.
- Published
- 2019
- Full Text
- View/download PDF