Guohao SunZishu HeJun TongXuejing Zhang
This letter proposes a new approach for knowledge-aided estimation of structured clutter covariance matrices (CCMs) in airborne radar systems with limited training data. First, we model the CCM in space-time adaptive processing (STAP) as a sum of low-rank Kronecker products. We then apply a permutation operation to convert the Kronecker factors into linear structures and propose a novel CCM estimation method under the maximum-likelihood framework. Employing a proximal gradient algorithm, the proposed method simultaneously exploits the knowledge about the clutter and the Kronecker structure of the CCM. We finally evaluate the performance of the proposed method using real data from airborne STAP.
Guohao SunZishu HeFengde JiaRuiyang Li
Mingxin LiuLin ZouXuelian YuYun ZhouXuegang WangBin Tang
Sudan HanChongyi FanXiaotao Huang
Kristjan GreenewaldAlfred O. Hero
Jing YangXiaolin DuGuolong CuiJibin ZhengJianbo Li