Hua Xiaoqiang, Cheng Yongqiang, Wang Hongqiang, Qin Yuliang
School of Electronic Science, National University of Defence Technology, Changsha 410073, China.
Entropy (Basel). 2018 Apr 8;20(4):258. doi: 10.3390/e20040258.
This paper presents a covariance matrix estimation method based on information geometry in a heterogeneous clutter. In particular, the problem of covariance estimation is reformulated as the computation of geometric median for covariance matrices estimated by the secondary data set. A new class of total Bregman divergence is presented on the Riemanian manifold of Hermitian positive-definite (HPD) matrix, which is the foundation of information geometry. On the basis of this divergence, total Bregman divergence medians are derived instead of the sample covariance matrix (SCM) of the secondary data. Unlike the SCM, resorting to the knowledge of statistical characteristics of the sample data, the geometric structure of matrix space is considered in our proposed estimators, and then the performance can be improved in a heterogeneous clutter. At the analysis stage, numerical results are given to validate the detection performance of an adaptive normalized matched filter with our estimator compared with existing alternatives.
本文提出了一种基于信息几何的异质杂波协方差矩阵估计方法。具体而言,协方差估计问题被重新表述为对由辅助数据集估计的协方差矩阵计算几何中位数。在厄米特正定(HPD)矩阵的黎曼流形上提出了一类新的总布雷格曼散度,它是信息几何的基础。基于这种散度,推导了总布雷格曼散度中位数,而不是辅助数据的样本协方差矩阵(SCM)。与SCM不同,我们提出的估计器考虑了矩阵空间的几何结构,而不是样本数据的统计特征知识,因此在异质杂波中可以提高性能。在分析阶段,给出了数值结果,以验证使用我们的估计器的自适应归一化匹配滤波器与现有替代方法相比的检测性能。