论文标题
结构化混乱协方差矩阵的杂波边缘检测算法
Clutter Edges Detection Algorithms for Structured Clutter Covariance Matrices
论文作者
论文摘要
这封信涉及训练数据中的杂波边缘检测和本地化的问题。为此,假设杂物协方差矩阵的排名是已知的,并且基于广义的可能性比率测试设计了自适应架构,以确定滑动窗口中的训练数据是否包含同质集合还是两个异构子集,则该问题被提出为二元假设检验。在设计阶段,我们利用四个不同的协方差矩阵结构(即Hermitian,Persmemetric,Symmetric和Centrosymmetric)来利用先验信息。然后,对于未知等级的情况,通过设计初步估算阶段诉诸模型订单选择规则来扩展体系结构。基于合成和真实数据的数值示例强调,相对于不使用任何先验信息的竞争者,所提出的解决方案具有卓越的检测和定位性能。
This letter deals with the problem of clutter edge detection and localization in training data. To this end, the problem is formulated as a binary hypothesis test assuming that the ranks of the clutter covariance matrix are known, and adaptive architectures are designed based on the generalized likelihood ratio test to decide whether the training data within a sliding window contains a homogeneous set or two heterogeneous subsets. In the design stage, we utilize four different covariance matrix structures (i.e., Hermitian, persymmetric, symmetric, and centrosymmetric) to exploit the a priori information. Then, for the case of unknown ranks, the architectures are extended by devising a preliminary estimation stage resorting to the model order selection rules. Numerical examples based on both synthetic and real data highlight that the proposed solutions possess superior detection and localization performance with respect to the competitors that do not use any a priori information.