论文标题
稀疏的学习方法,用于设计具有增强性属性的雷达可调架构
A Sparse Learning Approach to the Design of Radar Tunable Architectures with Enhanced Selectivity Properties
论文作者
论文摘要
本文考虑了可调决策方案的设计,能够以高概率不匹配的信号与未知协方差矩阵进行拒绝。为此,利用了稀疏的恢复技术来增强目标到达角度的分辨率,该分辨率以获取高选择性检测器的目的估计。此估计过程的结果用于设计依靠Twostage设计范式或基于广义似然比测试的启发式设计程序的检测架构。值得注意的是,新决策规则具有有限的恒定误报警报率属性,并通过调整设计参数来匹配检测性能与拒绝不希望的信号之间的权衡。在分析阶段,与现有的选择性竞争对手相比,还评估了新提出的检测器的性能。结果表明,新的检测器可以在拒绝不需要的信号方面胜过所考虑的对应物,同时保留匹配信号的合理检测性能。
This paper considers the design of tunable decision schemes capable of rejecting with high probability mismatched signals embedded in Gaussian interference with unknown covariance matrix. To this end, a sparse recovery technique is exploited to enhance the resolution at which the target angle of arrival is estimated with the objective to obtain high-selective detectors. The outcomes of this estimation procedure are used to devise detection architectures relying on either the twostage design paradigm or heuristic design procedures based upon the generalized likelihood ratio test. Remarkably, the new decision rules exhibit a bounded-constant false alarm rate property and allow for a tradeoff between the matched detection performance and the rejection of undesired signals by tuning a design parameter. At the analysis stage, the performance of the newly proposed detectors is assessed also in comparison with existing selective competitors. The results show that the new detectors can outperform the considered counterparts in terms of rejection of unwanted signals, while retaining reasonable detection performance of matched signals.