论文标题
异质环境的雷达自适应检测体系结构
Radar Adaptive Detection Architectures for Heterogeneous Environments
论文作者
论文摘要
在本文中,设计了四个用于在异质高斯环境中目标检测的自适应雷达体系结构。第一个体系结构依赖于原始数据域中最大似然方法的循环优化,而第二个检测器是转换数据的函数,这些函数与其能量相对于其能量进行了归一化,并且通过基于预期的替代过程估算的未知参数。其余两个架构是通过适当组合估计程序和先前设计的检测器结构来获得的。在模拟和测量数据上进行的性能分析强调,在转换域中起作用的架构可确保相对于干扰功率变化的恒定错误警报率属性,并且相对于其他检测器的检测阈值对干扰功率非常敏感。
In this paper, four adaptive radar architectures for target detection in heterogeneous Gaussian environments are devised. The first architecture relies on a cyclic optimization exploiting the Maximum Likelihood Approach in the original data domain, whereas the second detector is a function of transformed data which are normalized with respect to their energy and with the unknown parameters estimated through an Expectation-Maximization-based alternate procedure. The remaining two architectures are obtained by suitably combining the estimation procedures and the detector structures previously devised. Performance analysis, conducted on both simulated and measured data, highlights that the architecture working in the transformed domain guarantees the constant false alarm rate property with respect to the interference power variations and a limited detection loss with respect to the other detectors, whose detection thresholds nevertheless are very sensitive to the interference power.