利用过去的CPI数据(雷达信号处理)提高知识辅助STAP性能

D. Page, S. Scarborough, S. Crooks
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引用次数: 10

摘要

介绍了一种将过去相干处理间隔(CPI)雷达数据纳入知识辅助时空自适应处理(KASTAP)的技术。该技术形成了基于地面的杂波反射率图,以提供非均匀地形环境中杂波统计的改进知识。这些映射被用来计算作为距离函数的预测杂波协方差矩阵。利用DARPA知识辅助传感器信号处理和专家推理(KASSPER)项目提供的数据集,将预测的杂波统计数据与实测统计数据进行比较,以验证该方法的准确性。鲁棒STAP权向量的计算使用一种技术,结合了协方差逐渐变细,增益和相位校正的自适应估计,知识辅助预白化和特征值重新缩放。计算了几个性能指标,包括信号干扰加噪声(SINR)损失、目标检测和假警报、接收器工作特性(ROC)曲线和跟踪性能。结果表明,使用基于多个CPI杂波反射率图的知识辅助处理具有显著的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving knowledge-aided STAP performance using past CPI data [radar signal processing]
A technique for incorporating past coherent processing interval (CPI) radar data into knowledge-aided space-time adaptive processing (KASTAP) is described. The technique forms Earth-based clutter reflectivity maps to provide improved knowledge of clutter statistics in nonhomogeneous terrain environments. The maps are utilized to calculate predicted clutter covariance matrices as a function of range. Using a data set provided under the DARPA knowledge-aided sensor signal processing and expert reasoning (KASSPER) program, predicted clutter statistics are compared to measured statistics to verify the accuracy of the approach. Robust STAP weight vectors are calculated using a technique that combines covariance tapering, adaptive estimation of gain and phase corrections, knowledge-aided pre-whitening, and eigenvalue rescaling. Several performance metrics are calculated, including signal-to-interference plus noise (SINR) loss, target detections and false alarms, receiver operating characteristic (ROC) curves, and tracking performance. The results show a significant benefit to using knowledge-aided processing based on multiple CPI clutter reflectivity maps.
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