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Performance analysis and algorithm enhancement of feature-aided-tracker (FAT) simulation software using 1-D high-range-resolution (HRR) radar signature profiles

机译:使用一维高分辨率(HRR)雷达特征剖面的特征辅助跟踪器(FaT)仿真软件的性能分析和算法增强

摘要

The current Lincoln Laboratory (LL) MATLAB Feature-Aided-Tracker (FAT) software was adjusted and appended to provide a robust ground-target radar tracking simulation tool. It utilizes algorithms from the LL UAV Radar Moving Target Tracker (1991) and the LL FAT Tracking Software (2002). One-dimensional High-Range-Resolution (HRR) radar signature target profiles were used to assist in track-to-report data association through classification-aided and signature-aided tracking (CAT and SAT) algorithms. Profiles were obtained from the DARPA-sponsored Moving Target Feature Phenomenology (MTFP) program. Performance Analysis of this simulation tool reinforced the hypothesis that target aspect angle error estimation (state estimation) drives the performance of CAT, SAT, and Kinematic Tracking (KT) algorithms. A decaying exponential relationship exists between the Kalman filter estimate of target-speed and expected aspect angle error. This relationship was exploited to optimize the allocation of computational resources while enlarging the database aspect angle search in CAT to improve performance. Vehicle classification accuracy is improved by 70% and data association accuracy is improved by 12% in kinematically ambiguous situations such as when target intersections occur. SAT was improved 3% using this knowledge. Additionally, the target report HRR profile from each scan was used to generate an "On-The- Fly" SAT HRR profile database. This algorithm tests the similarity between the current target report HRR profile and the database HRR profiles. If there is sufficient resemblance, the report HRR is added to the database; if not, the database is reset.
机译:调整并附加了当前的林肯实验室(LL)MATLAB特征辅助跟踪器(FAT)软件,以提供强大的地面目标雷达跟踪仿真工具。它利用了LL UAV雷达移动目标跟踪器(1991)和LL FAT跟踪软件(2002)的算法。一维高分辨(HRR)雷达签名目标配置文件用于通过分类辅助和签名辅助跟踪(CAT和SAT)算法协助跟踪到报告数据关联。概况是从DARPA赞助的移动目标特征现象学(MTFP)程序获得的。此仿真工具的性能分析强化了以下假设:目标纵横比角误差估计(状态估计)驱动CAT,SAT和运动跟踪(KT)算法的性能。目标速度的卡尔曼滤波器估计与预期纵横比误差之间存在衰减指数关系。利用这种关系来优化计算资源的分配,同时扩大CAT中的数据库纵横比搜索以提高性能。在运动学上模棱两可的情况下(例如发生目标交叉路口时),车辆分类精度提高了70%,数据关联精度提高了12%。利用此知识,SAT提升了3%。另外,每次扫描的目标报告HRR配置文件用于生成“实时” SAT HRR配置文件数据库。此算法测试当前目标报告HRR配置文件和数据库HRR配置文件之间的相似性。如果有足够的相似之处,则将报告HRR添加到数据库中;如果不是,数据库将被重置。

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