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Robust multi-sensor data fusion for distributed CFAR target detection.

机译:用于分布式CFAR目标检测的强大的多传感器数据融合。

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摘要

This thesis presents the design and experimental validation of a robust constant false alarm (CFAR) multiradar distributed detection system that operates in clutter whose distribution is unknown. In the system design, aligned radar detectors, each operating under unknown clutter or noise distribution, receives raw data that are not necessarily uncorrelated or stationary, processes them for clutter reduction and target enhancement, and evaluates a test statistic. Subject to a common set of decision and confidence level thresholds, a confidence level is evaluated and attached to each decision that is transmitted to the fusion through an error-free channel. The fusion employs a computationally simple fusion logic based on the individual sensor decisions and associated confidence levels. The fusion level is also independent of the underlying clutter process.; This thesis constitutes the first distributed predetection fusion design that involves end-to-end processes, has been designed to operate under absolute statistical uncertainty and has been validated theoretically as well as experimentally with field data.; The major contributions and novelties of this thesis are: (a) the development of a data structure and preprocessors for range-doppler or range-only processing; (b) the development of a CFAR peripheral test statistic that is asymptotically distribution-free and permits the networking of dissimilar sensors; (c) the use of a combination of peripheral sensor decisions and censored confidence levels to robustify the fusion decision and eliminate weaknesses of the Boolean fusion logic; and (d) extensive experimental validation of the design with collected field (not previously done elsewhere).; The theoretical performance analysis and Monte-Carlo simulations verify that the system exhibits the desired characteristics of CFAR operation, robustness, insensitivity to power fluctuations and fault-tolerance. The confidence level concept employed is a hybrid between Likelihood Ratio Quantization and the binary confidence level and is based on boundaries that are selected independently of the underlying clutter processes. The system is tested with experimental data ranging from target-in-clear to target-in-heavy-clutter conditions and represents the first major end-to-end experimental validation of a distributed detection system.
机译:本文提出了一种鲁棒的恒定虚假警报(CFAR)多雷达分布式检测系统的设计和实验验证,该系统在杂波中运行,其分布未知。在系统设计中,对准雷达探测器,每一个都在未知的杂波或噪声分布下运行,接收未必无关或静止的原始数据,对它们进行处理以减少杂波并增强目标,并评估测试统计量。遵循一组共同的决策和置信度阈值,对置信度进行评估,并将其附加到通过无错误通道传输到融合的每个决策。融合采用基于各个传感器决策和关联置信度的计算简单的融合逻辑。融合水平也独立于潜在的混乱过程。本论文构成了涉及端到端过程的第一个分布式预检测融合设计,被设计为在绝对统计不确定性下运行,并已通过现场数据的理论和实验验证。本论文的主要贡献和新颖性是:(a)开发用于距离多普勒或仅距离处理的数据结构和预处理器; (b)开发无渐近分布的CFAR外围测试统计数据,并允许将不同的传感器联网; (c)结合使用外围传感器决策和经过审查的置信度来增强融合决策并消除布尔融合逻辑的弱点; (d)利用收集的场地对设计进行广泛的实验验证(以前未在其他地方进行过)。理论性能分析和蒙特卡洛仿真验证了该系统具有CFAR操作,鲁棒性,对功率波动不敏感和容错性的理想特性。所采用的置信度水平概念是似然比量化和二进制置信度水平之间的混合,并且基于独立于基础杂波过程选择的边界。该系统使用从清晰目标到繁杂目标条件下的实验数据进行了测试,代表了分布式检测系统的第一个主要的端到端实验验证。

著录项

  • 作者

    Okello, Nickens Nicanor.;

  • 作者单位

    The Pennsylvania State University.;

  • 授予单位 The Pennsylvania State University.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 1994
  • 页码 204 p.
  • 总页数 204
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;
  • 关键词

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