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Association, Fusion and Adaptation for Multisensor Target Tracking Systems.

机译:多传感器目标跟踪系统的关联,融合和适应。

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摘要

Advances in sensor technology constantly bring new challenges to the fields of estimation and target tracking. Development of new types of sensors may necessitate new models for the measurements they provide. Common assumptions that made suitable performance of previously developed tracking systems possible may no longer hold. Utilization of multiple sensors in both heterogeneous and homogeneous cases leads to new challenges for the association and fusion of multiple measurements and targets. Additionally, it is also necessary and desirable to ensure that the systems designed are able to extract the maximum possible information from the sensors which are utilized.;This work aims to address the challenges of sensors with poorly understood measurement noise characteristics, track association with indirectly related measurements, and the evaluation of the statistical efficiency of sensor measurement fusion. Firstly, the problem of poorly understood measurement noise characteristics will be examined through the design for consistency of a passive collision warning system for unmanned aerial vehicles. In order to provide a collision warning, the system will perform a statistical test on the targets tracked in the vehicle's surrounding airspace. Due to the nature of this test, consistency of the estimator is of the utmost importance. To this end, the measurement noise characteristics, which were found to vary over time, must be adapted to. Application of a recently developed method of measurement noise variance estimation allows for the design of an adaptive target tracker which will exhibit the necessary consistency.;Secondly, the challenge of track to track association (T2TA) with nonlinearly related feature measurements will be presented. A T2TA scheme is developed, which will take advantage of traditional kinematic state information as well as additional state information in the form of state augmentation. The main contribution is the use of two nonlinearly related state augmentations at the two sensors, as well as accounting for their uncertainties. The results of T2TA when using the full augmented state are compared to the results of T2TA with either kinematic or state augmentation information alone. The full augmented state is shown to provide the best association results, both in terms of accuracy and the number of samples needed to provide that accuracy.;Finally, the statistical efficiency is examined for two cases of line-of-sight (LOS) measurement fusion. In the first, LOS measurements from passive sensors, assumed to be synchronized, are combined into a single composite Cartesian measurement (full position in 3D) via maximum likelihood (ML) estimation. The use of composite measurements can circumvent the need for nonlinear filtering — which involves, by necessity, approximations. This ML estimate is shown to be statistically efficient, even for small sample sizes (as few as one LOS measurement from each of two sensors), and as such, the covariance matrix obtainable from the Cramer-Rao lower bound provides the correct measurement noise covariance matrix for use in a target tracking filter. In the second case, an acoustic target and sensor localization system with position dependent measurement noise is examined. The system itself has been previously examined, but without deriving the CRLB and showing the statistical efficiency of the estimator used. Two different versions of the CRLB are derived, one in which direction of arrival (DOA) and range measurements are available ("full-position CRLB"), and one in which only DOA measurements are available ("bearing-only CRLB"). In both cases, the estimator is found to be statistically efficient; however, depending on the sensor-target geometry, the range measurements may or may not significantly contribute to the accuracy of target localization.
机译:传感器技术的进步不断给估计和目标跟踪领域带来新的挑战。新型传感器的开发可能需要为其提供的测量使用新模型。使以前开发的跟踪系统具有适当性能的常见假设可能不再成立。在异构和同质情况下使用多个传感器给多种测量和目标的关联和融合带来了新的挑战。另外,确保设计的系统能够从所使用的传感器中提取最大可能的信息也是必要且合乎需要的。这项工作旨在解决对测量噪声特性了解不足,间接跟踪关联的传感器所面临的挑战相关测量,以及评估传感器测量融合的统计效率。首先,将通过设计来检查用于无人机的被动碰撞预警系统的一致性,从而使人们难以理解测量噪声特性的问题。为了提供碰撞警告,系统将对车辆周围空域中跟踪的目标执行统计测试。由于该测试的性质,估计器的一致性至关重要。为此,必须适应随时间变化的测量噪声特性。应用最近开发的测量噪声方差估计方法可以设计出自适应目标跟踪器,该跟踪器将表现出必要的一致性。其次,将提出跟踪与跟踪关联(T2TA)与非线性相关特征测量的挑战。开发了一种T2TA方案,该方案将利用传统的运动状态信息以及状态增强形式的其他状态信息。主要贡献是在两个传感器上使用了两个非线性相关的状态增强,并考虑了它们的不确定性。将使用完全增强状态时的T2TA结果与仅包含运动或状态增强信息的T2TA结果进行比较。从准确性和达到该准确性所需的样本数量来看,完全增强状态显示出最佳的关联结果。最后,检查了两种视线(LOS)测量情况的统计效率融合。首先,通过最大似然(ML)估计,将来自假定被同步的无源传感器的LOS测量值组合为单个复合笛卡尔测量值(3D中的完整位置)。综合测量的使用可以避免对非线性滤波的需求,非线性滤波必然涉及近似值。即使对于较小的样本量(从两个传感器中的每个传感器进行一次LOS测量也是如此),该ML估计也显示出统计上的高效,因此,可从Cramer-Rao下限获得的协方差矩阵可提供正确的测量噪声协方差用于目标跟踪过滤器的矩阵。在第二种情况下,将检查具有目标位置的测量噪声的声学目标和传感器定位系统。系统本身已经过检查,但是没有得出CRLB并显示使用的估计量的统计效率。导出了两种不同的CRLB版本,一种是到达方向(DOA)和范围测量可用的(“全位置CRLB”),另一种是仅DOA测量可用的(“仅轴承CRLB”)。在两种情况下,估计量在统计上都是有效的;但是,根据传感器目标的几何形状,距离测量可能会或可能不会显着影响目标定位的准确性。

著录项

  • 作者

    Osborne, Richard Ware, III.;

  • 作者单位

    University of Connecticut.;

  • 授予单位 University of Connecticut.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 139 p.
  • 总页数 139
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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