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Iterative posterior probability estimation, optimal filtering, and object detection.

机译:迭代后验概率估计,最佳滤波和对象检测。

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摘要

This dissertation discusses three applications of statistical signal processing to estimation of signals arising from complex environments. First, a novel approach is presented for target detection and recognition in the image environment in Chapter 2 by using Bayesian networks, which can be viewed as special cases of factor graphs. Image edge probabilities are derived for the cases of known and unknown edge polarities. The edge probabilities, which relate noisy image observations to target shape information, play key roles in a Bayesian network formulation of the target detection algorithm. Using the edge probabilities, a simple but multiply-connected Bayesian network is first developed, and a probability propagation algorithm for estimation of the approximate posterior target field probability is presented. Next, a more complicated but singly-connected Bayesian network, and a probability propagation algorithm for estimation of the exact posterior probability are presented. Target detection test results and implementation methods are discussed for both Bayesian networks.; The second problem, described in Chapter 3, is the derivation of nonlinear Kalman filtering approaches for self-calibration of millimeter-wave airborne antenna arrays. Non-linear algorithms under an i.i.d. and a non-i.i.d. noise sequence assumption are derived and presented. The full required expressions for the non-linear Kalman filter, i.e. the propagation expressions and all the required inputs to the propagation equations, are described. After the theoretical derivations and analyses, simulation results and the corresponding analysis are discussed. Finally, field experiment results and analyses employing a 32-element Ku-band antenna array are presented.; The third problem, covered in Chapter 4, is the development of techniques for increasing range measurement resolution from a base station to a mobile station (or beacon) by optimal mismatched filtering. Discrete-time optimization, which is based on a minimum mean squared error (MMSE) approach, and continuous-time optimization based on variational calculus, are used to derive signal processing approaches for increasing beacon range resolution and minimizing signal-to-noise loss in an optimal sense. Simulation results and processing considerations are discussed. The derived approaches form the basis for ongoing development of a positioning system for locating and tracking a mobile station in indoor environments.
机译:本文讨论了统计信号处理在估计复杂环境信号中的三种应用。首先,在第二章中通过使用贝叶斯网络提出了一种在图像环境中进行目标检测和识别的新方法,可以将其视为因子图的特例。对于已知和未知边缘极性的情况,得出图像边缘概率。将噪声图像观察与目标形状信息相关联的边缘概率在目标检测算法的贝叶斯网络公式中起着关键作用。利用边缘概率,首先开发了一个简单的但多重连接的贝叶斯网络,并提出了一种用于估计后目标场近似概率的概率传播算法。接下来,提出了一个更复杂但单连接的贝叶斯网络,以及一种用于估计精确后验概率的概率传播算法。讨论了两种贝叶斯网络的目标检测测试结果和实现方法。第3章中描述的第二个问题是推导用于毫米波机载天线阵列的自校准的非线性卡尔曼滤波方法。 i.d.下的非线性算法和非i.d.推导并给出了噪声序列假设。描述了非线性卡尔曼滤波器的全部要求表达式,即传播表达式和传播方程式的所有要求输入。经过理论推导和分析,讨论了仿真结果和相应的分析。最后,给出了使用32元素Ku波段天线阵列的现场实验结果和分析。第4章讨论的第三个问题是通过最佳失配滤波来提高从基站到移动台(或信标)的范围测量分辨率的技术的发展。基于最小均方误差(MMSE)方法的离散时间优化和基于变分演算的连续时间优化被用于导出信号处理方法,以提高信标范围分辨率并最小化信噪比。最佳感觉。讨论了仿真结果和处理注意事项。派生的方法构成了正在进行的用于在室内环境中定位和跟踪移动台的定位系统的基础。

著录项

  • 作者

    Zhao, Renjian.;

  • 作者单位

    University of Massachusetts Amherst.;

  • 授予单位 University of Massachusetts Amherst.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2003
  • 页码 p.2852
  • 总页数 234
  • 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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