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Variational Message-Passing: Extension to Continuous Variables and Applications in Multi-Target Tracking.

机译:可变消息传递:扩展到连续变量及其在多目标跟踪中的应用。

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摘要

This dissertation focuses on both the application and development of variational inference algorithms for probabilistic graphical models. First, we propose a new application of graphical models and approximate inference in the multi-target tracking domain. By constructing a factor graph representation of the track-oriented multiple hypothesis tracker, we enable the application of variational inference algorithms to efficiently estimate marginal probabilities of possible tracks. We then show that these track marginals are the key ingredient in a multi-target generalization of the standard expectation-maximization algorithm used for parameter estimation in single-target tracking. The resulting online estimation algorithm makes the tracker robust to parameter misspecification and can improve performance in settings with non-stationary target dynamics. Next, we develop a general framework to extend algorithms for approximate marginalization in discrete systems to work with continuous-valued graphical models. We extend the particle belief propagation algorithm, which uses importance sampling to lift the sum and product operations of belief propagation from a variable's continuous domain into an importance-reweighted particle domain. We demonstrate that this framework admits other variational inference algorithms such as mean field and tree-reweighted belief propagation, and that they confer similar qualitative benefits to continuous-valued models as in the discrete domain.
机译:本文主要研究概率图模型的变分推理算法的应用和发展。首先,我们提出了图形模型和近似推理在多目标跟踪域中的新应用。通过构造面向轨道的多假设跟踪器的因子图表示,我们可以应用变分推理算法来有效地估计可能的轨道的边际概率。然后,我们证明这些跟踪边际是用于单目标跟踪中的参数估计的标准期望最大化算法的多目标概括中的关键要素。由此产生的在线估计算法使跟踪器对参数错误指定具有鲁棒性,并且可以在具有非平稳目标动态的设置中提高性能。接下来,我们开发一个通用框架,以扩展离散系统中近似边缘化的算法,以与连续值图形模型一起使用。我们扩展了粒子置信度传播算法,该算法使用重要性采样将置信度传播的和和乘积运算从变量的连续域提升到重要度加权的粒子域。我们证明了该框架接受其他变分推理算法,例如均值场和树加权的信念传播,并且它们向离散域中的连续值模型赋予了类似的质量优势。

著录项

  • 作者

    Frank, Andrew John.;

  • 作者单位

    University of California, Irvine.;

  • 授予单位 University of California, Irvine.;
  • 学科 Statistics.;Computer Science.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 141 p.
  • 总页数 141
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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