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Geometric algorithms for objects in motion.

机译:运动对象的几何算法。

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In this thesis, the theoretical analysis of real-world motivated problems regarding objects in motion is considered. Specifically, four major results are presented addressing the issues of robustness, data collection and compression, realistic theoretical analyses of this compression, and data retrieval.;Robust statistics is the study of statistical estimators that are robust to data outliers. The combination of robust statistics and data structures for moving objects has not previously been studied. In studying this intersection, we consider a problem in the context of an established kinetic data structures framework (called KDS) that relies on advance point motion information and calculates properties continuously. Using the KDS model, we present an approximation algorithm for the kinetic robust k-center problem, a clustering problem that requires k clusters but allows some outlying points to remain unclustered.;For many practical problems that inspired the exploration into robustness, the KDS model is inapplicable due to the point motion restrictions and the advance flight plans required. We present a new framework for kinetic data that allows calculations on moving points via sensor-recorded observations. This new framework is one of the first within the computational geometry community to allow analysis of moving points without a priori knowledge of point motion. Analysis within this framework is based on the entropy of the point set's motion, so efficiency bounds are a function of observed complexity instead of worst-case motion. Analysis is also considered under the more realistic assumptions of empirical entropy and assumptions of limited statistical independence. A compression algorithm within this framework is presented in order to address the storage issues created by the massive data sets sensors collect. Additionally, we show experimentally that this framework and accompanying compression scheme work well in practice. In order to allow for retrieval of the collected and compressed data, we present a spatio-temporal range searching structure that operates without the need to decompress the data. In sum, the collection scheme, compression algorithm, theoretical analyses, and retrieval data structures provide a practical, yet theoretically sound, framework within which observations and analyses can be made of objects in motion.
机译:本文考虑了关于运动对象的真实世界动机问题的理论分析。具体而言,提出了四个主要结果,解决了健壮性,数据收集和压缩,对该压缩进行现实的理论分析以及数据检索的问题。稳健统计是对对数据异常值具有鲁棒性的统计估计量的研究。健壮的统计数据和用于移动对象的数据结构的组合以前尚未进行过研究。在研究此交叉路口时,我们在已建立的动力学数据结构框架(称为KDS)的背景下考虑了一个问题,该框架依赖于前进点运动信息并连续计算属性。使用KDS模型,我们为动力学鲁棒性k中心问题提出了一种近似算法,该问题是一个聚类问题,需要k个聚类,但允许一些离群点保持不聚簇;对于启发鲁棒性探索的许多实际问题,KDS模型由于点运动限制和所需的提前飞行计划,此功能不适用。我们提出了一个新的动力学数据框架,该框架允许通过传感器记录的观测值对运动点进行计算。这个新框架是计算几何学社区中第一个允许对运动点进行分析而无需先验点运动的框架之一。在此框架内的分析是基于点集运动的熵,因此效率边界是观察到的复杂度的函数,而不是最坏情况下的运动。在经验熵的更现实假设和统计独立性有限的假设下也考虑了分析。为了解决由传感器收集的海量数据集造成的存储问题,提出了在该框架内的压缩算法。此外,我们通过实验证明此框架和随附的压缩方案在实践中效果很好。为了允许检索所收集和压缩的数据,我们提出了一种时空范围搜索结构,该结构无需解压缩数据即可运行。总而言之,收集方案,压缩算法,理论分析和检索数据结构提供了实用的,理论上合理的框架,可以在其中进行运动对象的观察和分析。

著录项

  • 作者

    Friedler, Sorelle Alaina.;

  • 作者单位

    University of Maryland, College Park.;

  • 授予单位 University of Maryland, College Park.;
  • 学科 Statistics.;Computer Science.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 191 p.
  • 总页数 191
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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