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Spatially simplified scatterplots for large raster datasets

机译:大型栅格数据集的空间简化散点图

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摘要

Scatterplots are essential tools for data exploration. However, this tool poorly scales with data-size, with overplotting and excessive delay being the main problems. Generalization methods in the attribute domain focus on visual manipulations, but do not take into account the inherent nature of information redundancy in most geographic data. These methods may also result in alterations of statistical properties of data. Recent developments in spatial statistics, particularly the formulation of effective sample size and the fast approximation of the eigenvalues of a spatial weights matrix, make it possible to assess the information content of a georeferenced data-set, which can serve as the basis for resampling such data. Experiments with both simulated data and actual remotely sensed data show that an equivalent scatterplot consisting of point clouds and fitted lines can be produced from a small subset extracted from a parent georeferenced data-set through spatial resampling. The spatially simplified data subset also maintains key statistical properties as well as the geographic coverage of the original data.
机译:散点图是进行数据探索的基本工具。但是,此工具无法很好地扩展数据大小,主要问题是过度绘图和过度延迟。属性域中的泛化方法侧重于视觉操作,但未考虑大多数地理数据中信息冗余的固有性质。这些方法也可能导致数据统计特性的改变。空间统计的最新发展,特别是有效样本量的制定以及空间权重矩阵的特征值的快速逼近,使得有可能评估地理参考数据集的信息内容,这可以作为重采样此类数据的基础。数据。使用模拟数据和实际遥感数据进行的实验均表明,可以通过空间重采样从父地理参考数据集中提取的一小部分子集中生成由点云和拟合线组成的等效散点图。空间简化的数据子集还保持关键的统计属性以及原始数据的地理覆盖范围。

著录项

  • 来源
    《地球空间信息科学学报(英文版)》 |2016年第2期|前插181-93|共14页
  • 作者单位

    Department of Geography,College of Science and Engineering,Central Michigan University,Mount Pleasant,MI,USA;

    School of Economic,Political and Policy Sciences,University of Texas at Dallas,Richardson,TX,USA;

    Department of Geography,College of Science and Engineering,Central Michigan University,Mount Pleasant,MI,USA;

  • 收录信息 中国科学引文数据库(CSCD);
  • 原文格式 PDF
  • 正文语种 eng
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