基于空间自相关的地理点数据可视化提取

Zhiguang Zhou, Xinlong Zhang, Zhendong Yang, Yuanyuan Chen, Yuhua Liu, Jin Wen, Binjie Chen, Ying Zhao, W. Chen
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引用次数: 7

摘要

散点图通常用于地理点数据集的可视化,但由于数据量的增加,散点图常常存在透支问题。在考虑点的空间密度的情况下,提出了多种采样策略来减少透支和视觉杂波。然而,与点相关的信息属性在地理数据集的探索中也起着重要的作用。本文提出了一种基于属性的抽象方法来简化大规模地理点的杂乱可视化。利用空间自相关性度量局部区域内点的属性关系,设计了一种基于属性的采样模型来生成点子集,以保持原始地理点的密度和属性特征。实现了一套可视化设计和用户友好的交互,使用户能够捕捉地理点的空间分布,更深入地了解局部区域的属性特征。基于现实世界数据集的案例研究和定量比较进一步证明了我们的方法在大规模地理点数据集的抽象和探索方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visual Abstraction of Geographical Point Data with Spatial Autocorrelations
Scatterplots are always employed to visualize geographical point datasets, which often suffer from an overdraw problem due to the increase of data sizes. A variety of sampling strategies have been proposed to reduce overdraw and visual clutter with the spatial densities of points taken into account. However, informative attributes associated with the points also play significant roles in the exploration of geographical datasets. In this paper, we propose an attribute-based abstraction method to simplify the cluttered visualization of large-scale geographical points. Spatial autocorrelations are utilized to measure the attribute relationships of points in local areas, and a novel attribute-based sampling model is designed to generate a subset of points to preserve both density and attribute characteristics of original geographical points. A set of visual designs and user-friendly interactions are implemented, enabling users to capture the spatial distribution of geographical points and get deeper insights into the attribute features across local areas. Case studies and quantitative comparisons based on the real-world datasets further demonstrate the effectiveness of our method in the abstraction and exploration of large-scale geographical point datasets.
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