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Interactive visual cluster detection in large geospatial datasets based on dynamic density volume visualization

机译:基于动态密度体积可视化的大型地理空间数据集中的交互式视觉集群检测

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摘要

The emerging spatial big data (e.g. detailed spatial trajectories, geo-referenced social media data) provide tremendous opportunities for GIScientists and geographers. However, their large volume also poses challenges to existing spatial data analytical techniques (including visual analytical techniques). This article presents an interactive visual approach to detect clusters from those emerging data sets based on dynamic density volume visualization in a three-dimensional space (two spatial dimensions plus a third temporal or thematic dimension of interest). Cluster can be visually discovered through dynamic adjustment of density to colour/opacity mapping and extracted through flexible selection tools. The approach was tested on a large simulated data-set and a spatial trajectory data-set. The results show that the approach can overcome the visual clotting problem in traditional visualization tools caused by large data volume and facilitate the involvement of domain knowledge in analysis. It can effectively support visual cluster detection in the emerging large geospatial data sets.
机译:新兴的空间大数据(例如详细的空间轨迹,以地理为参考的社交媒体数据)为GIS科学家和地理学家提供了巨大的机会。但是,其庞大的数量也给现有的空间数据分析技术(包括视觉分析技术)带来了挑战。本文提出了一种交互式的可视化方法,可以基于三维空间(两个空间维加感兴趣的第三时间或主题维)中的动态密度体积可视化,从那些新兴数据集中检测聚类。通过动态调整密度以适应颜色/不透明度映射,可以直观地发现簇,并通过灵活的选择工具提取簇。该方法已在大型模拟数据集和空间轨迹数据集上进行了测试。结果表明,该方法可以克服传统可视化工具中因数据量大而导致的视觉凝结问题,并有助于领域知识参与分析。它可以有效地支持新兴的大型地理空间数据集中的视觉聚类检测。

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