Multilevel Visual Analysis of Aggregate Geo-Networks

Numerous patterns found in urban phenomena, such as air pollution and human mobility, can be characterized as many directed geospatial networks (geo-networks) that represent spreading processes in urban space. These geo-networks can be analyzed from multiple levels, ranging from the macro -level of...

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Veröffentlicht in:IEEE transactions on visualization and computer graphics 2024-07, Vol.30 (7), p.3135-3150
Hauptverfasser: Deng, Zikun, Chen, Shifu, Xie, Xiao, Sun, Guodao, Xu, Mingliang, Weng, Di, Wu, Yingcai
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Sprache:eng
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Zusammenfassung:Numerous patterns found in urban phenomena, such as air pollution and human mobility, can be characterized as many directed geospatial networks (geo-networks) that represent spreading processes in urban space. These geo-networks can be analyzed from multiple levels, ranging from the macro -level of summarizing all geo-networks, meso -level of comparing or summarizing parts of geo-networks, and micro -level of inspecting individual geo-networks. Most of the existing visualizations cannot support multilevel analysis well. These techniques work by: 1) showing geo-networks separately with multiple maps leads to heavy context switching costs between different maps; 2) summarizing all geo-networks into a single network can lead to the loss of individual information; 3) drawing all geo-networks onto one map might suffer from the visual scalability issue in distinguishing individual geo-networks. In this study, we propose GeoNetverse , a novel visualization technique for analyzing aggregate geo-networks from multiple levels. Inspired by metro maps, GeoNetverse balances the overview and details of the geo-networks by placing the edges shared between geo-networks in a stacked manner. To enhance the visual scalability, GeoNetverse incorporates a level-of-detail rendering, a progressive crossing minimization, and a coloring technique. A set of evaluations was conducted to evaluate GeoNetverse from multiple perspectives.
ISSN:1077-2626
1941-0506
1941-0506
DOI:10.1109/TVCG.2022.3229953