VAUD: A visual analysis approach for exploring spatio-temporal urban data
Nov 2, 2018·,,,,·
0 min read
Wei Chen
Zhaosong Huang
Feiran Wu
Minfeng Zhu 朱闽峰
Huihua Guan
Ross Maciejewski
Abstract
Urban data is massive, heterogeneous, and spatio-temporal, posing a substantial challenge for visualization and analysis. In this paper, we design and implement a novel visual analytics approach, Visual Analyzer for Urban Data (VAUD), that supports the visualization, querying, and exploration of urban data. Our approach allows for cross-domain correlation from multiple data sources by leveraging spatial-temporal and social inter-connectedness features. Through our approach, the analyst is able to select, filter, aggregate across multiple data sources and extract information that would be hidden to a single data subset. To illustrate the effectiveness of our approach, we provide case studies on a real urban dataset that contains the cyber-, physical-, and socialinformation of 14 million citizens over 22 days.
Publication
IEEE Transactions on Visualization and Computer Graphics