Title
Multivariate visualization for atmospheric pollution
Abstract
Multivariate visualization for atmospheric pollution is a challenging research topic. Appropriate algorithms and data structures based on modern graphics hardware are used to obtain high performance. 3D visualization of the atmospheric wind field and pollutant concentrations can easily result in visual perception problems such as occlusion and cluttering even artifacts. To solve the above issues, a K-means clustering technique is used in combination with a similarity metric between streamlines based on an iterative closest point method to cluster the initial streamlines. A small set of streamlines is then selected to represent the prominent structure of the wind field. The proper illumination model and the depth sorting method reduce the inter-occlusion between streamlines and isosurfaces to show much clearer wind field pattern and important features effectively. The atmospheric pollution data set is employed to evaluate the proposed algorithm framework.
Year
DOI
Venue
2019
10.1007/s12650-019-00588-z
Journal of Visualization
Keywords
Field
DocType
Multivariate visualization, Atmospheric pollution, Occlusion, Streamline, Isosurface
Remote sensing,Isosurface,Atmospheric pollution,Classical mechanics,Multivariate visualization,Physics
Journal
Volume
Issue
ISSN
22
6
1875-8975
Citations 
PageRank 
References 
0
0.34
0
Authors
6
Name
Order
Citations
PageRank
daying lu121.05
Yao Ge200.34
Laihua Wang3182.68
Dengming Zhu45810.92
Zhaoqi Wang522533.91
Xiaoru Yuan6115770.28