Scalable Multi-variate Analytics of Seismic and Satellite-based Observational Data

  • Authors:
  • Xiaoru Yuan;He Xiao;Hanqi Guo;Peihong Guo;Wesley Kendall;Jian Huang;Yongxian Zhang

  • Affiliations:
  • Peking University;Peking University;Peking University;Peking University;University of Tennessee;University of Tennessee;China Earthquake Networks Center

  • Venue:
  • IEEE Transactions on Visualization and Computer Graphics
  • Year:
  • 2010

Quantified Score

Hi-index 0.00

Visualization

Abstract

Over the past few years, large human populations around the world have been affected by an increase in significant seismic activities. For both conducting basic scientific research and for setting critical government policies, it is crucial to be able to explore and understand seismic and geographical information obtained through all scientific instruments. In this work, we present a visual analytics system that enables explorative visualization of seismic data together with satellite-based observational data, and introduce a suite of visual analytical tools. Seismic and satellite data are integrated temporally and spatially. Users can select temporal ;and spatial ranges to zoom in on specific seismic events, as well as to inspect changes both during and after the events. Tools for designing high dimensional transfer functions have been developed to enable efficient and intuitive comprehension of the multi-modal data. Spread-sheet style comparisons are used for data drill-down as well as presentation. Comparisons between distinct seismic events are also provided for characterizing event-wise differences. Our system has been designed for scalability in terms of data size, complexity (i.e. number of modalities), and varying form factors of display environments.