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Luis E. Rodríguez, Alain Tamayo, Arturo Beltrán, Joaquín Huerta
                                            Universidad Jaume I

15th AGILE International Conference in Geographic Information Science
   Virtual Globes
    ◦ More realistic vision of the
      earth (satellite and aircraft
      imagery).
    ◦ Show geographic features,
      elevations, seafloor,
      buildings, roads.
    ◦ Allow the representation of
      different types of content:
      geometries (points,
      polygons, shapes), images,
      live content (video, sounds,
      HTML), KML.
    ◦ APIs for Java, JavaScript,
      etc.



                                      2
   Geo-sensors
    ◦ Vast network of sensors.
    ◦ Valuable and up-to date
      data.
    ◦ Big volumes of data.
   SWE (Sensor Web
    Enablement)
    ◦ Set of standards:
      Interoperability, tasking,
       formal description of
       observations and sensor
       systems.
      SOS services, interface for
       accessing and storing
       observations.




                                     3
   Big volumes of sensor data
    freely accessible.
   Data structured following
    standards.
   High temporal availability of
    data.
   Geo-located data gathered
    in places of scientific
    interest.
   Valuable for analyzing,
    exploring and visualizing.




                                    4
   Classification of sensor data for finding appropriate
    visualization methods for each class.

   Implementation of prototype to visualize SOS-
    published sensor data on a Virtual Globe.

   Integration of the SEXTANTE library to add spatial
    data analysis capabilities to the prototype.




                                                            5
     At a high level the observations can be
      classified in:
I.    Observations for which the result of a single
      observation do not vary with either spatial position
      or time.
II.   Observations for which the result of a single
      observation contains multiple values that vary with
      spatial position, time, or both.



                                                             6
   One sensor:
    ◦ One Observation:
       Textual representation, or some
        categorization of the value.
       Shapes with visual properties
        linked to the value of the
        observation.
    ◦ Multiple Observations:
       Time series charts, difference
        charts, animations.
   Multiple Sensors:
    ◦ One Observation:
       In the same way as with one
        sensor, similar representations
        for similar properties.

    ◦ Multiple Observations:
       Time series charts, scatter plot
        charts, animations.




                                           7
   Data that varies in its
    spatial position:
    ◦ Contour lines, dot
      distribution –like maps,
      analytic surfaces.
   Data that varies with time:
    ◦ Animations, time series
      charts.
   Data that varies in space
    and time:
    ◦ Dynamic analytic
      surfaces, animations.




                                  8
Requirements:
   Generic tool enabling the interaction with SOS
    compliant servers.
   To ease the access and retrieval of sensor data.
   Include data handling capabilities.
   Different visualization methods.
   Integration with SEXTANTE.
   Use the NASA World Wind for Java virtual globe.



                                                       9
   Java desktop
    application.
   Uses Eclipse
    Rich Client
    Platform (RCP).
   WWJ SDK.
   SEXTANTE 0.6
   Communication
    library




                      10
User interface
   Composed by Views
    for accessing specific
    functionality:
    ◦ Globe View
    ◦ Servers View
    ◦ Datasets View
    ◦ Data handling view.
    ◦ Rendered Objects
      View.




                             11
   OGC, SOS Filters
    (temporal, spatial,
    property-based).
   Data composition,
    and creation of new
    datasets.
   Data presentation,
    selection for
    visualization.




                          12
   Features:
    ◦ Open source geo-spatial
      analysis library.
    ◦ More than 200 algorithms.
    ◦ GUI components for
      configuring the algorithms.
    ◦ Extensible trough
      implementation of geo-
      algorithms.
   Integration using
    adapters.
    ◦ Raster Data.
    ◦ Vector Data.
    ◦ Table Data.
   Algorithm Outputs:
    ◦ Raster, Vector, Charts, Text
      /HTML, Tabular data.

                                     13
   Is provided a
    wizard for:
    ◦ Selecting the
      visualization type.
    ◦ Selecting the data
      to be visualized
    ◦ Customizing the
      visualization
      elements




                            14
   Time series charts,
    scatter plots
    charts.
   Customizable
    through a wizard.




                          15
   Animation showing
    observations.
    ◦ Animation controls
    ◦ Selection of the
      observations.
   Includes important
    values:
    ◦ maximum, minimum,
      mean.
    ◦ Sampling time.




                           16
SEXTANTE Results:
 ◦   Charts.
 ◦   HTML content
 ◦   Vectors.
 ◦   Tabular data.


Some examples:
• Histogram
• Statistics
• Buffers generated
with tree observations
(radius depends on the
observation)




                         17
   Offerings in a
    server.
    ◦ Information of
      interest, sensors.




                           18
   Visibility control,
    elimination of
    elements.
   Observations
    data inspection.




                          19
   The prototype application allows consuming,
    combining and analyzing sensor data from
    different sources.
   The visualization types help the data exploration,
    comparability and discovery of relations.
   The integration with SEXTANTE enhances the
    possibilities of performing analysis using sensor
    data.
   Future work:
    ◦ Inclusion of other visualization types.
    ◦ Improve the interaction with the visualized content.
    ◦ Work in ways of sharing the visualizations.
    ◦ Improve the use of metadata.

                                                             20
Questions?



             21

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Presentation agile

  • 1. Luis E. Rodríguez, Alain Tamayo, Arturo Beltrán, Joaquín Huerta Universidad Jaume I 15th AGILE International Conference in Geographic Information Science
  • 2. Virtual Globes ◦ More realistic vision of the earth (satellite and aircraft imagery). ◦ Show geographic features, elevations, seafloor, buildings, roads. ◦ Allow the representation of different types of content: geometries (points, polygons, shapes), images, live content (video, sounds, HTML), KML. ◦ APIs for Java, JavaScript, etc. 2
  • 3. Geo-sensors ◦ Vast network of sensors. ◦ Valuable and up-to date data. ◦ Big volumes of data.  SWE (Sensor Web Enablement) ◦ Set of standards:  Interoperability, tasking, formal description of observations and sensor systems.  SOS services, interface for accessing and storing observations. 3
  • 4. Big volumes of sensor data freely accessible.  Data structured following standards.  High temporal availability of data.  Geo-located data gathered in places of scientific interest.  Valuable for analyzing, exploring and visualizing. 4
  • 5. Classification of sensor data for finding appropriate visualization methods for each class.  Implementation of prototype to visualize SOS- published sensor data on a Virtual Globe.  Integration of the SEXTANTE library to add spatial data analysis capabilities to the prototype. 5
  • 6. At a high level the observations can be classified in: I. Observations for which the result of a single observation do not vary with either spatial position or time. II. Observations for which the result of a single observation contains multiple values that vary with spatial position, time, or both. 6
  • 7. One sensor: ◦ One Observation:  Textual representation, or some categorization of the value.  Shapes with visual properties linked to the value of the observation. ◦ Multiple Observations:  Time series charts, difference charts, animations.  Multiple Sensors: ◦ One Observation:  In the same way as with one sensor, similar representations for similar properties. ◦ Multiple Observations:  Time series charts, scatter plot charts, animations. 7
  • 8. Data that varies in its spatial position: ◦ Contour lines, dot distribution –like maps, analytic surfaces.  Data that varies with time: ◦ Animations, time series charts.  Data that varies in space and time: ◦ Dynamic analytic surfaces, animations. 8
  • 9. Requirements:  Generic tool enabling the interaction with SOS compliant servers.  To ease the access and retrieval of sensor data.  Include data handling capabilities.  Different visualization methods.  Integration with SEXTANTE.  Use the NASA World Wind for Java virtual globe. 9
  • 10. Java desktop application.  Uses Eclipse Rich Client Platform (RCP).  WWJ SDK.  SEXTANTE 0.6  Communication library 10
  • 11. User interface  Composed by Views for accessing specific functionality: ◦ Globe View ◦ Servers View ◦ Datasets View ◦ Data handling view. ◦ Rendered Objects View. 11
  • 12. OGC, SOS Filters (temporal, spatial, property-based).  Data composition, and creation of new datasets.  Data presentation, selection for visualization. 12
  • 13. Features: ◦ Open source geo-spatial analysis library. ◦ More than 200 algorithms. ◦ GUI components for configuring the algorithms. ◦ Extensible trough implementation of geo- algorithms.  Integration using adapters. ◦ Raster Data. ◦ Vector Data. ◦ Table Data.  Algorithm Outputs: ◦ Raster, Vector, Charts, Text /HTML, Tabular data. 13
  • 14. Is provided a wizard for: ◦ Selecting the visualization type. ◦ Selecting the data to be visualized ◦ Customizing the visualization elements 14
  • 15. Time series charts, scatter plots charts.  Customizable through a wizard. 15
  • 16. Animation showing observations. ◦ Animation controls ◦ Selection of the observations.  Includes important values: ◦ maximum, minimum, mean. ◦ Sampling time. 16
  • 17. SEXTANTE Results: ◦ Charts. ◦ HTML content ◦ Vectors. ◦ Tabular data. Some examples: • Histogram • Statistics • Buffers generated with tree observations (radius depends on the observation) 17
  • 18. Offerings in a server. ◦ Information of interest, sensors. 18
  • 19. Visibility control, elimination of elements.  Observations data inspection. 19
  • 20. The prototype application allows consuming, combining and analyzing sensor data from different sources.  The visualization types help the data exploration, comparability and discovery of relations.  The integration with SEXTANTE enhances the possibilities of performing analysis using sensor data.  Future work: ◦ Inclusion of other visualization types. ◦ Improve the interaction with the visualized content. ◦ Work in ways of sharing the visualizations. ◦ Improve the use of metadata. 20