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Geographie et visualisations
     Relativité des présentations d’informations
Spatial is special
Les acteurs de l'Internet isarien

                                                                                       Nombre de sites
                                                                                           1

                                                                                           2
                                                                               Noyon
                                                                                           5

                                                                                           10
                              Saint-Just-en-Chaussée
                                                                                           20

             Beauvais                                                 Compiègne            40 et +




                                                 Pont-Ste-Maxence
                                                                                         Particuliers
                                                  Creil
                    Méru                             Senlis                              Associations
                                                                    Crépy-en-Valois
                                               Chantilly                                 Acteurs publics et
                                                                                         para-publics
    0    5     10 km                                                                     Entreprises, artisans
                                                                                         et indépendants
  Source : crawl de janvier 2005, renupi.org
Santerre-Oise
                                                                                79%

68%
              Beauvais
                                                               Compiègne
                                                                             Origine
                                                                             du lien
                                                                                          200 liens
                                                                            Destination
                                                                            du lien
                                                    Sud-Oise


                 0    5    10 km



      Source : crawl de janvier 2005, renupi.org

                                                                      73%
Spatial (and everything else) is build
première loi de la géographie de Tobler :

  chaque phénomène est relié à tous les autres, mais des
phénomènes proches dans l'espace auront tendance à être
      d'avantage liés que des phénomènes éloignés
De quoi est-on certain ?
ecision-making process.
   involves propagating
n uncertainty measures,
  scenario identification
he risk in decisions that
 mya and Hunter (2002)
ethods for reducing the
ate to the concept of
nclude the practice of
 vidual accepts the risk
  cope with it and the
ntity to another, either
tractual agreement such
 a purchased insurance
 est their risk analysis
h users, however. They      Figure 1. Impact of ambiguity and deception on success
blem of how to signify      of intelligence analysis. [After Graves (2000); reproduced
                            by permission.]
Table 1 Types of uncertainty in four models of geographic space (Source: Gahegan and Ehlers, 2000)

visualization that matches data type—scalar,                  lead to more rather than less uncertainty about the
multivariate, vector, and tensor—to visualization             data depicted.
form—discrete and continuous. For each of the eight
cells in the resulting matrix (e.g., continuous scalar        Typology of geospatial intelligence information
data, discrete multivariate data), they proposed some         uncertainty
logical representation methods, including both static
and dynamic representation forms.                             Building on the typology efforts above, three of the
  From an InfoVis rather than SciVis perspective,             current authors and two additional colleagues
Gershon (1998) took a very different approach than            propose a typology of uncertainty relevant to
Pang, focusing on kinds of “imperfection” in the              geospatial information visualization in the context of
Uncertainty sources
Accuracy/error : difference between observation and reality
Precision : exactness of measurement
Completeness : extent to which info is comprehensive
Consistency : extent to which info components agree
Lineage : conduit through which info passed
Currency/timing : temporal gaps between occurrence, info collection & use
Credibility : reliability of info source
Subjectivity : amount of interpretation or judgment included
Interrelatedness : source independence from other information
Precision         !   Precision of collection    !   resolution of satellite imagery
                      capability
Completeness      !   Composite completeness     !   images of a site may not be available on
                  !   Information completeness       a particular day, due to adverse weather
                  !   Incomplete sequence            conditions.
                                                 !   an intercepted conversation may have
                                                     words that were not clear
                                                 !   the lack of confirming information
                                                     might signal incompleteness
Consistency       !   Multi-INT Conflict         !   multiple sources may actually conflict
                  !   Model/observation          !   models of events may differ from
                      Consistency                    observations
Lineage           !   Translation                !   Machine translation is more uncertain
                  !   Transformation                 than human linguist translation
                  !   Interpretation             !   Measurements or signals may have been
                                                     transformed
                                                 !   Information that comes directly from the
                                                     collection capabilities has a different
                                                     lineage than an interpretive report
                                                     produced by an analyst
Currency/timing   !   Temporal gaps              !   Images that show new objects do not
                  !   Versioning                     show when the object first appeared
                                                 !   Time between when events occurred,
                                                     when they were reported, and when the
                                                     information is available to analysts
                                                 !   Reports may have multiple versions,
                                                     sometimes with major changes.
Credibility       !   Reliability                !   Possibility of deliberate disinformation
Table 2: Typology of uncertainty of geospatial information, (Adapted from (Thomson et al., 2004).

representing uncertain information using static                  used by Gershon (1992) who created an application
methods. Others have also emphasized the creative                that animated through increasingly blurred versions
usage of color attributes to signify uncertainty. Jiang          of data to signify fuzzy sea-surface temperature data
et al. (1995) described a technique in which hue,                (see dynamic representation section below).
lightness, and saturation are manipulated to depict                MacEachren’s initial application of transparency
Geographical Information System
Visualization in the Earth Sciences at Penn State                                              15/02/09 21:52




                                    Figure 1. The range of functions of visual methods in an
                                    idealized research sequence.

 Despite this bias, visual methods are common and perform a range of
 functions in scientific research. Figure 1 idealizes the research process as a
125




Figure 42: Visualization of music albums with cover art (see appendix A.7). (A) A table of
musical genres shows top picks by moving selected rows to the top. (B) The albums table is
sorted on increasing distance from the current mouse point in the (track, time, year)
scatter plot matrix. (C) Compound brushing of albums. Names are drawn in black if selected
176




Figure 75: A visualization of county-level election results for the State of Michigan from 1998
to 2004 (see appendix A.3). A tinted lens highlights views, using labeled arrows to reveal
coordination on the user’s selection of counties in the Votes v. Counties scatter plot.

user with a tabbed page metaphor (figure 75). Internal frames contain a tree of panels in which

views and other controls are the leaves. Metavisualizations are stored in the same XML file
(geo)Web Information System ?
présenter         révéler




                                                                                        contrainte
                          le connu        l'inconnu                           liste,



             contrainte
                                                         synthèse et        tableau
                           tester les                    présentation




                                                                                                visualisation
     visualisation        hypothèses
                                                                          scénario de
                                                                          découverte
                                       trouver de
libre



                                  nouvelles hypothèses                       cartes,




                                                                                                              libre
                                                                            graphes

                              sphère privée :                           sphère publique :
                                 réflexion                                communication
Geography et Visualisations

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Geography et Visualisations

  • 1. Geographie et visualisations Relativité des présentations d’informations
  • 3. Les acteurs de l'Internet isarien Nombre de sites 1 2 Noyon 5 10 Saint-Just-en-Chaussée 20 Beauvais Compiègne 40 et + Pont-Ste-Maxence Particuliers Creil Méru Senlis Associations Crépy-en-Valois Chantilly Acteurs publics et para-publics 0 5 10 km Entreprises, artisans et indépendants Source : crawl de janvier 2005, renupi.org
  • 4. Santerre-Oise 79% 68% Beauvais Compiègne Origine du lien 200 liens Destination du lien Sud-Oise 0 5 10 km Source : crawl de janvier 2005, renupi.org 73%
  • 5.
  • 6.
  • 7.
  • 8. Spatial (and everything else) is build
  • 9. première loi de la géographie de Tobler : chaque phénomène est relié à tous les autres, mais des phénomènes proches dans l'espace auront tendance à être d'avantage liés que des phénomènes éloignés
  • 10. De quoi est-on certain ?
  • 11.
  • 12. ecision-making process. involves propagating n uncertainty measures, scenario identification he risk in decisions that mya and Hunter (2002) ethods for reducing the ate to the concept of nclude the practice of vidual accepts the risk cope with it and the ntity to another, either tractual agreement such a purchased insurance est their risk analysis h users, however. They Figure 1. Impact of ambiguity and deception on success blem of how to signify of intelligence analysis. [After Graves (2000); reproduced by permission.]
  • 13. Table 1 Types of uncertainty in four models of geographic space (Source: Gahegan and Ehlers, 2000) visualization that matches data type—scalar, lead to more rather than less uncertainty about the multivariate, vector, and tensor—to visualization data depicted. form—discrete and continuous. For each of the eight cells in the resulting matrix (e.g., continuous scalar Typology of geospatial intelligence information data, discrete multivariate data), they proposed some uncertainty logical representation methods, including both static and dynamic representation forms. Building on the typology efforts above, three of the From an InfoVis rather than SciVis perspective, current authors and two additional colleagues Gershon (1998) took a very different approach than propose a typology of uncertainty relevant to Pang, focusing on kinds of “imperfection” in the geospatial information visualization in the context of
  • 14. Uncertainty sources Accuracy/error : difference between observation and reality Precision : exactness of measurement Completeness : extent to which info is comprehensive Consistency : extent to which info components agree Lineage : conduit through which info passed Currency/timing : temporal gaps between occurrence, info collection & use Credibility : reliability of info source Subjectivity : amount of interpretation or judgment included Interrelatedness : source independence from other information
  • 15. Precision ! Precision of collection ! resolution of satellite imagery capability Completeness ! Composite completeness ! images of a site may not be available on ! Information completeness a particular day, due to adverse weather ! Incomplete sequence conditions. ! an intercepted conversation may have words that were not clear ! the lack of confirming information might signal incompleteness Consistency ! Multi-INT Conflict ! multiple sources may actually conflict ! Model/observation ! models of events may differ from Consistency observations Lineage ! Translation ! Machine translation is more uncertain ! Transformation than human linguist translation ! Interpretation ! Measurements or signals may have been transformed ! Information that comes directly from the collection capabilities has a different lineage than an interpretive report produced by an analyst Currency/timing ! Temporal gaps ! Images that show new objects do not ! Versioning show when the object first appeared ! Time between when events occurred, when they were reported, and when the information is available to analysts ! Reports may have multiple versions, sometimes with major changes. Credibility ! Reliability ! Possibility of deliberate disinformation
  • 16. Table 2: Typology of uncertainty of geospatial information, (Adapted from (Thomson et al., 2004). representing uncertain information using static used by Gershon (1992) who created an application methods. Others have also emphasized the creative that animated through increasingly blurred versions usage of color attributes to signify uncertainty. Jiang of data to signify fuzzy sea-surface temperature data et al. (1995) described a technique in which hue, (see dynamic representation section below). lightness, and saturation are manipulated to depict MacEachren’s initial application of transparency
  • 18.
  • 19.
  • 20. Visualization in the Earth Sciences at Penn State 15/02/09 21:52 Figure 1. The range of functions of visual methods in an idealized research sequence. Despite this bias, visual methods are common and perform a range of functions in scientific research. Figure 1 idealizes the research process as a
  • 21.
  • 22.
  • 23.
  • 24. 125 Figure 42: Visualization of music albums with cover art (see appendix A.7). (A) A table of musical genres shows top picks by moving selected rows to the top. (B) The albums table is sorted on increasing distance from the current mouse point in the (track, time, year) scatter plot matrix. (C) Compound brushing of albums. Names are drawn in black if selected
  • 25. 176 Figure 75: A visualization of county-level election results for the State of Michigan from 1998 to 2004 (see appendix A.3). A tinted lens highlights views, using labeled arrows to reveal coordination on the user’s selection of counties in the Votes v. Counties scatter plot. user with a tabbed page metaphor (figure 75). Internal frames contain a tree of panels in which views and other controls are the leaves. Metavisualizations are stored in the same XML file
  • 27. présenter révéler contrainte le connu l'inconnu liste, contrainte synthèse et tableau tester les présentation visualisation visualisation hypothèses scénario de découverte trouver de libre nouvelles hypothèses cartes, libre graphes sphère privée : sphère publique : réflexion communication

Editor's Notes

  1. Données spatiales, ancrés dans votre espace propre, dans du tangible, dans une tradition Première confrontation avec un territoire/espace révélé
  2. Ce n’est pas un espace neutre de stationnarité et d’isotropie Statistiques seules n’y fonctionnent pas
  3. De rien, multiples incertitudes sur nos données provenant de diverses sources erreurs -> acquisition ? Exploration ? Modèle ?
  4. D’ailleurs d’où proviennent nos données ?
  5. La valeur d’un syst`eme d’information d ́epend des spatialisations qui lui donnent acc`es et de la qualit ́e du mod`ele qui le soutient. A` l’ ́epoque du tout num ́erique et des bases de donn ́ees, on a une certaine habitude des syst`emes d’information. Par exemple, les biblioth`eques, que nous avons d ́ej`a d ́ecrites au d ́ebut de ce chapitre, sont un syst`eme d’information dont les ouvrages forment les donn ́ees et dont les classifications forment les mod`eles. Les acc`es sous forme de liste de documents y sont monnaie courante et les utilisateurs y sont rompus. Il en va de mˆeme pour le Web, un autre syst`eme que l’on consid`ere souvent comme une forme de biblioth`eque Ghitalla et al. (2005) mais dont la structure r ́esiste encore aux tentatives de plus en plus fortes d’objectivation dont il fait l’obje