SlideShare une entreprise Scribd logo
1  sur  20
Ontology as Knowledge Base
             for Spatial Data Harmonization




                Otakar Cerba, Karel Charvat

    University of West Bohemia, Plzen, Czech Republic
  Help Service Remote Sensing, Benesov, Czech Republic




26.06.2012                INSPIRE 2012                   1
Objectives

 
     Spatial data harmonization – basics
 
     Domain ontology – theory & essential principles
 
     Harmonization ontology – components
 
     Example of harmonization based on ontology
 
     Conclusion




26.06.2012                 INSPIRE 2012                2
Spatial data harmonization

 
     Activity for elimination or reduction of
     heterogeneities of various properties of spatial
     data to support interoperability
 
     The elimination of the aspects of spatial data
     heterogeneity cannot be based on a creation of some
     uniform rules and data models, because, there are
     too many subjects with individual requirements –
     formats, precision, reference systems, terminology...
 
     The harmonization processes should be divided into
     small and simple substeps

26.06.2012                 INSPIRE 2012                      3
Conditions of successful harmonization

 
     Theoretical knowledge (domain, geomatic, IT...)
 
     Understandable user requirements
 
     Cooperation of experts
 
     Sequence of harmonization substeps
 
     Multi-level data description




26.06.2012                   INSPIRE 2012              4
Why to harmonize

 
     To enable a sharing, combining and publishing of
     data
 
     To re-use existing sources
 
     To improve data quality
 
     To use web services and other automatic tools
     (SaaS)
 
     To keep data interoperability (it's cool!)
                                             All reasons
 
     To increase the number of stakeholders are strongly
 
     To meet legislation requirements       interconnect
                                                  ed
26.06.2012                   INSPIRE 2012                  5
Ontology – Theory

 
     To improve communication between all participating
     subjects (cartographers, users, IT experts, domain
     experts...)

                                              … exactly defined
    … clearly
                                                  syntax
semantically defined
    concepts              ...formal and
                       formalized explicit     … precise list of
       … directly        specification of          terms
       expressed
                              sharing
                       conceptualization
 … suitable for re-                          … way how a human
       use                                   understands the world
26.06.2012                    INSPIRE 2012   and how it expresses6
Ontology – Fundamental components

 
     Class (Concept) – particular parts of domain
     structured by is-a relation
 
     Individual – particular parts of domain that cannot be
     divided
 
     Property – detail description of specifics of classes or
     individuals; object & data type properties
 
     Axiom – logical constructs between elements of
     ontology (e.g. closure axiom, cover axiom)
 
     Annotation – metadata, description, explanation

26.06.2012                  INSPIRE 2012                        7
Ontology: Classes & Properties


             Classes                        Properties




26.06.2012                   INSPIRE 2012                8
Role of ontology in harmonization process

   Heterogeneous
        Data



        Data
      Description
                         Harmonization      Harmonized
                            Tool(s)            Data
     Knowledge
    & Experience                               To
                                           formalize
                                              and
        Rules &                             process
                           Ontology
        Methods                              extra
26.06.2012                INSPIRE 2012    informatio     9
                                                n
Data description in ontology




26.06.2012              INSPIRE 2012        10
Proposal of harmonization substeps




                                             Before
After                                        reasoning
reasoning




26.06.2012                 INSPIRE 2012             11
Inferred Ontology – Data Description




26.06.2012                  INSPIRE 2012            12
LU/LC Legend mapping ontology




26.06.2012              INSPIRE 2012         13
LU/LC Legend mapping ontology – parameters




26.06.2012           INSPIRE 2012               14
LU/LC Legend mapping ontology – example
                                   Reasoning




                                                                       Equivalent
                                                                       classes



                                          Inferred (new) information


             Asserted (original)
26.06.2012      information           INSPIRE 2012                        15
LU/LC Legend mapping ontology




26.06.2012              INSPIRE 2012         16
Harmonization in ETL tool




    Input file   Replication    Transformation   Changing       Outputs
    (CLC)
26.06.2012        to more         to new data
                               INSPIRE 2012      attribute   (PELCOM etc.) 17
                  outputs           models        values
Results of LULC data harmonization




                                                         PELCOM




CLC

26.06.2012                        INSPIREPELCOM
                                          2012                    18
                      After manual final harmonization
Conclusion

 
     Harmonization is not only technical process but also
     semantic...
 
     It is necessary to consider a suitability of data sets
     from the view of
      −      Data completeness
      −      Data quality (depend for purposes of result)
      −      Semantics of the data sets and classification
             systems
 
     Ontologies enable knowledge transfer and better
     communication (including information sharing)
26.06.2012                       INSPIRE 2012                 19
Thank you for your attention
                   and questions

                     cerba@kma.zcu.cz
                      charvat@ccss.cz




26.06.2012              INSPIRE 2012        20

Contenu connexe

Similaire à Presentation charvat cerba

My fire st petersburg 27 june 2012 (d hladky)
My fire st petersburg 27 june 2012 (d hladky)My fire st petersburg 27 june 2012 (d hladky)
My fire st petersburg 27 june 2012 (d hladky)
AI4BD GmbH
 
An Explanation Framework for Interpretable Credit Scoring
An Explanation Framework for Interpretable Credit Scoring An Explanation Framework for Interpretable Credit Scoring
An Explanation Framework for Interpretable Credit Scoring
gerogepatton
 

Similaire à Presentation charvat cerba (20)

Towards the Analysis & Prediction of Complex System Behaviour in SAPERE
Towards the Analysis & Prediction of Complex System Behaviour in SAPERETowards the Analysis & Prediction of Complex System Behaviour in SAPERE
Towards the Analysis & Prediction of Complex System Behaviour in SAPERE
 
Towards Ontology Development Based on Relational Database
Towards Ontology Development Based on Relational DatabaseTowards Ontology Development Based on Relational Database
Towards Ontology Development Based on Relational Database
 
Presentation at MTSR 2012
Presentation at MTSR 2012Presentation at MTSR 2012
Presentation at MTSR 2012
 
FInES, ENSEMBLE and A Scientific Perspective For Enterprise Interoperability
FInES, ENSEMBLE and A Scientific Perspective For Enterprise InteroperabilityFInES, ENSEMBLE and A Scientific Perspective For Enterprise Interoperability
FInES, ENSEMBLE and A Scientific Perspective For Enterprise Interoperability
 
O ops concepts
O ops conceptsO ops concepts
O ops concepts
 
Building intelligent systems (that can explain)
Building intelligent systems (that can explain)Building intelligent systems (that can explain)
Building intelligent systems (that can explain)
 
STI Summit 2011 - Linked Data & Ontologies
STI Summit 2011 - Linked Data & OntologiesSTI Summit 2011 - Linked Data & Ontologies
STI Summit 2011 - Linked Data & Ontologies
 
Resource Description Framework Approach to Data Publication and Federation
Resource Description Framework Approach to Data Publication and FederationResource Description Framework Approach to Data Publication and Federation
Resource Description Framework Approach to Data Publication and Federation
 
Pragmatic Approaches to the Semantic Web
Pragmatic Approaches to the Semantic WebPragmatic Approaches to the Semantic Web
Pragmatic Approaches to the Semantic Web
 
Csun pse-006-presentation-2013 v2.1
Csun pse-006-presentation-2013 v2.1Csun pse-006-presentation-2013 v2.1
Csun pse-006-presentation-2013 v2.1
 
Csun pse-006-presentation-2013 v2.1
Csun pse-006-presentation-2013 v2.1Csun pse-006-presentation-2013 v2.1
Csun pse-006-presentation-2013 v2.1
 
Fact forge aimsa2012
Fact forge aimsa2012Fact forge aimsa2012
Fact forge aimsa2012
 
Introduction to the Semantic Web
Introduction to the Semantic WebIntroduction to the Semantic Web
Introduction to the Semantic Web
 
My fire st petersburg 27 june 2012 (d hladky)
My fire st petersburg 27 june 2012 (d hladky)My fire st petersburg 27 june 2012 (d hladky)
My fire st petersburg 27 june 2012 (d hladky)
 
Metadata : Concentrating on the data, not on the scheme
Metadata : Concentrating on the data, not on the schemeMetadata : Concentrating on the data, not on the scheme
Metadata : Concentrating on the data, not on the scheme
 
SURFconext: a next generation collaboration infrastructure across institution...
SURFconext: a next generation collaboration infrastructure across institution...SURFconext: a next generation collaboration infrastructure across institution...
SURFconext: a next generation collaboration infrastructure across institution...
 
Bridging the gap between the semantic web and big data: answering SPARQL que...
Bridging the gap between the semantic web and big data:  answering SPARQL que...Bridging the gap between the semantic web and big data:  answering SPARQL que...
Bridging the gap between the semantic web and big data: answering SPARQL que...
 
Csun pse-006-presentation-2013 v2.1
Csun pse-006-presentation-2013 v2.1Csun pse-006-presentation-2013 v2.1
Csun pse-006-presentation-2013 v2.1
 
Large Graph Mining
Large Graph MiningLarge Graph Mining
Large Graph Mining
 
An Explanation Framework for Interpretable Credit Scoring
An Explanation Framework for Interpretable Credit Scoring An Explanation Framework for Interpretable Credit Scoring
An Explanation Framework for Interpretable Credit Scoring
 

Plus de Karel Charvat

Foodie Geoss aip 8 presentation new
Foodie Geoss aip 8 presentation newFoodie Geoss aip 8 presentation new
Foodie Geoss aip 8 presentation new
Karel Charvat
 
Ict for a sustainable agriculture – public support needs
Ict for a sustainable agriculture – public support needsIct for a sustainable agriculture – public support needs
Ict for a sustainable agriculture – public support needs
Karel Charvat
 
Plan4 business vison for suistenable future final
Plan4 business   vison for suistenable future finalPlan4 business   vison for suistenable future final
Plan4 business vison for suistenable future final
Karel Charvat
 
Invitation for P4b end user-ws
Invitation for P4b end user-wsInvitation for P4b end user-ws
Invitation for P4b end user-ws
Karel Charvat
 
The habitats approach to build the inspire infrastructure
The habitats approach to build the inspire infrastructureThe habitats approach to build the inspire infrastructure
The habitats approach to build the inspire infrastructure
Karel Charvat
 
Plan4business technical solution
Plan4business technical solutionPlan4business technical solution
Plan4business technical solution
Karel Charvat
 
Smart opendata ISESS 2013
Smart opendata ISESS 2013Smart opendata ISESS 2013
Smart opendata ISESS 2013
Karel Charvat
 
Inspire in pocket dresden 2
Inspire in  pocket dresden 2Inspire in  pocket dresden 2
Inspire in pocket dresden 2
Karel Charvat
 
Gi2013 presentation mildorf+team_plan4_business_dresden
Gi2013 presentation mildorf+team_plan4_business_dresdenGi2013 presentation mildorf+team_plan4_business_dresden
Gi2013 presentation mildorf+team_plan4_business_dresden
Karel Charvat
 
Gi2013 vohnout&team-enviro grids
Gi2013 vohnout&team-enviro gridsGi2013 vohnout&team-enviro grids
Gi2013 vohnout&team-enviro grids
Karel Charvat
 

Plus de Karel Charvat (20)

Process Model
Process ModelProcess Model
Process Model
 
Foodie Geoss aip 8 presentation new
Foodie Geoss aip 8 presentation newFoodie Geoss aip 8 presentation new
Foodie Geoss aip 8 presentation new
 
ISAF 2015 Farmtelemetry
ISAF 2015 FarmtelemetryISAF 2015 Farmtelemetry
ISAF 2015 Farmtelemetry
 
Envirofi FOODIE Data model
Envirofi FOODIE Data modelEnvirofi FOODIE Data model
Envirofi FOODIE Data model
 
Pomodore@1
Pomodore@1Pomodore@1
Pomodore@1
 
Hive OS
Hive OSHive OS
Hive OS
 
Ict for a sustainable agriculture – public support needs
Ict for a sustainable agriculture – public support needsIct for a sustainable agriculture – public support needs
Ict for a sustainable agriculture – public support needs
 
Aplication of remote sensing in Foodie
Aplication of remote sensing in FoodieAplication of remote sensing in Foodie
Aplication of remote sensing in Foodie
 
Plan4 business vison for suistenable future final
Plan4 business   vison for suistenable future finalPlan4 business   vison for suistenable future final
Plan4 business vison for suistenable future final
 
Centralab workshop
Centralab workshopCentralab workshop
Centralab workshop
 
Invitation for P4b end user-ws
Invitation for P4b end user-wsInvitation for P4b end user-ws
Invitation for P4b end user-ws
 
The habitats approach to build the inspire infrastructure
The habitats approach to build the inspire infrastructureThe habitats approach to build the inspire infrastructure
The habitats approach to build the inspire infrastructure
 
Plan4business technical solution
Plan4business technical solutionPlan4business technical solution
Plan4business technical solution
 
Smart opendata ISESS 2013
Smart opendata ISESS 2013Smart opendata ISESS 2013
Smart opendata ISESS 2013
 
Statement club of ossiach
Statement club of ossiachStatement club of ossiach
Statement club of ossiach
 
Inspire in pocket dresden 2
Inspire in  pocket dresden 2Inspire in  pocket dresden 2
Inspire in pocket dresden 2
 
Agrixchange dresden
Agrixchange dresdenAgrixchange dresden
Agrixchange dresden
 
Gi2013 presentation mildorf+team_plan4_business_dresden
Gi2013 presentation mildorf+team_plan4_business_dresdenGi2013 presentation mildorf+team_plan4_business_dresden
Gi2013 presentation mildorf+team_plan4_business_dresden
 
Gi2013 vohnout&team-enviro grids
Gi2013 vohnout&team-enviro gridsGi2013 vohnout&team-enviro grids
Gi2013 vohnout&team-enviro grids
 
Apps4 europe 2
Apps4 europe 2Apps4 europe 2
Apps4 europe 2
 

Dernier

Salient Features of India constitution especially power and functions
Salient Features of India constitution especially power and functionsSalient Features of India constitution especially power and functions
Salient Features of India constitution especially power and functions
KarakKing
 

Dernier (20)

Micro-Scholarship, What it is, How can it help me.pdf
Micro-Scholarship, What it is, How can it help me.pdfMicro-Scholarship, What it is, How can it help me.pdf
Micro-Scholarship, What it is, How can it help me.pdf
 
On National Teacher Day, meet the 2024-25 Kenan Fellows
On National Teacher Day, meet the 2024-25 Kenan FellowsOn National Teacher Day, meet the 2024-25 Kenan Fellows
On National Teacher Day, meet the 2024-25 Kenan Fellows
 
Fostering Friendships - Enhancing Social Bonds in the Classroom
Fostering Friendships - Enhancing Social Bonds  in the ClassroomFostering Friendships - Enhancing Social Bonds  in the Classroom
Fostering Friendships - Enhancing Social Bonds in the Classroom
 
How to Manage Global Discount in Odoo 17 POS
How to Manage Global Discount in Odoo 17 POSHow to Manage Global Discount in Odoo 17 POS
How to Manage Global Discount in Odoo 17 POS
 
Beyond_Borders_Understanding_Anime_and_Manga_Fandom_A_Comprehensive_Audience_...
Beyond_Borders_Understanding_Anime_and_Manga_Fandom_A_Comprehensive_Audience_...Beyond_Borders_Understanding_Anime_and_Manga_Fandom_A_Comprehensive_Audience_...
Beyond_Borders_Understanding_Anime_and_Manga_Fandom_A_Comprehensive_Audience_...
 
Basic Civil Engineering first year Notes- Chapter 4 Building.pptx
Basic Civil Engineering first year Notes- Chapter 4 Building.pptxBasic Civil Engineering first year Notes- Chapter 4 Building.pptx
Basic Civil Engineering first year Notes- Chapter 4 Building.pptx
 
UGC NET Paper 1 Mathematical Reasoning & Aptitude.pdf
UGC NET Paper 1 Mathematical Reasoning & Aptitude.pdfUGC NET Paper 1 Mathematical Reasoning & Aptitude.pdf
UGC NET Paper 1 Mathematical Reasoning & Aptitude.pdf
 
How to Give a Domain for a Field in Odoo 17
How to Give a Domain for a Field in Odoo 17How to Give a Domain for a Field in Odoo 17
How to Give a Domain for a Field in Odoo 17
 
Exploring_the_Narrative_Style_of_Amitav_Ghoshs_Gun_Island.pptx
Exploring_the_Narrative_Style_of_Amitav_Ghoshs_Gun_Island.pptxExploring_the_Narrative_Style_of_Amitav_Ghoshs_Gun_Island.pptx
Exploring_the_Narrative_Style_of_Amitav_Ghoshs_Gun_Island.pptx
 
Sociology 101 Demonstration of Learning Exhibit
Sociology 101 Demonstration of Learning ExhibitSociology 101 Demonstration of Learning Exhibit
Sociology 101 Demonstration of Learning Exhibit
 
FSB Advising Checklist - Orientation 2024
FSB Advising Checklist - Orientation 2024FSB Advising Checklist - Orientation 2024
FSB Advising Checklist - Orientation 2024
 
Mehran University Newsletter Vol-X, Issue-I, 2024
Mehran University Newsletter Vol-X, Issue-I, 2024Mehran University Newsletter Vol-X, Issue-I, 2024
Mehran University Newsletter Vol-X, Issue-I, 2024
 
Sensory_Experience_and_Emotional_Resonance_in_Gabriel_Okaras_The_Piano_and_Th...
Sensory_Experience_and_Emotional_Resonance_in_Gabriel_Okaras_The_Piano_and_Th...Sensory_Experience_and_Emotional_Resonance_in_Gabriel_Okaras_The_Piano_and_Th...
Sensory_Experience_and_Emotional_Resonance_in_Gabriel_Okaras_The_Piano_and_Th...
 
Salient Features of India constitution especially power and functions
Salient Features of India constitution especially power and functionsSalient Features of India constitution especially power and functions
Salient Features of India constitution especially power and functions
 
Google Gemini An AI Revolution in Education.pptx
Google Gemini An AI Revolution in Education.pptxGoogle Gemini An AI Revolution in Education.pptx
Google Gemini An AI Revolution in Education.pptx
 
Application orientated numerical on hev.ppt
Application orientated numerical on hev.pptApplication orientated numerical on hev.ppt
Application orientated numerical on hev.ppt
 
NO1 Top Black Magic Specialist In Lahore Black magic In Pakistan Kala Ilam Ex...
NO1 Top Black Magic Specialist In Lahore Black magic In Pakistan Kala Ilam Ex...NO1 Top Black Magic Specialist In Lahore Black magic In Pakistan Kala Ilam Ex...
NO1 Top Black Magic Specialist In Lahore Black magic In Pakistan Kala Ilam Ex...
 
General Principles of Intellectual Property: Concepts of Intellectual Proper...
General Principles of Intellectual Property: Concepts of Intellectual  Proper...General Principles of Intellectual Property: Concepts of Intellectual  Proper...
General Principles of Intellectual Property: Concepts of Intellectual Proper...
 
Plant propagation: Sexual and Asexual propapagation.pptx
Plant propagation: Sexual and Asexual propapagation.pptxPlant propagation: Sexual and Asexual propapagation.pptx
Plant propagation: Sexual and Asexual propapagation.pptx
 
How to Create and Manage Wizard in Odoo 17
How to Create and Manage Wizard in Odoo 17How to Create and Manage Wizard in Odoo 17
How to Create and Manage Wizard in Odoo 17
 

Presentation charvat cerba

  • 1. Ontology as Knowledge Base for Spatial Data Harmonization Otakar Cerba, Karel Charvat University of West Bohemia, Plzen, Czech Republic Help Service Remote Sensing, Benesov, Czech Republic 26.06.2012 INSPIRE 2012 1
  • 2. Objectives  Spatial data harmonization – basics  Domain ontology – theory & essential principles  Harmonization ontology – components  Example of harmonization based on ontology  Conclusion 26.06.2012 INSPIRE 2012 2
  • 3. Spatial data harmonization  Activity for elimination or reduction of heterogeneities of various properties of spatial data to support interoperability  The elimination of the aspects of spatial data heterogeneity cannot be based on a creation of some uniform rules and data models, because, there are too many subjects with individual requirements – formats, precision, reference systems, terminology...  The harmonization processes should be divided into small and simple substeps 26.06.2012 INSPIRE 2012 3
  • 4. Conditions of successful harmonization  Theoretical knowledge (domain, geomatic, IT...)  Understandable user requirements  Cooperation of experts  Sequence of harmonization substeps  Multi-level data description 26.06.2012 INSPIRE 2012 4
  • 5. Why to harmonize  To enable a sharing, combining and publishing of data  To re-use existing sources  To improve data quality  To use web services and other automatic tools (SaaS)  To keep data interoperability (it's cool!) All reasons  To increase the number of stakeholders are strongly  To meet legislation requirements interconnect ed 26.06.2012 INSPIRE 2012 5
  • 6. Ontology – Theory  To improve communication between all participating subjects (cartographers, users, IT experts, domain experts...) … exactly defined … clearly syntax semantically defined concepts ...formal and formalized explicit … precise list of … directly specification of terms expressed sharing conceptualization … suitable for re- … way how a human use understands the world 26.06.2012 INSPIRE 2012 and how it expresses6
  • 7. Ontology – Fundamental components  Class (Concept) – particular parts of domain structured by is-a relation  Individual – particular parts of domain that cannot be divided  Property – detail description of specifics of classes or individuals; object & data type properties  Axiom – logical constructs between elements of ontology (e.g. closure axiom, cover axiom)  Annotation – metadata, description, explanation 26.06.2012 INSPIRE 2012 7
  • 8. Ontology: Classes & Properties Classes Properties 26.06.2012 INSPIRE 2012 8
  • 9. Role of ontology in harmonization process Heterogeneous Data Data Description Harmonization Harmonized Tool(s) Data Knowledge & Experience To formalize and Rules & process Ontology Methods extra 26.06.2012 INSPIRE 2012 informatio 9 n
  • 10. Data description in ontology 26.06.2012 INSPIRE 2012 10
  • 11. Proposal of harmonization substeps Before After reasoning reasoning 26.06.2012 INSPIRE 2012 11
  • 12. Inferred Ontology – Data Description 26.06.2012 INSPIRE 2012 12
  • 13. LU/LC Legend mapping ontology 26.06.2012 INSPIRE 2012 13
  • 14. LU/LC Legend mapping ontology – parameters 26.06.2012 INSPIRE 2012 14
  • 15. LU/LC Legend mapping ontology – example Reasoning Equivalent classes Inferred (new) information Asserted (original) 26.06.2012 information INSPIRE 2012 15
  • 16. LU/LC Legend mapping ontology 26.06.2012 INSPIRE 2012 16
  • 17. Harmonization in ETL tool Input file Replication Transformation Changing Outputs (CLC) 26.06.2012 to more to new data INSPIRE 2012 attribute (PELCOM etc.) 17 outputs models values
  • 18. Results of LULC data harmonization PELCOM CLC 26.06.2012 INSPIREPELCOM 2012 18 After manual final harmonization
  • 19. Conclusion  Harmonization is not only technical process but also semantic...  It is necessary to consider a suitability of data sets from the view of − Data completeness − Data quality (depend for purposes of result) − Semantics of the data sets and classification systems  Ontologies enable knowledge transfer and better communication (including information sharing) 26.06.2012 INSPIRE 2012 19
  • 20. Thank you for your attention and questions cerba@kma.zcu.cz charvat@ccss.cz 26.06.2012 INSPIRE 2012 20