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Abu Dhabi Island: Analysis of Development and
Vegetation Change Using Remote Sensing
(1972-2000)



           EOGC International Conference
                          May 28, 2009
                         Chengdu, China


Abdulhakim Abdi & Anand Nandipati
Erasmus Mundus Masters Programme in Geospatial Technologies
ISEGI - IFGI - UJI, 2008 - 2010
2


 Contents
• Introduction
• Data
• Methodology
• Analysis & Visualization
• Conclusion `


                             2
Objective
Use of remote sensing methods and
GIS tools to study the change in the
landscape of Abu Dhabi Island and
surrounding areas brought on by
development.

                                       3
Introduction
The United Arab Emirates’ GDP in 1972 was $1.6 billion
and swelled to $   103 in 2004 (UAE-NMC, 2008).
The country had undergone tremendous change over since
it got independence in 1971.


Several programs have been implemented to “beautify”
the desert landscape and included heavy afforestation and
agricultural projects.

                                                            4
Study Area




                      United Arab Emirates

Source: Google Maps




                                             5
Study Area
 1960




             6
Study Area
 1970




             7
Study Area
Present




             8
Data
                                                                    Landsat 7
                                                             WRS-2, Path 160, Row 043
                                                                   2000-08-23
                                                            2000 Landsat ETM+




 1972 Landsat MSS
        Landsat 1
 WRS-1, Path 172, Row 043
       1972-11-29
                   Source: Global Land Cover Facility, UMD, Maryland, USA               9
Data




Landsat ETM+ Imagery from November 1, 2008 with Scan Line Corrector-OFF
                                                                          10
Methodology
                   Image
                Classification

Definition of      Feature
                                                      Post-         Accuracy
 Mapping        Identification   Classification
                                                  Classification   Assessment
 Approach       and Selection




                                                                                11
Image
          Classification

Definition of      Feature
                                                      Post-         Accuracy
 Mapping        Identification   Classification
                                                  Classification   Assessment
 Approach       and Selection




                                                                                12
Mapping Approach

 Minimum Mapping Unit (MMU) : Pixel
                                                                       Pixel
Satellite        Sensor           Spectral Range      Bands Used
                                                                     Resolution
  L1        MSS multi-spectral      0.5 - 1.1 µm       1, 2, 3, 4    60 meter
               ETM+ multi-         0.450 – 1.175
  L7                                                 1, 2, 3, 4, 5   30 meter
                 spectral               µm
                   Satellites and sensors used for the study


We selected set of contiguous pixels for our classification

Softwares used: ENVI, IDRISI Andes & ArcGIS

                                                                                  13
Image
                Classification

Definition of        Feature
                                                          Post-         Accuracy
 Mapping        Identification and   Classification
                                                      Classification   Assessment
 Approach           Selection




                                                                                    14
NDVI




Map showing NDVI based on 2000 Landsat 7 ETM+
                                                       15
Sample Selection


           Land
           Vegetation
           Shallow
           Water
           Deep
           Water




                     16
Image
                Classification

Definition of      Feature
                                                      Post-         Accuracy
 Mapping        Identification   Classification   Classification   Assessment
 Approach       and Selection




                                                                                17
“when sufficient training samples are
  available and the feature of land
    covers in a dataset is normally
  distributed, Maximum likelyhood
classification (MLC) may yield an
   accurate classification result”
          (Lu,D and Weng, Q, 2007)



                                        18
Maximum Likelihood


             Land
             Vegetation
             Shallow
             Water
             Deep
             Water




                       19
Image
                Classification

Definition of      Feature                            Post-         Accuracy
 Mapping        Identification   Classification
                                                  Classification   Assessment
 Approach       and Selection




                                                                                20
Sieve




        Majority
        Analysis



                   21
MLC   Sieve   Majority Analysis   Output
                                           22
Image
                Classification

Definition of      Feature
                                                      Post-
                                                                    Accuracy
 Mapping        Identification   Classification                    Assessment
                                                  Classification
 Approach       and Selection




                                                                                23
The Overall Accuracy of the 1972 image was 99.04% with a
                 Kappa Coefficient of 0.98.




The 2000 image produced an Overall Accuracy of 99.47% and
               a Kappa Coefficient of 0.99.




                                                            24
Analysis

     &
 Visualization

                 25
26
27
Land Cover




1972   2000

                           28
What's the change ?
  1972 to 2000




                      29
Vegetation increased by   3700%


17% of existing land was created from
     shallow and deep water


                                        30
31
32
1972 Land Cover   2000 Land Cover Area (sq km)     Percentage based on
                                                   2000 Land Cover Area
     land              Land            405                83%

Shallow water          Land             61               13%
 Deep water            Land             17                 4%
       Land cover changes from 1972 to 2000
                                                   Percentage based on
1972 Land Cover   2000 Land Cover   Area (sq km)   2000 Land Cover Area
 Vegetation        Vegetation            3                 2%

    Land           Vegetation           76               59%
Shallow water      Vegetation           48               38%
 Deep water        Vegetation            1                 1%
                                                                          33
Land Cover 1972
                                                                            Graphs
       29.9%
                                  43.5%
                                                             Land Cover     Area (Sq Km)

                                            Land
                                                            Land                  500
                                            Vegetation
                                            Shallow water   Vegetation            3
        26.3%              0.3%
                                            Deep water
                                                            Shallow water         302
                                                            Deep water            344


                                                      Land Cover 2000
                                          30.2%
                                                                          42.0%
 Land Cover      Area (Sq Km)
Land                 483
Vegetation           128                                                       Land
                                          16.7%                                Vegetation
Shallow water        192                                     11.1%             Shallow water
                                                                               Deep water
Deep water           347
                                                                                               34
Conclusion
• The results clearly indicate the permanent   alteration
  of landscape in Abu      Dhabi island and surrounding
  areas.


• It is the combination of new
                             technologies and
  techniques, such as remote sensing methods and
  GIS tools provides the greatest value to study land
  cover changes.

                                                            35
This work was supported by the European Commission,
                Erasmus Mundus Programme,
       M.Sc. in Geospatial Technologies, project no.2007-0064

This work could not have been completed without the assistance of Vanessa Joy
Anacta and Ashwin Dhakal. We would also like to thank Dr. Mario Caetano,
Instituto Geográfico Português and Instituto   Superior de Estatística e
Gestão de Informação, Universidade Nova de Lisboa for their invaluable
support and advice in carrying out this study. Also special thanks to Institute
für Geoinformatik, Westfälische Wilhelms-Universität Münster.


                                                                                  36
Compare with reclamation in Dubai
                Graphs n tables in same page
                Kappa




謝謝
Thank you for your attention




                                                    37

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Abu Dhabi Island: Analysis of Development and Vegetation Change Using Remote Sensing (1972-2000)

  • 1. Abu Dhabi Island: Analysis of Development and Vegetation Change Using Remote Sensing (1972-2000) EOGC International Conference May 28, 2009 Chengdu, China Abdulhakim Abdi & Anand Nandipati Erasmus Mundus Masters Programme in Geospatial Technologies ISEGI - IFGI - UJI, 2008 - 2010
  • 2. 2 Contents • Introduction • Data • Methodology • Analysis & Visualization • Conclusion ` 2
  • 3. Objective Use of remote sensing methods and GIS tools to study the change in the landscape of Abu Dhabi Island and surrounding areas brought on by development. 3
  • 4. Introduction The United Arab Emirates’ GDP in 1972 was $1.6 billion and swelled to $ 103 in 2004 (UAE-NMC, 2008). The country had undergone tremendous change over since it got independence in 1971. Several programs have been implemented to “beautify” the desert landscape and included heavy afforestation and agricultural projects. 4
  • 5. Study Area United Arab Emirates Source: Google Maps 5
  • 9. Data Landsat 7 WRS-2, Path 160, Row 043 2000-08-23 2000 Landsat ETM+ 1972 Landsat MSS Landsat 1 WRS-1, Path 172, Row 043 1972-11-29 Source: Global Land Cover Facility, UMD, Maryland, USA 9
  • 10. Data Landsat ETM+ Imagery from November 1, 2008 with Scan Line Corrector-OFF 10
  • 11. Methodology Image Classification Definition of Feature Post- Accuracy Mapping Identification Classification Classification Assessment Approach and Selection 11
  • 12. Image Classification Definition of Feature Post- Accuracy Mapping Identification Classification Classification Assessment Approach and Selection 12
  • 13. Mapping Approach Minimum Mapping Unit (MMU) : Pixel Pixel Satellite Sensor Spectral Range Bands Used Resolution L1 MSS multi-spectral 0.5 - 1.1 µm 1, 2, 3, 4 60 meter ETM+ multi- 0.450 – 1.175 L7 1, 2, 3, 4, 5 30 meter spectral µm Satellites and sensors used for the study We selected set of contiguous pixels for our classification Softwares used: ENVI, IDRISI Andes & ArcGIS 13
  • 14. Image Classification Definition of Feature Post- Accuracy Mapping Identification and Classification Classification Assessment Approach Selection 14
  • 15. NDVI Map showing NDVI based on 2000 Landsat 7 ETM+ 15
  • 16. Sample Selection Land Vegetation Shallow Water Deep Water 16
  • 17. Image Classification Definition of Feature Post- Accuracy Mapping Identification Classification Classification Assessment Approach and Selection 17
  • 18. “when sufficient training samples are available and the feature of land covers in a dataset is normally distributed, Maximum likelyhood classification (MLC) may yield an accurate classification result” (Lu,D and Weng, Q, 2007) 18
  • 19. Maximum Likelihood Land Vegetation Shallow Water Deep Water 19
  • 20. Image Classification Definition of Feature Post- Accuracy Mapping Identification Classification Classification Assessment Approach and Selection 20
  • 21. Sieve Majority Analysis 21
  • 22. MLC Sieve Majority Analysis Output 22
  • 23. Image Classification Definition of Feature Post- Accuracy Mapping Identification Classification Assessment Classification Approach and Selection 23
  • 24. The Overall Accuracy of the 1972 image was 99.04% with a Kappa Coefficient of 0.98. The 2000 image produced an Overall Accuracy of 99.47% and a Kappa Coefficient of 0.99. 24
  • 25. Analysis & Visualization 25
  • 26. 26
  • 27. 27
  • 28. Land Cover 1972 2000 28
  • 29. What's the change ? 1972 to 2000 29
  • 30. Vegetation increased by 3700% 17% of existing land was created from shallow and deep water 30
  • 31. 31
  • 32. 32
  • 33. 1972 Land Cover 2000 Land Cover Area (sq km) Percentage based on 2000 Land Cover Area land Land 405 83% Shallow water Land 61 13% Deep water Land 17 4% Land cover changes from 1972 to 2000 Percentage based on 1972 Land Cover 2000 Land Cover Area (sq km) 2000 Land Cover Area Vegetation Vegetation 3 2% Land Vegetation 76 59% Shallow water Vegetation 48 38% Deep water Vegetation 1 1% 33
  • 34. Land Cover 1972 Graphs 29.9% 43.5% Land Cover Area (Sq Km) Land Land 500 Vegetation Shallow water Vegetation 3 26.3% 0.3% Deep water Shallow water 302 Deep water 344 Land Cover 2000 30.2% 42.0% Land Cover Area (Sq Km) Land 483 Vegetation 128 Land 16.7% Vegetation Shallow water 192 11.1% Shallow water Deep water Deep water 347 34
  • 35. Conclusion • The results clearly indicate the permanent alteration of landscape in Abu Dhabi island and surrounding areas. • It is the combination of new technologies and techniques, such as remote sensing methods and GIS tools provides the greatest value to study land cover changes. 35
  • 36. This work was supported by the European Commission, Erasmus Mundus Programme, M.Sc. in Geospatial Technologies, project no.2007-0064 This work could not have been completed without the assistance of Vanessa Joy Anacta and Ashwin Dhakal. We would also like to thank Dr. Mario Caetano, Instituto Geográfico Português and Instituto Superior de Estatística e Gestão de Informação, Universidade Nova de Lisboa for their invaluable support and advice in carrying out this study. Also special thanks to Institute für Geoinformatik, Westfälische Wilhelms-Universität Münster. 36
  • 37. Compare with reclamation in Dubai Graphs n tables in same page Kappa 謝謝 Thank you for your attention 37