The use of Remote Sensing in Land Cover Mapping and Change Detection in Somalia Simon Mumuli Oduori, Ronald Vargas Rojas, Ambrose Oroda and Christian Omuto.

Slides:



Advertisements
Similar presentations
Monitoring and Predicting General Vegetation Condition Using Climate, Satellite, Oceanic, and Biophysical Data Tsegaye Tadesse 1, Brian D. Wardlow 1, and.
Advertisements

African Centre for Statistics United Nations Economic Commission for Africa Role of GIS and Remote Sensing to Environment Statistics Dozie Ezigbalike Data.
Selected results of FoodSat research … Food: what’s where and how much is there? 2 Topics: Exploring a New Approach to Prepare Small-Scale Land Use Maps.
Production of land cover map of Asia, Central Asia, and Middle East with emphasis of the development of ground truth database Ryutaro Tateishi, Hiroshi.
Predicting and mapping biomass using remote sensing and GIS techniques; a case of sugarcane in Mumias Kenya Odhiambo J.O, Wayumba G, Inima A, Omuto C.T,
VEGETATION MAPPING FOR LANDFIRE National Implementation.
Agreement Assessment of Visual Interpretation and Digital Classification for Mapping Urban Landscape Heterogeneity Weiqi Zhou, Kirsten Schwarz, Mary Cadenasso.
Leila Talebi, Anika Kuczynski, Andrew Graettinger, and Robert Pitt
Urbanization and Land Cover Change in Dakota County, Minnesota Kylee Berger and Julia Vang FR 3262 Remote Sensing Section 001/002.
Use of Remote Sensing and GIS in Agriculture and Related Disciplines
ASTER image – one of the fastest changing places in the U.S. Where??
Multiple Criteria for Evaluating Land Cover Classification Algorithms Summary of a paper by R.S. DeFries and Jonathan Cheung-Wai Chan April, 2000 Remote.
Potential of Ant Colony Optimization to Satellite Image Classification Raj P. Divakaran.
JIBRAN KHAN 1* &TAHREEM OMAR 2 JIBRAN KHAN&TAHREEM OMAR IMPACTS OF URBANIZATION ON LAND SURFACE TEMPERATURE OF KARACHI.
Has EO found its customers? 1 Space Applications Institute Directorate General Joint Research Centre European Commission Ispra (VA), Italy
Land Use/Land Cover Assessment of Dane County, Wisconsin: Contemporary Trend and Future Projections By Eric Fabian.
WMO / COST 718 Expert Meeting on Weather, Climate and Farmers November 2004 Geneva, Switzerland.
APPLICATION OF REMOTE SENSING FOR THE ASSESSMENT OF DROUGHT IN SOMALIA – Case Study in Puntland Ambrose Oroda Ronald Vargas, Simon Oduori and Christian.
Accuracy Assessment. 2 Because it is not practical to test every pixel in the classification image, a representative sample of reference points in the.
An Object-oriented Classification Approach for Analyzing and Characterizing Urban Landscape at the Parcel Level Weiqi Zhou, Austin Troy& Morgan Grove University.
Ramesh Gautam, Jean Woods, Simon Eching, Mohammad Mostafavi, Scott Hayes, tom Hawkins, Jeff milliken Division of Statewide Integrated Water Management.
TARGETED LAND-COVER CLASSIFICATION by: Shraddha R. Asati Guided by: Prof. P R.Pardhi.
LAND COVER CHANGE ASSESSMENT GLCN methodological approach Antonio Di Gregorio.
Co-authors: Maryam Altaf & Intikhab Ulfat
F.A.O. Land Cover/Remote Sensing Specialist
International Organization for Migration Sudan Climate and Environment Activities and Findings.
Hiroshi Sasakawa Ph. D. Japan Forest Technology Association Remote sensing expert JICA Project in Gabon International Symposium on Land Cover Mapping for.
Seto, K.C., Woodcock, C.E., Song, C. Huang, X., Lu, J. and Kaufmann, R.K. (2002). Monitoring Land-Use change in the Pearl River Delta using Landsat TM.
Optimal use of new satellite resources. Research funded by NERC/CEH and JNCC. Rapid Land Cover Mapping.
Chuvieco and Huete (2009): Fundamentals of Satellite Remote Sensing, Taylor and Francis Emilio Chuvieco and Alfredo Huete Fundamentals of Satellite Remote.
ASSESSMENT OF ALBEDO CHANGES AND THEIR DRIVING FACTORS OVER THE QINGHAI-TIBETAN PLATEAU B. Zhang, L. Lei, Hao Zhang, L. Zhang and Z. Zen WE4.T Geology.
Crop Area Estimation for Bundi Tahsil of Rajasthan using Remote Sensing and GIS Technique Mahatma Gandhi Chitrakoot Gramodaya Vishwavidyalaya Chitrakoot.
Chapter 1 – A Geographer’s World
Map of the Great Divide Basin, Wyoming, created using a neural network and used to find likely fossil beds See:
Chernobyl Nuclear Power Plant Explosion
X. Cai, B.R Sharma, M.Matin, D Sharma and G. Sarath International workshop on “Tackling Water and Food Crisis in South Asia: Insights from the Indus-Gangetic.
Chuvieco and Huete (2009): Fundamentals of Satellite Remote Sensing, Taylor and Francis Emilio Chuvieco and Alfredo Huete Fundamentals of Satellite Remote.
SATELLITE AND AERIAL IMAGE DATA, MOBILE COMPUTING, GIS, AND GPS FOR INTEGRATED CROP MANAGEMENT (ICM) Chuck O’Hara, Dan Reynolds, Roger King John Cartwright,
Land cover mapping of Asia , Central Asia, and Middle East for GLC2000 project Ryutaro Tateishi, Hiroshi Sato, and Zhu Lin Center for Environmental Remote.
Application of spatial autocorrelation analysis in determining optimal classification method and detecting land cover change from remotely sensed data.
BOT / GEOG / GEOL 4111 / Field data collection Visiting and characterizing representative sites Used for classification (training data), information.
Evapotranspiration Estimates over Canada based on Observed, GR2 and NARR forcings Korolevich, V., Fernandes, R., Wang, S., Simic, A., Gong, F. Natural.
Object-oriented Land Cover Classification in an Urbanizing Watershed Erik Nordman, Lindi Quackenbush, and Lee Herrington SUNY College of Environmental.
Contact © European Union, 2012 Use of low-resolution satellites for permanent pasture yield estimation at regional scale. Lorenzo.
GLC 2000 Workshop March 2003 Land cover map of southern hemisphere Africa using SPOT-4 VEGETATION data Ana Cabral 1, Maria J.P. de Vasconcelos 1,2,
ASSESSMENT OF THE ANNUAL VARIATION OF MALARIA AND THE CLIMATE EFFECT BASED ON KAHNOOJ DATA BETWEEN 1994 AND 2001 Conclusions 1. One month lag between predictors.
Vegetation Change Detection in a Low Lying Atoll Island Kilifi Postgraduate climate change University of the South Pacific Kilifi Postgraduate climate.
Updated Cover Type Map of Cloquet Forestry Center For Continuous Forest Inventory.
Nitrogen Management Experiences in the Rainfed Corn Belt (Iowa)
CHANGE DETECTION ANALYSIS USING REMOTE SENSING TECHNIQUES Change in Urban area from 1992 to 2001 in COIMBATORE, INDIA. FNRM 5262 FINAL PROJECT PRESENTATION.
Developing the Vegetation Drought Response Index (VegDRI): Monitoring Vegetation Stress from a Local to National Scale Brian Wardlow National Drought Mitigation.
A method to map flooding-prone areas in Iran using Landsat satellite images and GIS Ali Bozorgi, Iran Water Resources Management Company,
Detecting Land Cover Land Use Change in Las Vegas Sarah Belcher & Grant Cooper December 8, 2014.
Intra-Urban Land Cover Classification in High Spatial Resolution Images using Object-Oriented Analysis: trends and challenges Carolina Moutinho Duque de.
Integrating LiDAR Intensity and Elevation Data for Terrain Characterization in a Forested Area Cheng Wang and Nancy F. Glenn IEEE GEOSCIENCE AND REMOTE.
Gofamodimo Mashame*,a, Felicia Akinyemia
Mapping Variations in Crop Growth Using Satellite Data
Database management system Data analytics system:
Developing the Vegetation Drought Response Index (VegDRI): Monitoring Vegetation Stress from a Local to National Scale Dr. Brian Wardlow National Drought.
An Introduction to VegOut
HIERARCHICAL CLASSIFICATION OF DIFFERENT CROPS USING
An Introduction to VegDRI
National seminar on ENVIRONMENT AND DEVELOPMENT IN EASTERN INDIA
Incorporating Ancillary Data for Classification
Jili Qu Department of Environmental and Architectural College
Some Applications of Remote Sensing and GIS
REMOTE SENSING Multispectral Image Classification
Image Information Extraction
Standardized Precipitation Index (SPI) Jürgen Vogt Land Management and Natural Hazards Unit Institute for Environment and Sustainability
Remote Sensing Landscape Changes Before and After King Fire 2014
Presentation transcript:

The use of Remote Sensing in Land Cover Mapping and Change Detection in Somalia Simon Mumuli Oduori, Ronald Vargas Rojas, Ambrose Oroda and Christian Omuto 12 th June, Nairobi, Kenya

Land Cover (LC) The Observed Biophysical Cover on the Earth’s Surface. The tangible indicator of the kind of ecological activity taking place on the earth’s surface. Significantly modified by human activities (negatively & positively). Effort is to fight negative effects Therefore Characterisation is Imperative GIS and Remote Sensing are Imperative tools Need to assess Land cover mapping and change detection methodologies in arid environments.

Objectives  To compare land cover mapping methodologies (accuracy assessment): visual satellite image interpretation and automatic image classification.  To detect land cover changes in time using both previous methodologies.  To detect the impact of Settlement & Water Points on land cover.

The Study Area North and south of Garowe km 2 each (see Figure). Different eco-regions. Includes Sool Plateau and Sanag Plateaus, the Nugal Valley and the Mudug Plain. The climate of the study area is classified as arid, with rainfall ranging between 100 to 200 mm per year. Relative Humidity for the area of study is 60% to 70%. Temperature varies between 20° to 28°C.

Methods Bibliographic Research (libraries, NGOs, UN-Agencies etc) Visual satellite image interpretation approach using LCCS. Supervised classification using the nearest neighborhood algorithm in ERDAS Imagine Software using LCCS. Multi-temporal satellite images (1973, 2001 and 2006) for land cover change assessment. Normalized Difference Vegetation Index (NDVI) has been used to assess the vegetative vigor around these areas (NDVI = (IR – R) / (IR + R)) over time. Field survey for land cover data collection, together with semi- structured interviews with local people. An accuracy assessment for land cover mapping. Integration of land cover maps, NDVI, water and settlement points in a GIS analysis for detecting impacts.

RESULTS: supervised classification land cover maps ( )

RESULTS: accuracy assessment (North Garowe) Interpretat ion Units Checked Land Cover Class Units Found to Belong to Sparse Vegetation Bare Lands Open Shrubs Shrubs with Emergent Trees Tiger Bush Settlement Open Herbaceous Closed Herbaceous Open Trees Accuracy (%) 22 Sparse Vegetation Bare Lands Open Shrubs Shrubs with Emergent Trees Tiger Bush Settlement Open Herbaceous Closed Herbaceous Open Trees Total

RESULTS: accuracy assessment The accuracy with which each land cover has been Classified by the digital method is the following: 1. Sparse Vegetation is 19/25*100 = 76% 2. Open Shrubs is 28/38*100 = 74% 3. Bare Lands is 7/7*100 = 100% 4. Shrubs with Emergent Trees is 5/5*100 = 100% 5. Tiger Bush is 11/11*100 = 100% 6. Open Trees is 1/2*100 = 50%

RESULTS: polygon land cover maps (2001)

RESULTS: accuracy assessment (North Garowe Interpretation Units Checked Land Cover Class Units Found to Belong to Sparse Vegetation Bare Lands Open Shrubs Shrubs with Emergent Trees Tiger Bush SettlementOpen Herbaceous Closed Herbaceous Open Trees Accuracy (%) 15 Sparse Vegetation Bare Lands Open Shrubs Shrubs with Emergent Trees Tiger Bush Settlement Open Herbaceous Closed Herbaceous Open Trees Total

RESULTS: accuracy assessment The accuracy with which each land cover has been interpreted by the Visual Interpretation is the following: 1. Sparse Vegetation is 7/26*100 = 27% 2. Open Shrubs is 28/38*100 = 74% 3. Shrubs with Emergent Trees is 0% 4. Tiger Bush is 12/12*100 = 100% The vegetation in this area is highly heterogeneous.

RESULTS: some findings The main confusion was between Bare Lands and Sparse Vegetation. The Tiger Bush is very distinct and easy to identify visually. The Open Shrubs were also easy to identify, though they were confused with Sparse Vegetation. However, it must be noted that the preliminary interpretation was done without any prior local field knowledge. Again, some land cover classes were not reached due to the poor road network in the study area. The vegetation in arid environments is very heterogeneous, therefore difficult to map using visual interpretation. That’s explains the low accuracy.

RESULTS: some findings The accuracy assessment for South Garowe is: Visual interpreted map: 78% Automatic supervised classification map: 85% The reason behind this accuracy in comparison with North Garowe is that this area is generally homogeneous in terms of land cover/ vegetation. Therefore, both methods can represent in a better way this spatial variability.

RESULTS: change detection by visual interpretation

ClassesHectares% change 2HL HR SR TP U S Statistics on surface and percentage variation from to (changes are always less than 0.1%). Conclusion  No changes of land cover in the observed period  The few changes, only limited to a small decrease of bare soil cover

RESULTS: change detection by automatic classification SNo.Land CoverArea in 1988 (Ha) Area in 2001(Ha) Land Cover Change Ha) 1Woodlands Open Shrubs Open Herbaceous Sparse Herbaceous/ Sparse Shrubs Bare Soils Statistics on surface and percentage variation from to 2001 (changes are in some cases greater than 50%). Conclusion  Considerable changes of land cover in the observed period  The changes are in all the land cover classes

RESULTS: detecting impact from settlement ( )

CONCLUSIONS  One polygon based land cover map and two pixel based land cover maps were generated ( ). An accuracy assessment for both was calculated. Although the difference in accuracy, both approaches have their pros and cons for representing complex land cover patterns as those of an arid environment.  Significant land cover change was detected using the raster based map. The Visual interpretation map identified few changes in land cover. The main reason can be related to scale issues (minimum mapping unit).  Digital classification is more reliable in detecting very small changes in land cover. It is useful in arid environments like Somalia. However, its fuzzy pattern is not well acknowledged.

CONCLUSIONS Vegetated land had changed to bare lands over the years due mainly, as recorded in the interviews and some field perceptions, to overgrazing and tree cutting for charcoal burning. Settlements and water-points contributed to increased pressure on the fragile environment and consequently caused negative changes in land cover around them during the period between 1973 and 2006.

Thank You for Listening