Canada Centre for Remote Sensing - ESS Mapping land cover change and terrestrial dynamics over northern Canada using multi-temporal Landsat imagery Christopher.

Slides:



Advertisements
Similar presentations
Lab for Remote Sensing Hydrology and Spatial Modeling Dept. of Bioenvironmental Systems Engineering, NTU Satellite Remote Sensing for Land-Use/Land-Cover.
Advertisements

Beyond Spectral and Spatial data: Exploring other domains of information GEOG3010 Remote Sensing and Image Processing Lewis RSU.
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,
DR. M.S. NATHAWAT PROFESSOR AND HEAD, REMOTE SENSING DEPARTMENT PROFESSOR AND HEAD, REMOTE SENSING DEPARTMENT BIRLA INSTITUTE OF TECHNOLOGY, MESRA Arunima.
Change Detection. Digital Change Detection Biophysical materials and human-made features are dynamic, changing rapidly. It is believed that land-use/land-cover.
Spatial monitoring of late-successional forest habitat over large regions with nearest-neighbor imputation Janet Ohmann 1, Matt Gregory 2, Heather Roberts.
A Synthesis of Terrestrial Carbon Balance of Alaska and Projected Changes in the 21 st Century: Implications for Climate Policy and Carbon Management To.
Increasing Wetland Emissions of Methane From A Warmer Artic: Do we See it Yet? Lori Bruhwiler and Ed Dlugokencky Earth System Research Laboratory Boulder,
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.
Module 2.2 Monitoring activity data for forests remaining forests (incl. forest degradation) REDD+ Sourcebook training materials by GOFC-GOLD, Wageningen.
Data Merging and GIS Integration
Globally distributed evapotranspiration using remote sensing and CEOP data Eric Wood, Matthew McCabe and Hongbo Su Princeton University.
Characterizing Soil Erosion in Albania using Remote Sensing Ryan L. Perroy Geography Department University of California, Santa Barbara.
Wireless Spectral Imaging System for Remote Sensing Mini Senior Design Project Submitted by Hector Erives August 30, 2006.
CHANGE DETECTION METHODS IN THE BOUNDARY WATERS CANOE AREA Thomas Juntunen.
1 Space Applications Institute Joint Research Centre European Commission Ispra (VA), Italy Global Vegetation Monitoring.
Remote Sensing Laboratory Dept. of Information Engineering and Computer Science University of Trento Via Sommarive, 14, I Povo, Trento, Italy Remote.
Module 2.1 Monitoring activity data for forests using remote sensing REDD+ training materials by GOFC-GOLD, Wageningen University, World Bank FCPF 1 Module.
Mapping Fire Scars in Global Boreal Forests Using Imaging Radar Data Written By: L.L. Bourgeau-Chavez, E.S. Kasischke, S. Brunzell, J.P. Mudd, and M. Tukman.
1 SWALIM Workshop June, Nairobi Monitoring Land Cover Dynamics in sub-Saharan Africa H.D. Eva, A. Brink and D. Simonetti.
Landscape-scale forest carbon measurements for reference sites: The role of Remote Sensing Nicholas Skowronski USDA Forest Service Climate, Fire and Carbon.
USDA Forest Service Remote Sensing Applications Center Forest Inventory and Analysis New Technology How is FIA integrating new technological developments.
ACKNOWLEDGEMENTS We are grateful to the MOPITT team, especially the groups at University of Toronto and the National Center for Atmospheric Research (NCAR),
Vegetation Continuous Fields and the new Land Water Mask Mark Carroll John Townshend Rob Sohlberg Charlene DiMiceli Department of Geography University.
Co-authors: Maryam Altaf & Intikhab Ulfat
Introduction to Remote Sensing. Outline What is remote sensing? The electromagnetic spectrum (EMS) The four resolutions Image Classification Incorporation.
Development of indicators of fire severity based on time series of SPOT VGT data Stefaan Lhermitte, Jan van Aardt, Pol Coppin Department Biosystems Modeling,
A METHODOLOGY TO SELECT PHENOLOGICALLY SUITABLE LANDSAT SCENES FOR FOREST CHANGE DETECTION IGARSS 2011, Jul, 27, 2011 Do-Hyung Kim, Raghuram Narashiman,
1 Remote Sensing Laboratory Dept. of Information Engineering and Computer Science University of Trento Via Sommarive, 14, I Povo, Trento, Italy 2.
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.
Mapping lichen in a caribou habitat of Northern Quebec, Canada, using an enhancement-classification method and spectral mixture analysis J.Théau, D.R.
earthobs.nr.no Temporal Analysis of Forest Cover Using a Hidden Markov Model Arnt-Børre Salberg and Øivind Due Trier Norwegian Computing Center.
PREFER 1 st Annual Review Meeting, 5-6 Dec 2013, Milano-Italy PREFER WP 3.2 Information support to Recovery/Reconstruction Task 7 Damage Severity Map PREFER.
May 16-18, 2005MultTemp 2005, Biloxi, MS1 Monitoring Change Through Hierarchical Segmentation of Remotely Sensed Image Data James C. Tilton Mail Code 606*
PREFER 1 st Annual Review Meeting, 5-6 Dec 2013, Milano-Italy PREFER WP 3.2, Task 7.
The study area is the Sub-Saharian Africa. According to the IGBP vegetation map the major vegetation types present in the area include savanna and woody.
Canada Centre for Remote Sensing Field measurements and remote sensing-derived maps of vegetation around two arctic communities in Nunavut F. Zhou, W.
Land Cover Change Monitoring change over time Ned Horning Director of Applied Biodiversity Informatics
North American Carbon Program Sub-pixel Analysis of a 1-km Resolution Land-Water Mask Source of Data: The North American sub-pixel water mask product is.
Land Cover Change Monitoring change over time Ned Horning Director of Applied Biodiversity Informatics
Understanding Glacier Characteristics in Rocky Mountains Using Remote Sensing Yang Qing.
Land Cover Characterization Program National Mapping Division EROS Data CenterU. S. Geological Survey The National Land Cover Dataset of the Multi- Resolution.
Remotely sensed land cover heterogeneity
14 ARM Science Team Meeting, Albuquerque, NM, March 21-26, 2004 Canada Centre for Remote Sensing - Centre canadien de télédétection Geomatics Canada Natural.
Application of spatial autocorrelation analysis in determining optimal classification method and detecting land cover change from remotely sensed data.
Slide 1 NATO UNCLASSIFIEDMeeting title – Location - Date Satellite Inter-calibration of MODIS and VIIRS sensors Preliminary results A. Alvarez, G. Pennucci,
An Examination of the Relation between Burn Severity and Forest Height Change in the Taylor Complex Fire using LIDAR data from ICESat/GLAS Andrew Maher.
METEOSAT SURFACE ALBEDO FIRE PERTURBATION PRODUCT (MSAFPP) EVALUATION Bernardo W. Mota 1 José M.C. Pereira 1 Yves Govaerts 2 Ana C.L. Sá 1 João M.N. Silva.
Beyond Spectral and Spatial data: Exploring other domains of information: 3 GEOG3010 Remote Sensing and Image Processing Lewis RSU.
H51A-01 Evaluation of Global and National LAI Estimates over Canada METHODOLOGY LAI INTERCOMPARISONS LEAF AREA INDEX JUNE 1997 LEAF AREA INDEX 1993 Baseline.
Citation: Moskal., L. M. and D. M. Styers, Land use/land cover (LULC) from high-resolution near infrared aerial imagery: costs and applications.
Land Cover Classification and Monitoring Case Studies: Twin Cities Metropolitan Area –Multi-temporal Landsat Image Classification and Change Analysis –Impervious.
Assessing Annual Forest Ecological Change in Western Canada Using Temporal Mixture Analysis of Regional Scale AVHRR Imagery Over a 14 Year Period Joseph.
Using SAR Intensity and Coherence to Detect A Moorland Wildfire Scar.
Integrating LiDAR Intensity and Elevation Data for Terrain Characterization in a Forested Area Cheng Wang and Nancy F. Glenn IEEE GEOSCIENCE AND REMOTE.
US Croplands Richard Massey Dr Teki Sankey. Objectives 1.Classify annual cropland extent, Rainfed-Irrigated, and crop types for the US at 250m resolution.
Christopher Steinhoff Ecosystem Science and Management, University of Wyoming Ramesh Sivanpillai Department of Botany, University of Wyoming Mapping Changes.
26. Classification Accuracy Assessment
Gofamodimo Mashame*,a, Felicia Akinyemia
Temporal Classification and Change Detection
Assessment of Current Field Plots and LiDAR ‘Virtual’ Plots as Guides to Classification Procedures for Multitemporal Analysis of Historic and Current Landsat.
HIERARCHICAL CLASSIFICATION OF DIFFERENT CROPS USING
ASTER image – one of the fastest changing places in the U.S. Where??
Chenyang Wei & Adam M. Wilson University at Buffalo
S. Skakun1,2, J.-C. Roger1,2, E. Vermote2, C. Justice1, J. Masek3
By Yudhi Gunawan * and Tamás János **
Igor Appel Alexander Kokhanovsky
Rice monitoring in Taiwan
VALIDATION OF FINE RESOLUTION LAND-SURFACE ENERGY FLUXES DERIVED WITH COMBINED SENTINEL-2 AND SENTINEL-3 OBSERVATIONS IGARSS 2018 – Radoslaw.
Presentation transcript:

Canada Centre for Remote Sensing - ESS Mapping land cover change and terrestrial dynamics over northern Canada using multi-temporal Landsat imagery Christopher Butson† Robert Fraser‡ †Prologic Consulting, 75 Albert Street, Suite 206, Ottawa, Ontario, Canada. K1P 5E7 ‡Natural Resources Canada, Canada Centre for Remote Sensing, 588 Booth St. Ottawa, Ontario, Canada. K1A 0Y7

Canada Centre for Remote Sensing - ESS Presentation Outline 1)Introduction 2)Research Objectives 3)Data & Materials 4)Methodology Cross-Correlation Analysis Change Vector Analysis Theil-Sen Regression Analysis 5)Results 6)Conclusions 7)Future Work

Canada Centre for Remote Sensing - ESSIntroduction Northern areas are characterized by: Low air and soil temperatures Permafrost Short growing season and limited productivity Climate data indicate large relative warming at high latitudes. Intergovernmental Panel on Climate Change (IPCC) projects an increase in global mean surface temperature of 1º to 3.5º C by 2100 and an increase in sea level by 15-95cm.

Canada Centre for Remote Sensing - ESS Goal: Develop automated methods for detecting past and future land cover changes in the north and use this information to report on carbon fluxes for UNFCCC and track indicators of climate change in Canada. Where: Four pilot sites have been setup along the forest- tundra boundary (tree line) in northern Canada. Yukon- NWT, Manitoba, Ontario, Quebec. How: Use various change methods to monitor; I) Natural disturbances (tundra fires, vegetation) and II) Human induced changes (mining and settlements).

Canada Centre for Remote Sensing - ESS Research Objectives The main objective of this research is to develop an automated change detection technique for use with Landsat imagery to quantify past and present land cover changes in northern areas. More specifically, we aim to: 1)Test three change detection approaches for quantifying land cover changes in Landsat imagery. 2)Quantify total changed area, and land cover changes throughout the specified time periods using circa 2000 imagery as the base-year over four pilot areas located in the forest-tundra transition zone of northern Canada.

Canada Centre for Remote Sensing - ESS Data & Materials Map of Canada highlighting the locations of the four pilot sites.

Canada Centre for Remote Sensing - ESS Landsat Scene Selection: Study sites #1-4, represent the multi- temporal sites under investigation. Sites #5-7 represent the overlap image pairs that the change methods were tested on.

Canada Centre for Remote Sensing - ESSMethodology

Cross-Correlation Analysis (CCA) Cross-Correlation Analysis (CCA) uses a land cover map to delineate spectral cluster statistics between the baseline image year (Time 1) and each scene in the temporal sequence (Time 2). Calculating the Z- statistic deviations from the cluster mean identifies change pixels within each land cover cluster.

Canada Centre for Remote Sensing - ESS Change Vector Analysis (CVA) Change Vector Analysis (CVA) uses two spectral channels to map both the: 1) magnitude of change and, 2) the direction of change between the two (spectral) input images for each date.

Canada Centre for Remote Sensing - ESS Theil-Sen Regression Analysis (TSA) Much like typical image regression change, we use Theil-Sen as it is more robust to sample outliers than ordinary least-squares regression. Medians are outlier resistant measures of central tendency and the method uses the median of all pairwise slopes to calculate the slope of the regression line. The median value of the sample offsets represents the intercept.

Canada Centre for Remote Sensing - ESS TSA con’t… Generate mask to sample pixels in each land cover Samples are used to build a regression equation for each cover type using the baseline circa 2000 ETM+ scene as the regressor and each scene in the temporal sequence as the response. A change mask was created by mapping pixels characterizing large residuals away from the regression line

Canada Centre for Remote Sensing - ESS Results – Objective #1 The overlap scene acquired earlier in the season was used as the baseline image while the latter scene was considered the time 2 map By analyzing only the overlap portion between the two orbital paths, we assumed that the land surface (and thus land cover) does not change between acquisition dates

Canada Centre for Remote Sensing - ESS Results – Objective #1 con’t… Comparison of techniques for burned vegetation (high probability): TSA CCA RGB=4,5,3 CVA

Canada Centre for Remote Sensing - ESS Results – Objective #1 con’t… Comparison of techniques for regenerating vegetation (medium probability): TSACCA RGB=4,5,3 CVA

Canada Centre for Remote Sensing - ESS Study site#1: Changes , Inuvik, NWT a) 1992, RGB=1,2,3 b) 2000, RGB c) Prob-Change Results – Objective #2

Canada Centre for Remote Sensing - ESS Results - Objective #2 con’t… Study site #2: Changes , Churchill, MN a) 2001, RGB b) 1985, Prob-Changec) 1991, Prob-Change

Canada Centre for Remote Sensing - ESS Results - Objective #2 con’t…

Canada Centre for Remote Sensing - ESSConclusions CVA –Does not rely on the quality/accuracy of a baseline land cover map to identify changes. Relatively large commission errors but less noise in some cases. CCA – Relies on the quality/accuracy of a land cover map to identify changes. May under estimate land cover changes. TSA- Relies on the quality/accuracy of a land cover map to correctly classify changes. Although the commission errors were much lower in the overlap analysis, the change maps were still noisy. Computationally intensive.

Canada Centre for Remote Sensing - ESS Future work Validate change conditions using historic and current ancillary data Develop interactive thresholding Spatial aggregation of change pixels Analyze seasonal change detection limitations Apply change methods to northern mosaic of Canada Assess land cover/land use changes for UNFCCC reporting in the north

Canada Centre for Remote Sensing - ESS Baseline Classification Circa 2000 Landsat ETM+ 90m landcover of northern Canada – Version I (preliminary) Olthof, I., Butson, C., Fernandes, R., Fraser, R., Latifovic, R. and Orazietti, J. (2004). Landsat ETM+ mosaic of northern Canada. Canadian Journal of Remote Sensing, submitted 06/04.

Canada Centre for Remote Sensing - ESSAcknowledgements Global Land Cover Facility ( for the use of the Landsat MSS imageryhttp://glcf.umiacs.umd.edu/data/ Canadian Space Agency (CSA)- Government Related Initiatives Program (GRIP) funding