BOSTON UNIVERSITY GRADUATE SCHOOL OF ART AND SCIENCES LAI AND FPAR ESTIMATION AND LAND COVER IDENTIFICATION WITH MULTIANGLE MULTISPECTRAL SATELLITE DATA.

Slides:



Advertisements
Similar presentations
Beyond Spectral and Spatial data: Exploring other domains of information GEOG3010 Remote Sensing and Image Processing Lewis RSU.
Advertisements

A Simple Production Efficiency Model 1/18 Willem de Kooning ( ) A Tree in Naples.
Goal: estimate sub-pixel woody shrub fractional cover at landscape scales Approach: evaluate the Simple Geometric Model (GM) against the 631 nm directional.
Linking In situ Measurements, Remote Sensing, and Models to Validate MODIS Products Related to the Terrestrial Carbon Cycle Peter B. Reich, University.
Reducing Canada's vulnerability to climate change - ESS Variation of land surface albedo and its simulation Shusen Wang Andrew Davidson Canada Centre for.
Active Remote Sensing Systems March 2, 2005 Spectral Characteristics of Vegetation Temporal Characteristics of Agricultural Crops Vegetation Indices Biodiversity.
“Using MODIS and POLDER data to develop a generalized approach for correction of the BRDF effect” Eric F. Vermote, Christopher O. Justice Dept of Geography,
RESEARCH ON FPAR VERTICAL DISTRIBUTION IN DIFFERENT GEOMETRY MAIZE CANOPY Dr.Liu Rongyuan Pro. Huang Wenjiang
MODIS Leaf Area Index (LAI) and Fraction of Vegetation Absorbed Photosynthetically Active Radiation Products (FPAR) Products – An Update Ranga B. Myneni.
SKYE INSTRUMENTS LTD Llandrindod Wells, United Kingdom.
Radar, Lidar and Vegetation Structure. Greg Asner TED Talk.
MODIS Science Team Meeting - 18 – 20 May Routine Mapping of Land-surface Carbon, Water and Energy Fluxes at Field to Regional Scales by Fusing Multi-scale.
1 Has EO found its customers? GLC 2000 Workshop ‘Methods’ Objectives F. Achard Global Vegetation Monitoring Unit.
Dissertation Committee Ranga B. Myneni Yuri Knyazikhin Curtis E. Woodcock Crystal B. Schaaf Jan Bogaert Ph.D. Dissertation Defense by Jiannan Hu Assessment.
Application of Stochastic Radiative Transfer to Remote Sensing of Vegetation Dissertation Committee Ranga B. Myneni Yuri Knyazikhin Alan H. Strahler Crystal.
ESTEC July 2000 Estimation of Aerosol Properties from CHRIS-PROBA Data Jeff Settle Environmental Systems Science Centre University of Reading.
Ph. D. Dissertation defense Evaluation of the Performance of the MODIS LAI and FPAR Algorithm with Multiresolution Satellite Data Yuhong Tian Department.
1/47 Analysis, Improvement and Application of the MODIS LAI/FPAR Product Dissertation Committee Ranga B. Myneni Yuri Knyazikhin Nathan Philips Crystal.
Published in Remote Sensing of the Environment in May 2008.
S CIENCE TECHNOLOGY LESSON 5. REVIEW Electromagnetic Spectrum (definition): The range of energy which contains parts or bands: visible light, infrared,
Forrest G. Hall 1 Thomas Hilker 1 Compton J. Tucker 1 Nicholas C. Coops 2 T. Andrew Black 2 Caroline J. Nichol 3 Piers J. Sellers 1 1 NASA Goddard Space.
Goal: To improve estimates of above- and belowground C pools in desert grasslands by providing more accurate maps of plant community type, canopy structural.
Remote Sensing Hyperspectral Remote Sensing. 1. Hyperspectral Remote Sensing ► Collects image data in many narrow contiguous spectral bands through the.
MODIS Subsetting and Visualization Tool: Bringing time-series satellite-based land data to the field scientist National Aeronautics and Space Administration.
Radiometric and biophysical measures of global vegetation from multi-dimensional MODIS data Ramakrishna Nemani NTSG.
Global land cover mapping from MODIS: algorithms and early results M.A. Friedl a,*, D.K. McIver a, J.C.F. Hodges a, X.Y. Zhang a, D. Muchoney b, A.H. Strahler.
Objectives  The objectives of the workshop are to stimulate discussions around the use of 3D (and probably 4D = 3D+time) realistic modeling of canopy.
Differences b etween Red and Green NDVI, What do they predict and what they don’t predict Shambel Maru.
Real-time integration of remote sensing, surface meteorology, and ecological models.
Review of Statistics and Linear Algebra Mean: Variance:
Antwerp march A Bottom-up Approach to Characterize Crop Functioning From VEGETATION Time series Toulouse, France Bucharest, Fundulea, Romania.
MODIS Workshop An Introduction to NASA’s Earth Observing System (EOS), Terra, and the MODIS Instrument Michele Thornton
Generating fine resolution leaf area index maps for boreal forests of Finland Janne Heiskanen, Miina Rautiainen, Lauri Korhonen,
Maria Val Martin and J. Logan (Harvard Univ., USA) D. Nelson, C. Ichoku, R. Kahn and D. Diner (NASA, USA) S. Freitas (INPE, Brazil) F.-Y. Leung (Washington.
Remote Sensing of LAI Conghe Song Department of Geography University of North Carolina Chapel Hill, NC
Spectral classification of WorldView-2 multi-angle sequence Atlanta city-model derived from a WorldView-2 multi-sequence acquisition N. Longbotham, C.
Satellite observations of terrestrial ecosystems and links to climate and carbon cycle Bases of remote sensing of vegetation canopies The Greening trend.
A FIRST LOOK AT THE MODIS 8-DAY PSN DATA FOR 2001 MODIS Science Team Mtg 19 December 2001 Steven W. Running NTSG, Univ. of Montana.
BIOPHYS: A Physically-based Algorithm for Inferring Continuous Fields of Vegetative Biophysical and Structural Parameters Forrest Hall 1, Fred Huemmrich.
LAI/ fAPAR. definitions: see: MOD15 Running et al. LAI - one-sided leaf area per unit area of ground - dimensionless fAPAR - fraction of PAR (SW radiation.
1 Directional Difference of Satellite Land Surface Temperature Yunyue Yu NOAA/NESDIS/STAR.
Beyond Spectral and Spatial data: Exploring other domains of information GEOG3010 Remote Sensing and Image Processing Lewis RSU.
The Second TEMPO Science Team Meeting Physical Basis of the Near-UV Aerosol Algorithm Omar Torres NASA Goddard Space Flight Center Atmospheric Chemistry.
14 ARM Science Team Meeting, Albuquerque, NM, March 21-26, 2004 Canada Centre for Remote Sensing - Centre canadien de télédétection Geomatics Canada Natural.
BIOPHYS A PHYSICALLY-BASED CONTINUOUS FIELDS ALGORITHM and Climate and Carbon Models FORREST G. HALL, FRED HUEMMRICH Joint Center for Earth Systems Technology.
GEOG2021 Environmental Remote Sensing Lecture 3 Spectral Information in Remote Sensing.
Goal: to understand carbon dynamics in montane forest regions by developing new methods for estimating carbon exchange at local to regional scales. Activities:
MODIS Net Primary Productivity (NPP)
IGARSS 2011, Jul. 27, Vancouver 1 Monitoring Vegetation Water Content by Using Optical Vegetation Index and Microwave Vegetation Index: Field Experiment.
Beyond Spectral and Spatial data: Exploring other domains of information: 3 GEOG3010 Remote Sensing and Image Processing Lewis RSU.
2011 IEEE International Geoscience and Remote Sensing Symposium (IGARSS) Aihua Li Yanchen Bo
Citation: Richardson, J. J, L.M. Moskal, S. Kim, Estimating Urban Forest Leaf Area Index (LAI) from aerial LiDAR. Factsheet # 5. Remote Sensing and.
Objectives The Li-Sparse reciprocal kernel is based on the geometric optical modeling approach developed by Li and Strahler, in which the angular reflectance.
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.
Mark Friedl 1, Xiaoyang Zhang 2 1 Department of Geography and Environment, Boston University 2 ERT at NOAA/NESDIS/STAR NASA MEASURES #NNX08AT05A Science.
Global Vegetation Monitoring Unit Problems encountered using Along Track Scanning Radiometer data for continental mapping over South America Requirement.
References: 1)Ganguly, S., Samanta, A., Schull, M. A., Shabanov, N. V., Milesi, C., Nemani, R. R., Knyazikhin, Y., and Myneni, R. B., Generating vegetation.
Integrating LiDAR Intensity and Elevation Data for Terrain Characterization in a Forested Area Cheng Wang and Nancy F. Glenn IEEE GEOSCIENCE AND REMOTE.
MODIS/VIIRS LAI & FPAR – 2016 UPDATE Ranga B. Myneni 1 Kai Yan Taejin ParkChi Chen Yuri Knyazikhin.
Estimation of surface characteristics over heterogeneous landscapes from medium resolution sensors. F. Baret 1, S. Garrigues 1, D. Allard 2, R. Faivre.
GEOG2021 Environmental Remote Sensing
Comparison of GPP from Terra-MODIS and AmeriFlux Network Towers
AGRO 500 Special Topics in Agronomy Remote Sensing Use in Agriculture and Forestry Lecture 8 Leaf area index (LAI) Junming Wang Department of Plant.
Vegetation Indices Radiometric measures of the amount, structure, and condition of vegetation, Precise monitoring tool phenology inter-annual variations.
Factsheet # 12 Understanding multiscale dynamics of landscape change through the application of remote sensing & GIS Land use/land cover (LULC) from high-resolution.
Incorporating Ancillary Data for Classification
REMOTE SENSING Multispectral Image Classification
Image Information Extraction
Igor Appel Alexander Kokhanovsky
Presentation transcript:

BOSTON UNIVERSITY GRADUATE SCHOOL OF ART AND SCIENCES LAI AND FPAR ESTIMATION AND LAND COVER IDENTIFICATION WITH MULTIANGLE MULTISPECTRAL SATELLITE DATA by YU ZHANG Submitted in partial fulfillment of the Requirements for the degree of Doctor of Philosophy (Total of 31 visuals) DISSERTATION

KEYWORDS Multiangle Remote Sensing Land Cover LAI and FPAR 2/31

Multiangle Remote Sensing Multiangle remote sensing is simultaneous measurement along different look angles of reflected radiation from a target. Examples: ATSR-2 (2 observation angles, 1km resolution) POLDER (up to 14 observation angles, 6km resolution) MISR (9 observation angles, 1.1km resolution) 3/31

Land Cover (1) What is land cover? Land cover is simply a description of the kind of vegetation at a location at a given time. Shrubs Grasses Broad Leaf Crops Forests

Land Cover (2) Why is land cover important? Land cover and land use changes inferred from vegetation maps are a direct evidence of the human and climate impact on the land. Most climate and biogeochemical models, as well as algorithms that estimate surface biophysical variables from remote sensing data, utilize vegetation maps to assign certain key parameters to reduce the number of unknowns. 5/31

LAI and FPAR (1) What? LAI – Green Leaf Area Index = one-sided green leaf area per unit ground surface area FPAR – Fraction of incident Photosynthetically Active Radiation Absorbed by the vegetation canopy = APAR / IPAR 6/31

LAI and FPAR (2) Why? LAI is a key state variable in all land parameterization of climate, ecology, and hydrology models. FPAR is a key variable in terrestrial carbon models. 7/31

Objectives The objective of my research is to demonstrate the utility of multiangle multispectral remote sensing for estimation of LAI, FPAR and land cover. Specifically, Prototype the MISR LAI/FPAR algorithm (Part I) Empirical and theoretical analysis f multiangle, multispectral data (Part II) Land cover classification with multiangle multispectral data (Part III) 8/31

PART I:Prototyping MSIR LAI/FPAR Algorithm POLDER Data: –~6km resolution –Africa –Nov –Up to14 multiangle data per pixel Biome Classification Map

BCM-Africa Biome Classification Map derived from AVHRR data (8km)

The Algorithm Metrics of multiangle observations and uncertainties Algorithm LAI & FPAR Solution Distribution Functions: mean variance LUT based inverse solution of the 3D transport equation 11/31

Saturation Frequency Saturation Frequency decreases using multiangle data 12/31

Dispersion of LAI Dispersion of LAI for single-angle retrievals and multiangle retrievals for broadleaf crops. 13/31

LAI 14/31

Part I: Conclusions The MISR LAI/FPAR algorithm performs satisfactorily Retrieval accuracy increases in the case of multiangle inputs Note: This work is published in Zhang et al, Prototyping of MISR LAI and FPAR algorithm with POLDER data over Africa. IEEE Trans. Geosci. Remote Sens. 38: , /31

Part II:Investigations of Multiangle Data Empirical Analysis BRDF? Angular signatures in spectral space? Theoretical Analysis (will not be presented here)

BRDF backscattering forward scattering B.S. F.S. B.S. F.S. 17/31

Angular Signature in Spectral Space MultiangleSingle-angle Location LengthNo OrientationNo InterceptNo

Interpretation of the Angular Signature Indices 1)Location — Biome type 2)Intercept Indices — Vegetation ground cover 3)Length Indices — Canopy structure 4)Slope Indices — LAI 19/31

IGBP-AS Angular signatures in the red-NIR (near-infrared) spectral space of the ten land covers from Hansen et al. (2000) 1 km land cover map of North America. 20/31

Part II: Conclusions We developed metrics that characterize the BRDF for use in land cover classification These metrics have a basis in transport theory Note: These works is described in a two-part series: Zhang et al., Required consistency between definitions and signatures with the physics of remote sensing I: empirical arguments. And II: theoretical arguments. Remote Sens. Environ. (Submitted in January 2001). 21/31

Part III: Land Cover Classification with Angular Signature Indices Data North America land cover training sites POLDER Data (June 1997, North America) Methods MANOVA, PCA, Correlation Matrix Classification Techniques Decision tree classification Maximum likelihood classification

Classification Variables Spectral Location (2) Red, NIR Angular Length, Slope, Intercept (3) 3 measurement patterns (3  3=9) Total 9+2=11 variables 23/31

Statistic1 24/31

Variance of PCA Data information content is larger than spectral variables only 25/31

2-Classify The maximum classification accuracies as functions of the number of variables used in the decision tree and maximum likelihood classification methods.

Part III: Conclusions The statistical analyses confirm the idea that incorporating angular signature variables will improve biome classification. The maximum likelihood classification result indicates a improvement of classification accuracy using directional variables. Note: These works is prepared for publication: Zhang and Woodcock, Improve the land cover classification accuracy with multiangle remote sensing data. (In preparation, 2001). 27/31

CONCLUDING REMARKS My research demonstrates: Satisfactory performance of the MISR LAI/FPAR algorithm Multiangle data improve accuracy of LAI/FPAR retrievals It is possible to define simple metrics that characterize the BRDF – a complicated 4D function Multiangle data contain information useful for land cover classification

FUTURE DIRECTIONS Comprehensive analysis of MISR data to further develop these ideas ( It is not my job! :) Introducing temporal domain in land cover classification activity. 29/31

ACKNOWLEDGEMENTS Committee Fellow Graduate Student Data provider: Leroy, Diner, McIver 30/31

Thank you all! Questions Please… 31/31