Title: Remote Sensing and GIS Integration Workshop
1 Remote Sensing and GIS Integration Workshop
- Barry Haack, George Mason University
- October 19, 2004
- GeoTech2004
- Potomac Region American Society for
Photogrammetry and Remote - Sensing
- Silver Spring, MD
2Welcome and Logistics
- Introduction
- Bound handout, note appendices
- Time 930 to 1230, break 1030 - 1050
- Workshop evaluation please
3Assumptions, Caveats, Disclaimers
- Assume GIS experience
- Directed towards GIS analyst interested in
remote sensing - Will not include aerial photography,
photogrammetry, base map creation - Emphasis on spaceborne remote sensing for
thematic information
4Objective and Outline
- Explore the relationship between spaceborne
remote sensing and Geographic Information Systems
(GIS) - Definitions/background of remote sensing and GIS
- Current status of spaceborne remote sensing
- Remote sensing input of thematic data to a GIS
- GIS data layers assist in remote sensing
information extraction
5Geographic Information Sciences (GISci)
- Geographic Information Systems
- Remote Sensing/Photogrammetry
- Global Positioning Systems/surveying
- Cartography
- Spatial Statistics
- Mapping Sciences, GeoInformatics, Geospatial
Sciences?
6Remote Sensing (RS)
- Collection of information without direct contact
- Remote sensing is a primary source of data for a
GIS - maintains a historical record of the
Earths surface - provides current information
- allows for change detection and
predictive models
7RS Information Extraction Procedures
- Visual/human/interpretation from hard or soft
copy product - Computer/automated from digital data
- Many hybrid or combination techniques
8Geographic Information Systems (GIS or GISys)
- Multiple definitions
- System to input, store, manage, analyze and
output spatial data - Includes hardware, software, data,
infrastructure, staff - Raster and/or vector
- Error - accuracy
9Remote Sensing Roles for GIS
- Base maps
- photogrammetric considerations
- generally air photo based (perhaps
hyperspatial spaceborne) - great spatial detail
- contours, transportation, buildings,
infrastructure, utilities - Thematic information
- single or multiple classes
- often generalized
- focus of this workshop
- spaceborne platforms
10Air Photo George Mason University
11Air Photo Derived Base Map
12Color Infrared Film
April 5, 1988 NAAP VG B VR G NIR R
13Two Directional Interaction of Remote Sensing and
GIS
- Remote sensing creates data layers for a GIS
- GIS data layers assist in remote sensing analysis
and classification - Remote sensing image/photos may be a backdrop
layer in a GIS
14Major Issues RS Integration to GIS
- Geometric rectification to coordinate system
- Cartographic generalization - scale compatibility
- Data structure (raster - vector)
- Error - accuracy
15Resolution in Remote Sensing
- Spatial, degree of spatial detail, often in
meters, pixel size - Spectral, number and types of energy
bands/wavelengths - Temporal, frequency of data acquisition, days or
hours - Radiometric, level of discrimination in energy
recorded - Concept of resolutions useful for
- remote sensing data evaluation
- data specifications for
informational needs
16Spatial Resolution
17Remote Sensing Classification Parameters
- Platform
- Energy type (Electromagnetic Spectrum- EMS)
18Remote Sensing Platform
- Height above surface
- Airborne or spaceborne
- Historically tradeoff between footprint and
spatial resolution - low altitude, small footprint and high
spatial detail - high altitude, synoptic view and low
spatial resolution - Exceptions in national assets data and recent
high spatial resolution - spaceborne platforms
19Remote Sensing Platform Tradeoff Spatial
Resolution vs Footprint/Synoptic Coverage
20Early Platforms 1903
21Electromagnetic Spectrum
- Classified by wavelength and/or frequency
- Inverse relationship between wavelength and
frequency - Units in micrometers (one one-millionth of a
meter) - Reflected or emitted energy
- 04 .4 .5 .6 .7 1.5 4.5
300 1m - ultraviolet visible
infrared microwave (radar)
- B G R near mid
thermal
22Electromagnetic Spectrum
23Energy Flow Profile
- Energy source
- Source to surface
- Interaction at surface
- Surface to sensor
- Sensor to user
- All wavelength dependent and site/time specific
- Bi-directional Reflectance Distribution Function
(BRDF) - Atmospheric corrections necessary or possible?
- Signature extension problem (over space and time)
24Components Of EFP Wavelength, Time and Location
Dependent
25Spaceborne Remote Sensing
- Experimental and research
- Operational
- National assets (dual purpose)
26Operational Spaceborne Remote Sensing
- Medium spatial resolution multispectral (10 to
100 m) - Radar
- High spatial resolution (lt10 m)
- Low spatial resolution multispectral (gt100m)
includes meteorological - Hyperspectral
27Multispectral Sensors
- Match feature to a spectral signature
- Cameras
- Scanners or wisk broom
- Linear array or push broom
- Expanding to hyper and ultraspectral sensors
28Selected Spectral Signatures-Reflectance Curves
29Medium Spatial Resolution MSS (10-100 m)
30Landsat
- US system
- Seven platforms since 1972 (six successful)
- Primary sensors MSS, TM, ETM
31Landsat Orbit Parameters
- 570 mile or 920 km height
- 16 to 18 day repeat coverage
- Near polar NE to SW orbit
- 81 north to 81 south
- Sun synchronous 930 am
- Archived by global path/row location
32Landsat Multispectral Scanner MSS
- On first five platforms
- Four band scanner - VG, VR, NIR, NIR
- 79 by 56 m pixel, 1.1 acre, 0.4 hectare
- Standard frame, 185 by 185 kms, 115 by 115 miles
- 7.5 million pixels per frame
- 18.5 cm print at scale of 11,000,000, enlarge to
170,000 - Digital data, varied radiometric resolutions
33Landsat Thematic Mapper TM
- Since 1982, Landsats 4 and 5
- Seven spectral bands
- VB,VG,VR,NIR, MIR, TIR,MIR
- 30 meter pixel, 120 m TIR
- 256, 8 bit radiometric resolution
- Enhanced Thematic Mapper ETM
- Landsat 7 1999
- Seven bands
- Panchromatic band at 15m
- About 600 digital data
- Serious data problems since May, 2003
34Landsat TM 30 m Atlanta
35SPOT
- French
- Five platforms since 1986
- Linear array or push broom system
- SPOTs 1 to 3
- 10 m panchromatic, 20 m three band multispectral
- 60 by 60 km format
- Pointable sensor, stereo and greater temporal
resolution - SPOT 4 1998
- Added fourth MSS band (Mid IR 1.5 to 1.75)
- SPOT 5, 2002
- 2.5 and 5 m panchromatic at 60 km swath
- Vegetation mapper on 4 and 5 at 1km, daily
coverage
36SPOT 20 m MSS
37Attributes of Spaceborne Data
- Synoptic view
- Global
- Repetitive
- Uniform over time
- Uniform over space
- Often multispectral
- Digital
- Planimetric
- Available, open sky
- Inexpensive?
38Visual Interpretation of Spaceborne Data
- Do not expect perfect understanding
- Use ancillary information
- Minimize joy of recognition
- Spatial extendibility
- Convergence of evidence
- All changes in tone/texture are real
- Importance of seasonality
- Field work
- Accuracy assessment
39Radar
- ERS
- JERS
- RADARSAT
- Shuttle Imaging Radar SIR
- Almaz
40Advantages of Radar
- Day and night
- Weather independent /cloud penetration
- Vegetation and surface penetration
- Determine distance
41Radar Backscatter
- Aspect/geometry
- Composition/dielectric constant
- Texture/roughness
- Radar is good for shape/form
- Optical is good for composition
42Change Radar Return
- Wavelength (X,L,C, K)
- Polarization (quad-pole, HH,VV, HV,VH)
- Look angle
- Look direction
- Strategies with single band radar
- Multidate
- Multi incidence angle
- Derived measures such as texture
- Fuse with optical
43RADARSAT
- Canadian sensor
- 4 November 1995 launch
- C-band, 5.6 cm, HH polarization
- Programmable incident angle, spatial resolution,
and swath/footprint - Spatial resolution from 8 to 100 m
- Footprint from 50 x 50 km to 500 x 500 km
44Radarsat Kathmandu Nepal
45Radar Applications
- Areas of cloud cover
- Geology/geomorphology/structure
- Ice and snow cover - iceberg monitoring
- Oceanography - oil spills
- Cultural features
- Deforestation
- Land use/land cover
- Agriculture
46Large Spatial Resolution MSS (gt 100 m)
- Meteorological Sensors (AVHRR)
- NOAA Platform
- 5 spectral bands (visible to thermal)
- 1.1 km spatial resolution at nadir
- 2800 km swath
- 6 hour temporal resolution with two
platforms - SPOT Vegetation Mapper
- Global daily coverage
- Four bands
- 1 km pixel, 2200 km swath
47Non-Meteorological Applications of Met Satellites
- Oceanographic temperature and color
- Oil spills
- Geologic thermal inertia, volcanoes
- Forest and grassland burning
- Monitor dust storms (volcanic)
- Vegetation assessment (NGVI), desertification
- Crop Monitoring
48AVHRR Nile Delta Temperature Difference
49Fine Spatial Resolution (lt 10 m) Hyperspatial
- Space Imaging IKONOS, 1999
- 1 m panchromatic, 4 m three band MSS
- 11 x 11 km footprint
- 3-5 day temporal resolution
- ImageSat EROS 1-A, 2000
- 1.8 m pan, 13.5 x 13.5 km footprint
- Digital Globe QuickBird, 2001
- 0.6 m pan and 2.6 m MSS,1-3.5 days,
16.5 km swath - SPOT 5, 2002
- 2.5 and 5 m panchromatic, 60 km swath
- Orbital Imaging OrbView-3, 2003
- 1.0 pan, 4 m four band MSS, 8 x 8 km
footprint
50IKONOS August 5, 2002 1 and 4 m merged
51QuickBird Washington DC .6 m
52Hyperspectral
- Various definitions, gt 10 wavelengths, often
hundreds - Developed for geologic/earth materials scientists
- Several airborne systems exist AVIRIS
- Spaceborne
- MODIS Hyperion
53Hyperspectral Image Cube
54MODIS
- NASA, November 1999
- 36 bands visible green to thermal
- Varied spatial resolutions
- bands 1 and 2 250m
- bands 3 - 7 500m
- bands 8 - 36 1000m
- Swath of 2330 km
- One to two day temporal repeat
- Many applications and derived information
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56NASA Hyperion
- November 2000
- 30 m
- 220 bands
- 7.5 km swath
- Orbits with Landsat 7
57Two Directional Interaction of Remote Sensing and
GIS
- Remote sensing creates data layers for a GIS
- GIS data layers assist in remote sensing analysis
and classification
58Major Issues RS Integration to GIS
- Geometric rectification to coordinate system
- Cartographic generalization - scale compatibility
- Data structure (raster - vector)
- Error - accuracy
59Geometric Rectification
- Image to image (registration) or image to grid
(rectification) - Coordinate system (UTM, Lat/Long, State Plane)
- Ground Control Points GCPs
- from image/map or field GPS
- Transformation level (first, second)
- Error (RMS in pixels, under 1 pixel optimal)
- Resampling (nearest neighbor, bilinear, cubic
convolution)
60Cartographic Generalization
- All maps are generalizations of the real world
(RF gt 11) - Maps should indicate smallest feature (minimum
mapping unit - mmu) - GIS only valid at smallest scale or largest mmu
of any single data layer - Often remote sensing digital data are too
detailed - Spatial filtering, clumping or spatial
aggregation necessary
61Data Structure
- Raster
- traditional remote sensing
- ease for modeling
- Vector
- traditional cartographic
- Vector and raster conversions
- Issues
- display
- storage
62Accuracy Assessment
- Extremely important, data without accuracy of
questionable value - Accuracy should be a component of metadata
- Very difficult and often avoided, embarrassing
- Expensive
- Several types of accuracy, locational and
thematic - Thematic the most difficult to evaluate
- Primary difficulty is identification of truth,
temporal differences - Extensive literature on statistics of accuracy
- Accuracy often summarized in error or confusion
matrix - Overall accuracy, users and producers per class
63Contingency Table Sudan
- Urban Veg Other Totals
Users - Urban 15,248 335
1,502 17,085 89.2 - Agriculture 2,012 3,015 1,159 6,186 48.7
- Other 934 200 21,961 23,095 95.0
- Totals 18,194 3,551 24,622 46,367
- Producers 83.8 84.9 89.2
-
- Correctly Identified Pixels 40,225/46,367
86.8
64Example GIS Data from Remote Sensing
- Biophysical variables
- DEM, biomass, temperature, soil
moisture, snow and ice - Point and Line features buildings,
transportation, hydrology - (high spatial resolution may
be required) - Thematic features
- single layers wetlands, urban,
water, forest, agriculture - multiple classes land use/land cover
- Change detection
- Remote sensing images may be a GIS backdrop layer
65Remote Sensing as Thematic Input to a GIS
- Visual mapping from photos/images and input to
GIS - by digitizing or scanning (may be hard or
soft copy) - Use digital RS data to visually update existing
GIS layers - Automated classification of digital RS data to a
GIS layer
66Visual Image Interpretation
- Geometric rectificatoin
- before or after interpretation
- creation of mosaics/image maps
- Classification system (single or multiple land
use/cover) - USGS Anderson, Hardy, Roach and Witmer
- Class definitions
- Minimum mapping unit
- Hardcopy or softcopy data sources
- Conversion to GIS
- direct softcopy, digitizing, scanning
- Accuracy assessment
67USGS Profession Paper 964, 1976, Anderson, Hardy,
Roach and Witmer
68USGS Land Use/Cover Map
69LU-LC Afghanistan
Source Image Landsat TM at 1250,000
70LULC Kabul Province
71Land Use/Land Cover Kathmandu, Nepal
72Digitally Update Existing GISLayer
- Geometric registration
- Appropriate dates of sources
- Compatible classification system
- Viable minimum mapping units
- Accuracy assessment/quality control
- Example use RS to update USGS DLGs
73Update DLG from Air Photo
74Digital Image Processing
75Preprocessing
- Data selection, subset, merge
- Radiometric
- missing data
- striping
- atmospheric correction
- Geometric
- registration to grid or image
- scale, resampling
-
76Analysis
- Image enhancement
- Automated classification
77Image Enhancement
- Provide improved image for visual information
extraction - Spatial
- texture
- filters
- edge detection
- Spectral
- band selection
- ratio
- principle components
- green vegetation index
78Automated Classification
- Signature matching process
- Classification system selection and definition
- Difficulties
- Signature not unique or too unique
- EFP atmospheric considerations
- Mixed pixels
- Signature extension issue (over space
and time) - Signature extraction (most important, GIGO)
- calibration-training sites or
supervised (from GIS layers possible) - clustering or unsupervised
- Signature evaluation (visual or statistical)
- multiple signatures per class
- Application of a decision rule
- Accuracy assessment
- Spatial filtering for GIS compatibility, product
delivery
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80Automated and Filtered Classification Kathmandu,
Nepal
81Classification Improvement Strategies
- Data
- Multisensor
- Multitemporal
- Ancillary data/GIS
- Texture/context
- Nested sampling/varied spatial
resolution - Procedure
- Decision rules
- Processing strategy
- Hierarchical
- Image segmentation
82Radar and Optical Classification Kericho, Kenya
Forest-Red Tea-Yellow Bare Soil-Green Urban-purple
83GIS Assists Remote Sensing
- Pre-classification image segmentation
- Calibration-training site selection
- Direct integration of GIS and RS data
- Post classification sorting
84Pre-classification Image Segmentation
- Advantages exist to segmenting study area/data
prior to analysis - GIS layers may provide segmentation not possible
via remote sensing - Examples elevation, slope, soil type, historical
land use/cover - Each segment examined independently and then
combined
85Calibration-Training Site Selection
- Signature extraction for automated classification
- Existing GIS layers may be source or helpful
- Elevation, land use, vegetation, soil layers for
example
86Direct Integration of GIS Data with Remote
Sensing Data
- Ancillary information intrinsic in RS
information extraction - DEM, historic land use/cover,
vegetation maps - Add GIS layers as bands of data in traditional
classification - Logical channel addition
- Continuous and not categorical GIS
data - GIS layers in other procedures
- Classification and Regression Tree
Analysis (CART) - Neural networks
- Hierarchical strategies
- Can use categorical data
87Post Classification Sorting
- Use GIS to finalize classes
- Forest class above 350 m is forest 13, below 350
m is forest 16
88Conclusions
- Integration of RS and GIS extremely useful
- RS and GIS integration is two directional
- Multiple existing uses and also multiple research
topics - Multiple new RS platforms and sensors in near
future - THANK YOU!
- Please complete workshop evaluation