Remote Sensing and GIS Integration Workshop - PowerPoint PPT Presentation

1 / 88
About This Presentation
Title:

Remote Sensing and GIS Integration Workshop

Description:

Remote Sensing and GIS Integration Workshop – PowerPoint PPT presentation

Number of Views:1709
Avg rating:3.0/5.0
Slides: 89
Provided by: gatew349
Category:

less

Transcript and Presenter's Notes

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

2
Welcome and Logistics
  • Introduction
  • Bound handout, note appendices
  • Time 930 to 1230, break 1030 - 1050
  • Workshop evaluation please

3
Assumptions, 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

4
Objective 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

5
Geographic Information Sciences (GISci)
  • Geographic Information Systems
  • Remote Sensing/Photogrammetry
  • Global Positioning Systems/surveying
  • Cartography
  • Spatial Statistics
  • Mapping Sciences, GeoInformatics, Geospatial
    Sciences?

6
Remote 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

7
RS Information Extraction Procedures
  • Visual/human/interpretation from hard or soft
    copy product
  • Computer/automated from digital data
  • Many hybrid or combination techniques

8
Geographic 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

9
Remote 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

10
Air Photo George Mason University
11
Air Photo Derived Base Map
12
Color Infrared Film
April 5, 1988 NAAP VG B VR G NIR R
13
Two 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

14
Major Issues RS Integration to GIS
  • Geometric rectification to coordinate system
  • Cartographic generalization - scale compatibility
  • Data structure (raster - vector)
  • Error - accuracy

15
Resolution 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

16
Spatial Resolution
17
Remote Sensing Classification Parameters
  • Platform
  • Energy type (Electromagnetic Spectrum- EMS)

18
Remote 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

19
Remote Sensing Platform Tradeoff Spatial
Resolution vs Footprint/Synoptic Coverage
20
Early Platforms 1903
21
Electromagnetic 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

22
Electromagnetic Spectrum
23
Energy 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)

24
Components Of EFP Wavelength, Time and Location
Dependent
25
Spaceborne Remote Sensing
  • Experimental and research
  • Operational
  • National assets (dual purpose)

26
Operational 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

27
Multispectral Sensors
  • Match feature to a spectral signature
  • Cameras
  • Scanners or wisk broom
  • Linear array or push broom
  • Expanding to hyper and ultraspectral sensors

28
Selected Spectral Signatures-Reflectance Curves
29
Medium Spatial Resolution MSS (10-100 m)
  • Landsat
  • SPOT
  • IRS
  • JERS

30
Landsat
  • US system
  • Seven platforms since 1972 (six successful)
  • Primary sensors MSS, TM, ETM

31
Landsat 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

32
Landsat 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

33
Landsat 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

34
Landsat TM 30 m Atlanta
35
SPOT
  • 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

36
SPOT 20 m MSS
37
Attributes of Spaceborne Data
  • Synoptic view
  • Global
  • Repetitive
  • Uniform over time
  • Uniform over space
  • Often multispectral
  • Digital
  • Planimetric
  • Available, open sky
  • Inexpensive?

38
Visual 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

39
Radar
  • ERS
  • JERS
  • RADARSAT
  • Shuttle Imaging Radar SIR
  • Almaz

40
Advantages of Radar
  • Day and night
  • Weather independent /cloud penetration
  • Vegetation and surface penetration
  • Determine distance

41
Radar Backscatter
  • Aspect/geometry
  • Composition/dielectric constant
  • Texture/roughness
  • Radar is good for shape/form
  • Optical is good for composition

42
Change 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

43
RADARSAT
  • 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

44
Radarsat Kathmandu Nepal
45
Radar 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

46
Large 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

47
Non-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

48
AVHRR Nile Delta Temperature Difference
49
Fine 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

50
IKONOS August 5, 2002 1 and 4 m merged
51
QuickBird Washington DC .6 m
52
Hyperspectral
  • Various definitions, gt 10 wavelengths, often
    hundreds
  • Developed for geologic/earth materials scientists
  • Several airborne systems exist AVIRIS
  • Spaceborne
  • MODIS Hyperion

53
Hyperspectral Image Cube
54
MODIS
  • 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

55
(No Transcript)
56
NASA Hyperion
  • November 2000
  • 30 m
  • 220 bands
  • 7.5 km swath
  • Orbits with Landsat 7

57
Two 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

58
Major Issues RS Integration to GIS
  • Geometric rectification to coordinate system
  • Cartographic generalization - scale compatibility
  • Data structure (raster - vector)
  • Error - accuracy

59
Geometric 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)

60
Cartographic 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

61
Data Structure
  • Raster
  • traditional remote sensing
  • ease for modeling
  • Vector
  • traditional cartographic
  • Vector and raster conversions
  • Issues
  • display
  • storage

62
Accuracy 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

63
Contingency 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

64
Example 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

65
Remote 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

66
Visual 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

67
USGS Profession Paper 964, 1976, Anderson, Hardy,
Roach and Witmer
68
USGS Land Use/Cover Map
69
LU-LC Afghanistan
Source Image Landsat TM at 1250,000
70
LULC Kabul Province
71
Land Use/Land Cover Kathmandu, Nepal
72
Digitally 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

73
Update DLG from Air Photo
74
Digital Image Processing
  • Preprocessing
  • Analysis

75
Preprocessing
  • Data selection, subset, merge
  • Radiometric
  • missing data
  • striping
  • atmospheric correction
  • Geometric
  • registration to grid or image
  • scale, resampling

76
Analysis
  • Image enhancement
  • Automated classification

77
Image Enhancement
  • Provide improved image for visual information
    extraction
  • Spatial
  • texture
  • filters
  • edge detection
  • Spectral
  • band selection
  • ratio
  • principle components
  • green vegetation index

78
Automated 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

79
(No Transcript)
80
Automated and Filtered Classification Kathmandu,
Nepal
81
Classification Improvement Strategies
  • Data
  • Multisensor
  • Multitemporal
  • Ancillary data/GIS
  • Texture/context
  • Nested sampling/varied spatial
    resolution
  • Procedure
  • Decision rules
  • Processing strategy
  • Hierarchical
  • Image segmentation

82
Radar and Optical Classification Kericho, Kenya
Forest-Red Tea-Yellow Bare Soil-Green Urban-purple
83
GIS Assists Remote Sensing
  • Pre-classification image segmentation
  • Calibration-training site selection
  • Direct integration of GIS and RS data
  • Post classification sorting

84
Pre-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

85
Calibration-Training Site Selection
  • Signature extraction for automated classification
  • Existing GIS layers may be source or helpful
  • Elevation, land use, vegetation, soil layers for
    example

86
Direct 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

87
Post Classification Sorting
  • Use GIS to finalize classes
  • Forest class above 350 m is forest 13, below 350
    m is forest 16

88
Conclusions
  • 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
Write a Comment
User Comments (0)
About PowerShow.com