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Published byCalvin Long Modified over 9 years ago
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Beyond Spectral and Spatial data: Exploring other domains of information GEOG3010 Remote Sensing and Image Processing Lewis RSU
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Domains of Information spectral spatial angular distance-resolved multi-temporal
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Domains of Information recap on spectral / spatial consider physical basis for information
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Spectral - Physical Basis Optical –reflectance varies with wavelength –spectral reflectance of different cover types / properties vary
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Spectral reflectance Related to: –how much (illuminated) material (seen) –reflectance / absorptance characteristics of materials (+ multiple scattered effects)
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Leaves Absorbtance by leaf pigments, water etc Acting in different parts of the spectrum
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Leaves Factors affecting reflectance/transmittance of plant elements pigment type/concentration e.g. Chlorophyll a,b - absorb visible radiation surface features: hairs, spines, veins, cuticular wax - scattering (e.g. specular) cell morphology and content NIR - high refl. due to scattering at refractive index discontinuities (n air = 0; n cell =1.47) MIR - water absorption features
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So …attempt to take RS measurement and relate to –cover type different spectral properties) –amount of material (eg vegetation) eg leaf –high NIR, low visible (basis of VIs)
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Interpretation complicated by: –variations in Sun/view angle
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Interpretation complicated by: projection of objects –orientation (leaf angle distribution)
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Interpretation complicated by: projection of objects
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Interpretation complicated So relationship between eg VI and canopy variables depends on cover type (different canopy structure)
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Microwave Similar ‘spectral’ concepts (frequency c = f ) again related to amount of material but very much driven by: –water content –size of objects (relative to wavelength) –orientation effect dept. on polarisation
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Spatial Information ‘texture’ / spatial dependency / context typically use measures of texture –size of objects –orientation –spacing and arrangement
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Spatial Information Directional texture
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Spatial Information Use: calculate texture measures –use to discriminate / classify –relate to physical properties (tree spacing etc.)
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Spatial Information
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Baringo, Kenya ‘Textures’ from tree density - dense to sparse
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Measure texture using statistical measure of spatial dependency semivariance
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Spatial Dependency points at a small distance apart (A-B ; B-C; C-D) are more likely to lie on the same object (have the same properties) than points further apart (A-C; B-D; A-D). Geostatistics
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Spatial Dependency geostatistics - measure/model spatial dependencies using semivariogram Geostatistics
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Spatial Dependency at some ‘lag distance’ (h) (spacing between points) the semivariance is: –half of the average (mean) squared difference between the property values at the sample points. Geostatisticssemivariance
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Spatial Dependency Geostatistics - h = 1
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Spatial Dependency Geostatistics - h = 2
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Spatial Dependency Geostatistics - h = 3
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Spatial Dependency Geostatistics - h = 14 Range of spatial dependency
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Sill nugget variance
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Features of the semivariogram Range –range of spatial dependency in data Sill –semivariance at and beyond range (half the scene variance) Nugget variance –extrapolated semivariance at lag 0 –variation at sub-measurement unit
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Baringo, Kenya ‘Textures’ from tree density - dense to sparse
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Directional Information spectral depends on illuminated/viewed amounts of material As change view / illumination angles, change these proportions –so change reflectance
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Directional Information Describe directional reflectance by BRDF –Bidirectional Refelctance Distribution Function e.g. plot as function of view zenith angle:
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Directional Information
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Features of BRDF General upwards bowl shape for most biomes retro-reflectance peak (‘hot spot’)
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Directional Information
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Features of BRDF Bowl shape –increased scattering due to increased path length through canopy
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Features of BRDF Bowl shape –increased scattering due to increased path length through canopy
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Features of BRDF Hot Spot –mainly shadowing minimum –so reflectance higher
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Features of BRDF Also orientation of leaves etc. –projection –quantify through eg leaf angle distribution
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Use of directional information Discrimination / classification Green red nir swir
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Use of directional information Parameterisation of surface conditions –build model of physics of effect of surface properties on reflectence –invert model against RS BRDF measurements
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Distance-resolved Can determine distance from satellites: –based on time-delay of signal
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Distance-resolved Can determine distance from satellites: –based on time-delay of signal
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Distance-resolved eg GPS
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Distance-resolved EO example: –radar interferometry
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Distance-resolved EO example: –radar interferometry: assume know satellite position 1 cycle (5.6 cm for C band) ¾ way through half cycle (¾ + ½)x360 = 315 degrees (360 degrees, 2 radians) ¾ way through 270 degrees 2 x d 1 = (N 1 +(¾ + ½))x5.6
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Distance-resolved EO example: –radar interferometry: 0 way through 2 x d 2 = (N 2 ) x 5.6 2 x (d 2 - d 1 ) = (N 2 - N 1 ) x 5.6 + ((¾ + ½)-0) x 5.6
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Distance-resolved EO example: position 1: –2 x (d 2 - d 1 ) = (N 2 - N 1 ) x 5.6 + ((¾ + ½)-0) x 5.6 position 2: –point on ground next to current point will have different phase change –if its within the same cycle (height change less than 5.6cm) can tell relative height change between these points very precise (mm)
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Shuttle Radar Topography Mission
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11 Feb 2000 (Endeavour) - 11 days 30m DEM of +/- 60 degrees latitude
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Distance- resolved Measure small change - subsidence
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Distance- resolved Measure small change - earthquake
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Distance-resolved LIght Detection And Ranging RAdio Detection And Ranging LIDAR RADAR
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Distance-resolved LIDAR Send laser pulse from sensor measure round trip time = 2x distance use NIR mostly –atmospheric effects minimised
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Distance-resolved LIDAR Examples - EA fly aiborne LIDAR regularly for high resolution DEM use first/last return ground height / tree height
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Distance-resolved - LIDAR
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Distance-resolved LIDAR Examples - VCL Vegetation Canopy LIDAR NASA mission to fly 2000 waveform LIDAR
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Distance-resolved VCL waveform LIDAR
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Distance-resolved waveform LIDAR
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LIDAR ‘Simple’ form of measurement easy to use (? Simply) doesn’t work (well) on high slopes requires highly-sensitive instrumentation potentials for new forms of information –waveform LIDAR
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Interferometry Used for number of years –operational (SRTM) different ‘scales’ for different SAR frequencies doesn’t work well (for height) if change between images –wind in forests doesn’t work on high slopes
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