UCL DEPARTMENT OF GEOGRAPHY GEOGG141/ GEOG3051 Principles & Practice of Remote Sensing (PPRS) Spatial & spectral resolution, sampling Dr. Mathias (Mat)

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Presentation transcript:

UCL DEPARTMENT OF GEOGRAPHY GEOGG141/ GEOG3051 Principles & Practice of Remote Sensing (PPRS) Spatial & spectral resolution, sampling Dr. Mathias (Mat) Disney UCL Geography Office: 113, Pearson Building Tel: tml

UCL DEPARTMENT OF GEOGRAPHY Introduction to RS instrument design –radiometric and mechanical considerations –resolution concepts spatial, spectral IFOV, PSF –Tradeoffs in sensor design 2 Lecture outline

UCL DEPARTMENT OF GEOGRAPHY Build on understanding of EMR and surface, atmosphere interactions in previous lectures Considerations of resolution –all types and tradeoffs required Mission considerations –types of sensor design, orbit choices etc. Relationship of measured data to real-world physical properties 3 Aims

UCL DEPARTMENT OF GEOGRAPHY What do we mean by “resolution” in RS context –OED: the effect of an optical instrument in making the separate parts of an object distinguishable by the eye. Now more widely, the act, process, or capability of rendering distinguishable the component parts of an object or closely adjacent optical or photographic images, or of separating measurements of similar magnitude of any quantity in space or time; also, the smallest quantity which is measurable by such a process. 4 Resolution

UCL DEPARTMENT OF GEOGRAPHY Even more broadly Not just spatial.... –Ability to separate other properties pertinent to RS Spectral resolution –location, width and sensitivity of chosen bands Temporal resolution –time between observations Radiometric resolution –precision of observations (NOT accuracy!) 5 Resolution

UCL DEPARTMENT OF GEOGRAPHY Ability to separate objects in x,y 6 Spatial resolution Shrink by factor of 8

UCL DEPARTMENT OF GEOGRAPHY Pixel size does NOT necessarily equate to resolution 7 Spatial resolution v pixel size 10 m resolution, 10 m pixel size 30 m resolution, 10 m pixel size 80 m resolution, 10 m pixel size 10m pixel size, 160x160 pixels 10m pixel size, 80x80 pixels 10m pixel size, 40x40 pixels 10m pixel size, 20x20 pixels From

UCL DEPARTMENT OF GEOGRAPHY Spatial resolution –formal definiton: a measure of smallest angular or linear separation between two objects that can be resolved by sensor Determined in large part by Instantaneous Field of View (IFOV) –IFOV is angular cone of visibility of the sensor (A) –determines area seen from a given altitude at a given time (B) –Area viewed is IFOV * altitude (C) –Known as ground resolution cell (GRC) or element (GRE) 8 Spatial resolution

UCL DEPARTMENT OF GEOGRAPHY Problem with this concept is: –Unless height is known IFOV will change e.g. Aircraft, balloon, ground-based sensors so may need to specify (and measure) flying height to determine resolution –Generally ok for spaceborne instruments, typically in stable orbits (known h) –Known IFOV and GRE 9 Spatial resolution

UCL DEPARTMENT OF GEOGRAPHY 10 Spatial resolution

UCL DEPARTMENT OF GEOGRAPHY IFOV and ground resolution element (GRE) 11 GRE = IFOV x H where IFOV is measured in radians H IFOV GRE

UCL DEPARTMENT OF GEOGRAPHY Total field of view 12 Image width = 2 x tan(TFOV/2) x H where TFOV is measured in degrees H

UCL DEPARTMENT OF GEOGRAPHY Image pixels often idealised as rectangular array with no overlap In practice (e.g. MODIS) –IFOV not rectangular –function of swath width, detector design and scanning mechanism –see later IFOV and ground resolution MODIS home page:

UCL DEPARTMENT OF GEOGRAPHY Ultimately limited by instrument optics –diffraction effects bending/spreading of waves when passing through aperture –diffraction limit given by Rayleigh criterion sin  = 1.22 /D, where  is angular resolution; is wavelength; D diameter of lens –e.g. MODIS D = m, f = in SWIR ( 900x10 -9 m) so  = 3.54x10 -4°. So at orbital altitude, h, of 705km, spatial res   h  250m 14 Angular resolution D

UCL DEPARTMENT OF GEOGRAPHY Digital image is a discrete, 2D array recording of target radiometric response –x,y collection of picture elements (pixels) indexed by column (sample) and row (line) –pixel value is digital number (DN) –NOT physical value when recorded - simply response of detector electronics –Single value (per band) per pixel, no matter the surface! Analogue image is continuous –e.g. photograph has representation down to scale of individual particles in film emulsion 15 Aside: digital v Analogue

UCL DEPARTMENT OF GEOGRAPHY PSF: response of detector to nominal point source Idealised case, pixel response is uniform In practice, each pixel responds imperfectly to signal –point becomes smeared out somewhat 16 Point spread function: PSF reality

UCL DEPARTMENT OF GEOGRAPHY Example PSF of AVHRR (Advanced Very High (!) Resolution Radiometer) 17 Point spread function: PSF

UCL DEPARTMENT OF GEOGRAPHY Scan of AVHRR instrument –elliptical IFOV, increasing eccentricity with scan angle 18 AVHRR IFOV

UCL DEPARTMENT OF GEOGRAPHY Interesting discussion in Cracknell paper –mixed pixel (mixel) problem in discrete representation 19 What’s in a pixel? Cracknell, A. P. (1998) Synergy in remote sensing: what’s in a pixel?, Int. Journ. Rem. Sens., 19(11),

UCL DEPARTMENT OF GEOGRAPHY If we want to use RS data for anything other than qualitative analysis (pretty pictures) need to know –sensor spatial characteristics –sensor response (spectral, geometric) 20 So.....?

UCL DEPARTMENT OF GEOGRAPHY High (10s m to < m) Moderate (10s - 100s) Low (km and beyond) 21 Examples Jensen, table 1-3, p13.

UCL DEPARTMENT OF GEOGRAPHY 22 Low v high spatial resolution? From What is advantage of low resolution? –Can cover wider area –High res. gives more detail BUT may be too much data Earth’s surface ~ 500x10 6 km 2 ~ 500x10 6 km 2 At 10m resolution 5x10 12 pixels (> 5x10 6 MB per band, min.!) At 1km, 500MB per band per scene minimum - manageable (ish) –OTOH if interested in specific region urban planning or crop yields per field, 1km pixels no good, need few m, but only small area Tradeoff of coverage v detail (and data volume)

UCL DEPARTMENT OF GEOGRAPHY 23 Spectral resolution Measure of wavelength discrimination –Measure of smallest spectral separation we can measure –Determined by sensor design detectors: CCD semi-conductor arrays Different materials different response at different e.g. AVHRR has 4 different CCD arrays for 4 bands –In turn determined by sensor application visible, SWIR, IR, thermal??

UCL DEPARTMENT OF GEOGRAPHY Remember atmospheric “windows”? 24

UCL DEPARTMENT OF GEOGRAPHY 25 Spectral resolution Characterised by full width at half-maximum (FWHM) response –bandwidth > 100nm –but use FWHM to characterise: –100nm in this case From: Jensen, J. (2000) Remote sensing: an earth resources perspective, Prentice Hall. Ideal bandpass function

UCL DEPARTMENT OF GEOGRAPHY 26 Multispectral concept Measure in several (many) parts of spectrum –Exploit physical properties of spectral reflectance (vis, IR) –emissivity (thermal) to discriminate cover types From

UCL DEPARTMENT OF GEOGRAPHY Spectral information: vegetation 27 vegetation

UCL DEPARTMENT OF GEOGRAPHY 28 Broadband & narrowband From AVHRR 4 channels, 2 vis/NIR, 2 thermal –broad bands hence less spectral detail Ch1:  m Ch2:  m Ch3:  m Ch4,5: &  m

UCL DEPARTMENT OF GEOGRAPHY 29 Broadband & narrowband From SPOT-HRVIR –another broad-band instrument

UCL DEPARTMENT OF GEOGRAPHY 30 Broadband & narrowband From CHRIS-PROBA –Compact Hyperspectral Imaging Spectrometer – Project for Onboard Autonomy –Many more, narrower bands –Can select bandsets we require

UCL DEPARTMENT OF GEOGRAPHY 31 Broadband & narrowband From CHRIS-PROBA –different choice –for water applications –coastal zone colour studies –phytoplankton blooms

UCL DEPARTMENT OF GEOGRAPHY 32 Aside: signal to noise ratio (SNR) Describes sensitivity of sensor response –ratio of magnitude of useful information (signal) to magnitude of background noise S:N –All observations contain inherent instrument noise (stray photons) as well as unwanted signal arising from atmos. scattering say) –5:1 and below is LOW SNR. Can be 100s or 1000s:1 –SNR often expressed as log dB scale due to wide dynamic range e.g. 20 log 10 (signal_power/noise_power) dB

UCL DEPARTMENT OF GEOGRAPHY 33 Aside: signal to noise ratio Vegetation spectra measured using 2 different instruments –LHS: Si detector only, note noise in NIR –RHS: combination of Si, InGaAs and CdHgTe –Note discontinuities where detectors change (~1000 and 1800nm) Lower SNR

UCL DEPARTMENT OF GEOGRAPHY 34 Multispectral concept MODIS: 36 bands, but not contiguous –Spatial Resolution: 250 m (bands 1-2), 500 m (bands 3-7), 1000 m (bands 8-36) –Why the difference across bands?? bbody curves for reflected (vis/NIR) & emitted (thermal) From

UCL DEPARTMENT OF GEOGRAPHY 35 MODIS (vis/NIR) From

UCL DEPARTMENT OF GEOGRAPHY 36 MODIS (thermal) From

UCL DEPARTMENT OF GEOGRAPHY 37 MODIS: fires over Sumatra, Feb 2002 From Use thermal bands to pick fire hotspots –brightness temperature much higher than surrounding

UCL DEPARTMENT OF GEOGRAPHY 38 ASTER: Mayon Volcano, Philippines From ASTER: Advanced Spaceborne Thermal Emission and Reflection Radiometer –on Terra platform, 90m pixels, both night-time images

UCL DEPARTMENT OF GEOGRAPHY 39 Thermal imaging (~10-12  m) From

UCL DEPARTMENT OF GEOGRAPHY 40 Multi/hyperspectral Multispectral: more than one band Hyperspectral: usually > 16 contiguous bands –x,y for pixel location, “z” is –e.g. AVIRIS “data cube” of 224 bands –AVIRIS (Airborne Visible and IR Imaging Spectroradiometer) x y z From &

UCL DEPARTMENT OF GEOGRAPHY 41 Multi/hyperspectral AVIRIS From

UCL DEPARTMENT OF GEOGRAPHY 42 Multi/hyperspectral AVIRIS From Measured spectra from AVIRIS data

UCL DEPARTMENT OF GEOGRAPHY 43 Multi/hyperspectral

UCL DEPARTMENT OF GEOGRAPHY 44 Multi/hyperspectral

UCL DEPARTMENT OF GEOGRAPHY Some panchromatic (single broad bands) Many multispectral A few hyperspectral 45 Examples Jensen, table 1-3, p13.

UCL DEPARTMENT OF GEOGRAPHY 46 Broadband v narrowband? What is advantage of broadband? –Collecting radiation across broader range of per band, so more photons, so more energy –Narrow bands give more spectral detail BUT less energy, so lower signal (lower SNR) –More bands = more information to store, transmit and process –BUT more bands enables discrimination of more spectral detail Trade-off again

UCL DEPARTMENT OF GEOGRAPHY 47 The Sentinel Era: Part of Copernicus programme (GMES as was) –“…accurate, timely, easily accessible information to improve management of the environment, understand/mitigate climate change and ensure civil society” Sentinel missions will service these requirements MULTIPLE missions to improve temporal sampling and reliability S1A, B (6/2014, 2015) C-band RADAR mapping S2A, B (2015, 2017) Optical high res LAND mission S3A, B, C (2015, 2017, 2019?) Optical med res LAND, OCEAN mission S4: MTG-1 (2017), MTG-S (2019) Atmospheric, geostationary S5: 2020 Atmospheric, S5-P (2016) to provide continuity with Envisat instruments ving_the_Earth/Copernicus/Overview4

UCL DEPARTMENT OF GEOGRAPHY 48 Sentinel 1: Orbits, swaths, payload w4

UCL DEPARTMENT OF GEOGRAPHY 49 Sentinel 2: Orbits, swaths, payload w4

UCL DEPARTMENT OF GEOGRAPHY 50 Sentinel 2: Orbits, swaths, payload w4

UCL DEPARTMENT OF GEOGRAPHY 51 Summary Angular, temporal, spectral resolution Function of orbit, swaths etc. Optimised for mission requirements Sentinels exemplify approach of MULTIPLE platforms Allows for higher spatial/temporal resolution and/or reliability Provide continuity of older missions eg OLCI & SLSTR on S2 for MERIS & AATSR, S5-P for SCIAMACHY May need to compromise on spectral, spatial BUT continuity vital (see Essential Climate Variables ECVs)