Title: EOS 740 Hyperspectral Imaging Systems
1EOS 740 Hyperspectral Imaging Systems
February 11, 2005 Week 3
Ron Resmini v 703-735-3899 ronald.g.resmini_at_boein
g.com Office hours by appointment
Put EOS740 in the subject line of e-mails to
me...Thanks!
2Outline
- The nature of HSI the data cube a review
- Scientific principles of HSI RS
- The remote sensing process
- Information extraction
- Using ENVI a review
- More information on your HSI data
- A thread through the HSI analysis process
- Building a product/exporting from ENVI
- Band and spectral math
- Spectral libraries
3Hyperspectral Sensing Concept (Cont.)
Graphic from JPL
4Properties of the Data Cube
- of samples, lines, bands
- Headers, preline, postline, footers, etc.
- Data type
- Interleaving
- Byte order
- Center wavelengths, FWHM
- Bad bands list
- Band names (very optional)
- The logical and physical data cube
- The ENVI .hdr file
- History file (it doesnt exist) keep notes!
5A Few Scientific Principles of HSI RS
- Sensors measure radiance as a function of
wavelength - Radiance (W/m2.sr.mm) (spectral)
- Materials interact with electromagnetic radiation
(EMR) - Materials reflect, absorb, and/or transmit EMR
- HSI is based on discerning/measuring the
interaction oflight (photons, waves) with matter - Other radiometric quantities, units, etc. of RS
- Irradiance (W/m2.mm) (spectral)
- Reflectance
- Emissivity
6- Traditional HSI spectral ranges
- VNIR/SWIR (0.4 to 2.5 mm), MWIR (3 to 5 mm), LWIR
(7 to 13 mm) - Determined by h/w considerations and atmospheric
windows - Do not be so constrained when considering other
apps. for HSI - HSI is really a problem in inversion we sense
the answerwe work backwards from there we
sense boundary conditionsin one instant in time - Key statement
- The spectrum is the fundamental datumin imaging
spectrometry
7The Spectrum is the Fundamental Datum in Imaging
Spectrometry
8- What you need to know about your data a
check-list - Date, time, location, ground elevation, platform
elevation,heading, GSD, be able to calculate
where the sun isi.e., all RS angles (geometry) - On-going sensor characterization know what it
is ask for it! - Spatial sampling spatial resolution
- Spectral sampling SRF spectral resolution
- NESR, NEDr, NEDe, NEDT
- Issues smile, keystone, FPA misregistration,
vibration,parallax, scattered light,
self-emission, platformmotion/imaging
distortions, etc. H/W guest lecturer willcover
these.
9HSI RS facilitates remote material identification.
This capability also allows material
characterization and quantification. Its
spectroscopy.
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12Information Content and Extraction
- HSI RS is based on the measurement of a physical
quantityas a function of wavelength its
spectroscopy - HSI is based on discerning/measuring the
interaction oflight (photons, waves) with matter - The sun is the source or active systems or very
hot objects - Earth RS scenarios involve the atmosphere
- There are complex interactions in the atmosphere
- There are complex interactions between light and
targetsof interest in a scene - There are complex interactions between light,
targets ofinterest, and the atmosphere - Theres a lot (lots!) of information in the
spectra
13Working with ENVI (1 of 2)
- Hows the homework assignment going?
- Data CD contents questions?
- Help files
- Open files
- Grayscale images
- Histogram/interactive stretching
- Animation
- Color composite images
- Bad bands list
- Looking at spectra radiance and reflectance
- Data statistics
14Working with ENVI (2 of 2)
- Plot window features
- Multiple cubes linking data
- Exporting information
- Building a product
- Information extraction introduction
- Spectral matching overview
- Spectral matching with SAM
- Band and spectral math
- Spectral libraries in ENVI
15What Were Going to Review
- Spectra as vectors points in hyperspace
- Angular separation of vectors (spectra)
- Spectral Angle Mapper (SAM)
- Invariant to albedo...wait a couple of slides
- Running SAM in ENVI
- Application strategies(i.e., in-scene
spectra/library spectra) - Mixed pixels...and SAM...
16The Geometry
Angular Distance Metric (Spectral Angle Mapper or
SAM)
Assume a two band spectral remote sensing system.
Each two point spectrum is a point in Band b
vs. Band a space.
A 2D scatterplot with 2 spectra
The angle, Q, between the two lines connecting
each spectrum (point) to the origin is the
angular separation of the two spectra. Smaller
angular separations in- dicate more similar
spectra.
17The Math
- Chang (2003), ch. 2, pp. 20-21 (see .pdf
file) and... - Assume two 5-band spectra as shown
BTW...read Sec. 2.2 to Sec. 2.2.2 on pp. 20-21
fair game material for the mid-term.
18- Let the 5 bands have band names a, b, c, d, and e
- The output units are radians
- ENVI does all this for you
19- Invariant to albedo...why
A 2D scatterplot with 2 spectra
20- Application strategies
- A few comments on SAM andmixed pixels
- Ch. 2 in Chang (2003) can/shouldENVI do any of
these?
21- Band math
- Spectral math
- CBD, ED from Chang (2003)
22Assignment 2 Due the Week of 25 Feb., 2005
Under Construction
23Project Challenges Ive added some...
- N-P Theory sensitivity to spatial/spectral
subsets - When is spectral mixing linear v. non-linear?
I.e., is this evidentfrom the spectra? - Measure the volume of hyperspace actually
occupied by real HSI data - Spectral angle between spectra and filter
vectors is the separabilitygreater than angles
derived from a confusion matrix analysis of
aspectral library? Use, also, a measure of SCR - Make Mine Virginia Wine. Characterize VA
vineyard soils with HyperionHSI and/or field
spectrometry characterize grape vines
etc...Does HSI have a role in the VA wine
business? - Test various algorithms with target-implanted HSI
data sets - Compare recently published TES routines
- Evaluate noise removal/compensation algorithms
- Spectral indicators for urban lead poisoning and
medical geology
24Project Challenges (continued)
- Invert the SAIL canopy RT model with noise...
- Implement, compare, test algorithms from the
textbook - Assess impact of spectral MTF on subpixel
unmixing - GSD and the geometry of hyperspace...
- Derivative spectroscopy and vegetation RS e.g.,
REDE - Optical bathymetry (e.g., swimming pools)
- Continuation of projects from last semester
BTW...Contributions to scientific knowledgevice
generic techniques studies are also strongly
encouraged.