IAPRS & SIS, Vol.34, Part 7, “Resource and Environmental Monitoring”, Hyderabad, India, 2002
spectral resolution scanners, such as the multispectral scanners
(e.g. Landsat- TM/ ETM+, JERS-OPS etc.). This allows
identification of broad mineral groups like iron-bearing,
hydroxyl bearing, carbonate bearing etc. Landsat TM data has
been extensively used for such applications world-wide.
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Processing of Hyperspectral remote sensing data is quite
different from that of multispectral data. There are hundreds of
channels and the data may be of 12-bit or 16-bit type; therefore
special processing strategies and high computational facilities
are required. The rectification of hyperspectral data involves
first pre-processing (which aims at converting raw radiance data
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Figure 1. Absorption bands in the optical region, which enable remote sensing mapping of
mineral assemblages and rocks. Bands in the VIS-NIR-SWIR correspond to low
reflectance, and those in the TIR to low emittance
Laboratory data show that changes in the chemical composition
of minerals are characterized in terms of subtle changes in their
spectral characters. It has been found that these spectral features
have in general a width of 10-40 nm. Hence, spectral sampling
at a 10 nm interval is generally considered suitable for obtaining
information on chemistry of minerals.
2.1.2 Hyperspectral Sensing: Hyperspectral sensing is used to
collect image data in a large number (nearly 100 — 200) of
narrow spectral bands, which allows generation of almost
continuous spectrum at each pixel (Fig. 2). Sensors used for this
type of study include the various aerial hyperspectral sensors
(AVIRIS, GERIS, DIAS, HYDICE, PROBE etc.) and the new
spaceborne Hyperion. The image data after adequate
rectification and calibration are compared to field /laboratory /
library spectra.
This allows identification of minerals and mapping their relative
abundances. For this purpose, a large amount of data on spectra
of various types of objects (minerals, rocks, plants, trees,
organic substances etc.) has been generated and stored in
spectral libraries.
GROUND SCENE
into spectrally and spatially rectified at-sensor data) and then
radiance-to-reflectance transformation.
After rectification, the hyperspectral sensor data take the form
of reflectance image data in numerous contiguous bands. The
large amount of image data has to be processed for a positive
discrimination and meaningful interpretation. The general
approach involves characterization of the absorption features,
comparison to ground truth (spectral libraries) and analysis (e.g.
Mustard and Sunshine 1999). Fig. 3 shows an example of
comparison of simplified AVIRIS spectra and the
corresponding laboratory spectra (van der Meer, 1999).
2.1.3 Spectral Unmixing: In most cases, a pixel is.composed of
mixed objects, i.e. often there are many spectrally diverse
objects present within a pixel. The collective response of all the
end members present in different proportions is recorded at the
remote sensor. the aim is to decipher these constituents and
their relative proportions with-in a pixel.
In the context of hyperspectral sensing in the SOR, three types
of physical mixtures are identified: (a) linear mixture (b) non-
DN (i,j)
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Figure 2. Concept of hyperspectral sensing
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