Table 3. Variables Required to Meet Varying Accuracies
354
Accuracy
(100-E)
# variables
Moffet field
(1 scene)
# variables
1% sample
(28 scenes)
# variables
1% sample +1% bad
(28 scenes)
90% 1 1
99% 3 3
99.9% 9 8
99.95% - 15.
99.96% - 20
1
4
12
19
23
The recommended spectral bands are presented in table 4.
Table 4. Recommended bands for the 28 AVIRIS scenes (¿tm)
0.40-0.44
0.48-0.55
0.60-0.68
0.69-0.70
0.72-0.74
0.75-0.85
0.90-0.93
0.97-0.99
0.99-1.08
1.11-1.16
1.17-1.22
1.23-1.28
1.29-1.31
1.43-1.48
1.50-1.56
1.57-1.71
1.97-1.99
2.07-2.08
2.09-2.16
2.21-2.24
2.26-2.31
2.41-2.47
2.48-2.50
Finally, each of the coefficient images (S^) for each of the 28 scenes was
studied visually. Small variance images (i>23) still showed signals at a
level of a few tenths of a percent. Possible explanations include instrument
noise, spectral misregistration, broad atmospheric variations between images
(aerosols), and true scene to scene variability. Little or no evidence was
found for isolated surface types with extraordinary spectral features such as
minerals.
5. COMPARISON OF SURFACE AND AVIRIS SPECTRA: THE EFFECT OF THE ATMOSPHERE
There exists a systematic difference between the shapes described by the basis
functions for surface/laboratory spectra, and those derived from AVIRIS data.
This difference is due to water vapor absorption features in the AVIRIS
spectra. The sample sizes for the data sets are disproportionate, consisting
of a few thousands of surface spectra, and almost 10 million AVIRIS spectra.
Therefore we have used all the surface spectra plus a sample of the AVIRIS
spectra, with a larger number of AVIRIS spectra because these have not been
corrected for atmospheric absorption or solar zenith angle, and thus have
lower "effective" reflectances. By combining these data sets, with the
regions of strong water absorption (defined previously) omitted, we find that
the weak absorption features in the AVIRIS spectrum represent the third most
important shape variable (basis function) in the ensemble. However since our
goal is to invert AVIRIS spectra to obtain spectra having the same shapes as
surface spectra, we select spectral intervals which are suitable for
describing both types, then identify a spectral band which specifies the
atmospheric effect. Thus using 11 bands at (0.40-0.49, 0.50-0.70, 0.71-0.73,
0.74-0.83, 0.97-1.11, 1.23-1.34, 1.48-1.54, 1.55-1.77, 2.03-2.14, 2.15-2.36,
and 2.41-2.50/im), we can describe both surface and AVIRIS spectra very well,
except in the regions of strong water vapor absorption. Are these 11 broad
band intervals sufficient to provide a reasonable estimate of reflectance in
regions where atmospheric water vapor causes a difference from ground values,
as is required for estimation of atmospheric water vapor, and for possible
identification of surface types? By calculation on the surface ensemble we
may compare this approach with the Continuum Interpolated Band Ratio (CIBR)
and the Narrow/Wide (N/W) algorithms, as discussed in Carriere and Conel
(1993). The CIBR method averages spectral values at 0.88 ¿¿m and 1.10 Atm to