ultraviolet reflectance for several illumination
and canopy conditions. Therefore, the
ultraviolet spectral region reflectance is
assumed to be represented by the visible
reflectance.
The absence of a shortwave middle-IR detector
on the AVHRR may introduce errors to over 20% in
comparison to using a near-IR reflectance (0.72-
1.30 ¡jinx) to represent a total shortwave IR region
(0.72-1.30 /Jm) (Toll 1989). Brest and Goward
(1987) used 0.5 times the near-IR reflectance to
estimate a shortwave middle-IR reflectance.
However, the near-IR optical properties for green
vegetation are markedly different than for the
middle-IR with a substantially higher absorptance
of solar radiation (three to eight times higher
green leaf absorptance) in the middle-IR.
Landsat Thematic Mapper (TM) satellite
derived reflectance in the visible and near-IR
regions were compared against a middle-IR
reflectance for the purpose of estimating a
middle-IR reflectance from the AVHRR sensing in
only the visible and near-IR regions of the solar
band. The TM has three bands in the visible, one
in the near-IR, and two in the middle-IR. The TM
spectral data were radicmetrically calibrated to
radiance, corrected for Sun zenith angle and
Earth-Sun distance, and converted to an
exoatmospheric reflectance using Neckel and Labs
(1984) solar irradiance data. The available TM
digital scenes in western Africa for analysis was
low due to few scene acquisitions, a high cloud
cover, and a low satellite overpass cycle (i.e.,
once every 18 days) . The Landsat Thematic Mapper
data for three dates were analyzed. The three
Landsat IM scenes selected for analysis were on
August 21, 1984 (17057’N 8°0’E scene center
point) September 24, 1984 (15055’N 14° 55’W), and
October 23, 1986 (14o27’N 16o44’W).
Regression analysis results between derived
spectral reflectances (i.e, band combinations
between the visible and near-IR versus the
middle-IR spectral regions) are given in
Tables 2(a-c). To reduce spatial autocorrelation
effects and hence statistical interdependence,
the IM pixel data were sampled by at least every
tenth pixel (or greater) in both the across and
along scan line directions (Labovitz et al.
1982). An estimated exoatmopsheric NDVI is also
included for an indication of green leaf
vegetative density.
i ! j S V° rtwaVe ^àdl^-JR spectral reflectance estimât
related analyses using October 23, 1986 Landsat TM data.
ANOVA STATISTICS
TM-Band#
Indep. Var.
2
3
4
mat
(2*3)
(2*3)*4
(2*3) ,4*MAT
Offset* Slope*
-15(.00) 3.06(.03)
-.02(.00) 2.18( .01)
.23( .01) 0.10(.04)
■ 48(.00) -0.56(.00)
-. 08 (. 00) 2.92(. 02)
F-Value
R2
c.v.
10308.6
0.82
8.44
23928.0
0.91
5.85
6.3
0.00
19.71
12596.8
0.84
7.77
18506.8
0.89
6.57
11277.5
0.91
6.01
8594.6
0.92
5.65
* - Standard error given in parentheses.
Pearson Correlation Coefficients
2
2
3
4
(2*3)
15*7)
3
.96
4
.18
.61
(2*3)
.98
.99
.09
(5*7)
.90
.96
-.05
.94
Mm
-.83
-.93
.33
-.90
-.92
Table 2b. Shortwave Middle-IR spectral reflectance estimate
related analyses using September, 24, 1984 Landsat TM data.
Indep. Var.
Offset*
Slope*
F-Value
R2
C.V.
2
.14(.01)
1.40(.03)
1813.6
0.36
3.64
3
. 08 (. 00)
1.31(.02)
6432.4
0.67
2.63
4
,06(.01)
1.31(.02)
4694.1
0.59
2.90
MAT
.46(00)
-. 42 ( . 03)
250.3
0.07
4.37
(2*3)
08(.01)
1.48(.02)
3920.0
0.55
3.06
(2*3) *4
-
-
2607.1
0.62
2.81
(2&3),4,JfcNDVI
-
-
3589.2
0.77
2.18
* - Standard error given in parentheses.
Pearson Correlation Coefficients
2
2
3
4
(2*3) (5*7)
3
.88
4
.79
.86
—
(2*3)
.96
.97
.85
—
(5*7)
.59
.81
.77
.74
MAT
-.34
-.46
.05
-.42 -.26
Table 2c.
October
23,
1986
, Pearson
correlation coefficients.
(2&3) 4 (5Ä7)
(2&3)
4 .83
(5Ä7) .80 . 84
Overall the relationship of the visible and
near-IR reflectance to the middle-IR reflectance
is strong, with a multiple regression coefficient
(R) of 0.62 and higher (Tables 2a and 2b) .
Except for the 1984 scene (r= - 0.05) the linear
relationship of the near—IR to shortwave middle-
IR reflectance relationship is strong (r=0.77 and
r=0.84). In ccmparison, the linear relationship
of a middle-IR to a visible reflectance is strong
for all three dates (0.74<r<.94). A reason for
the closer link between visible and middle-IR
derived reflectance over the link between near-IR
and middle-IR may be attributed to a closer
similarity of leaf absorptance related effects
between regions. Specifically, the plant
pigments (primarily chlorophyll) absorb radiation
in the visible and canopy water absorb radiation
in the middle-IR. Of note, the strength of the
visible to the middle-IR relationship is not
significantly improved by the addition of NDVI in
the analysis—of-variance for the dry October 23,
1986 scene (Table 2a). However, for the densely
vegetated Sept. 24, 1984 scene, the incorporation
of an NDVI improved the estimation of a middle-IR
reflectance (Table 2b). Based on the TM related
findings and examination of the spectra published
in Bowker et al. (1985), we estimated an area
specific middle-IR reflectance frcm the AVHRR
spectral data by multiplying the AVHRR visible
reflectance by 1.5 (i.e., £>smir = Pvis * 1-5).
Table 3 gives the percentage of solar
irradiance incident at the surface in terms of
diffuse, direct and global (direct + diffuse)
radiation integrated over the four major spectral
regions. The relative proportion of surface
radiation by spectral region gives the weighting
for the solar band estimation in Equation 5. The
atmospheric radiative transfer data of Dave’
(1978) using three mid-latitude models (Model 2:
atmospheric gaseous absorption with no aerosols;
Model 3: gaseous absorption with a low aerosol
loading; and Model 4: gaseous absorption with a