In: Wagner W., Székely, B. (eds.): ISPRS TC VII Symposium - 100 Years ISPRS, Vienna, Austria, July 5-7, 2010, IAPRS, Vol. XXXVIII, Part 7B
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Direct scattering from the canopy and the soil, as well as
multiple interactions between the vegetation components and
the soil, all contribute to the magnitude and scattering
characteristics of the SAR response. Simple linear or non-linear
expressions fail to adequately express the interaction of
microwaves with a complex vegetation-over-soil target. A
physically-based modeling approach is essential for analyzing
the interaction of crop biological variables and SAR backscatter
over a wide range of crop conditions and sensor configurations.
In this study, L- and C-band backscatter at certain polarizations
exhibited a strong correlation with LAI. Some of the
unexplained error in these simple correlations may be
attributable to contributions from the soil moisture. Therefore,
the water cloud model was used to model the effect of LAI and
surface soil moisture on SAR backscatter.
Data needed to parameterize soil moisture in the water cloud
model were available from the in situ measurements taken
coincident with the RADARSAT-2 and ALOS overpasses. No
in situ measurements were available for the August 21
TerraSAR-X acquisition. Thus TerraSAR-X data were not
implemented into the water cloud model.
For the com and soybean crops, the mean backscatter was
extracted for a 70 x 70 metre area centred on the soil moisture
sampling sites. A similar approach was taken to calculate
average LAI for each site, from the LAI maps derived from the
optical data.
To overcome instability problems caused by possible
correlations between parameters, a two-step procedure was
taken. The model parameter D defining the radar sensitivity to
soil moisture was first determined using an independent data
set. Once parameter D was fixed, the remaining parameters A,
B, E, and C were then simultaneously determined. Three of the
soybean fields were seeded late because of an unusually rainy
spring season, and thus for eleven soybean sites, the soybean
crop had not yet emerged at the time of the June 12 FQ6 and
June 15 FQ20 RADARSAT-2 acquisitions. For the
PALSAR/ALOS acquisition on May 23, 2007, soil moisture
measurements were taken during the satellite overpass. At that
time, most of fields were bare as crops had not yet emerged.
Based on these data, a linear regression model was developed to
describe the relationship between SAR backscatter and soil
moisture in the absence of vegetation. This process was used to
determine and fix the parameter D. Next, the remaining
parameters in the model, A, B, E and C, were determined using
a non-linear least squares method in the Matlab Curve Fitting
Toolbox environment, based on the Levenberg-marquardt
algorithm.
The degree of model fit was indicated by the coefficient of
determination (R 2 ) and RMSE, and these statistics are provided
in Table 3.
SAR
Com
Soybeans
Backscatter
Coefficient oi
determination
(R 2 )
RMSE
(power)
Coefficient of
determination
(R ! )
RMSE
(power)
PALSAR/ALOS
HH
0.78
0.013
0.44
0.019
HV
0.81
0.002
0.38
0.005
RADARSAT-2 FQ20
HH
0.63
0.026
0.10
0.022
HV
0.78
0.004
0.07
0.003
RADARSAT-2 FQ6
HH
0.26
0.038
0.43
0.019
HV
0.71
0.004
0.38
0.005
Table 3. Statistics describing the fit of the water cloud model to
SAR backscatter
A good model fit was achieved for most SAR configurations for
com, with coefficients of determination (R; reaching 0.63-
0.81. The one exception was the poor correlation for C-HH
backscatter (RADARSAT-2 FQ6). For soybeans, the water
cloud model provided only weak correlations for all SAR
frequencies and polarizations. In figure 3, the fitted models
using the L-HV backscatter are plotted against the observed
data for com.
Corn
Soil moisture (%) ' . ... 2 -2,
v ' LAI (m m )
Figure 3. Modeled and observed L-HV backscatter expressed as
a function of soil moisture and LAI for com.
For com, the highest correlations were again reported for L-
band backscatter at HH and HV polarizations. Slightly lower
correlations were reported at most C-band polarizations except
for C-HH backscatter (RADARSAT-2 FQ6 mode). Backscatter
from soybeans, regardless of frequency or polarization, were
not significantly correlated with LAI.
5. CONCLUSION
This study investigated the relationship between multi
frequency SAR backscatter and LAI for com and soybean
crops. TerraS AR-X dual-polarized stripmap data (X-band),
RADARSAT-2 Fine beam quad-polarized data (C-band) and
ALOS PALSAR dual-pol data (L-band), as well as optical data
including the Compact Airborne Spectragrahic Imager (CASI)
and SPOT-4 multi-spectral data were acquired during the 2008
crop growing season. SAR backscatter was extracted from each
SAR image. LAI maps were derived from the optical images at
a detailed pixel level. Object-based segmentation of the LAI
maps defined the basic sampling unit upon which mean LAI
and SAR responses were calculated.
A statistical correlation analyses quantified the relationship
between the SAR parameters and LAI. High correlation
coefficients with com LAI were found for L-band and C-band.
The highest correlation coefficients (r=0.90—0.96) were
reported for L-HH, L-HV and C-HV (RADARSAT-2 FQ6