The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences. Voi. XXXVII. Part Bl. Beijing 2008
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document and algorithm specifications can be found in
(Williams, 2006). PolSARproSim is capable of generating
PolInSAR images with different wavelengths, imaging
geometries, ground surface properties, forest types, etc. It is
well suited for performing sensitivity analyses with respect to
various parameters although it should be noted that is has yet to
be validated over a large range of conditions. We have used the
simulator to create a number of datasets with different input
parameters. For illustration purpose, the cases of 20m Pine tree
and 10m deciduous trees over a ground surface with three
different smoothness levels are selected as our simulated
datasets. Table 1 summarizes the simulation configurations.
Note the surface property value is only a scalar number with
“0” as smoothest and “10” as roughest. Similarly the ground
moisture content value uses “0” for driest case and “10” for
wettest case. The outputs of the simulator consist of co
registered SLCs at different polarizations, a flat-earth phase file,
and a vertical wave number (Xz) file. The Kz value for this
simulated data is 0.13 Rad/m.
Platform Altitude (m)
3000
Incidence Angle (°)
45
Baseline H / V (m)
10/0
Ground Surface Properties
0,5, 10
Ground Moisture Content
4
Trees Species
Pine 1/ Deciduous
Mean Tree Height (m)
20/10
Forest Stand Density (Stems/Ha)
300/150
Forest Stand Area (Ha)
1
Table 1. PolSARproSim simulation configuration
The results of tree height estimation are shown in Figure 2 for
20m pine tree and Figure 3 for 10m deciduous trees. In both
cases, we have three outputs for the three types of ground
surface. In Figure 2 and 3, the green and blue solid lines are the
phase centers corresponding to the two ends of the coherence
region; the red solid line is the estimated ground phase center,
and the green and blue dashed lines are the height from: Ground
plus Estimated h v using approach two and three respectively.
These profiles are in the range direction with illumination from
the left. There appears to be an edge effect - probably from
layover - that causes the anomaly at the leading edge of the
profiles. We ignore it in this work.
The results show that when the ground surface is smooth,
permitting strong dihedral return, (or in another words, when
the ground contribution is large enough), the phase optimization
algorithm works well in estimating the ground elevation for
both types of trees. Subsequently, three tree height estimation
algorithms gave a quite encouraging result. The DEM
differencing approach estimated about 70% of the designed h v ,
while the other two estimated about 90% with very similar
performance (See Table 2).
When the ground contribution becomes less, the estimation of
ground elevation becomes worse, as expected. This in turn
reduces the tree height estimation accuracy. In case (c) where
there is almost no ground return, the topographic phase estimate
is biased and noisy. Without ‘a priori’ ground information in
this case, the derived canopy height will be severely
underestimated and noisy.
simulated dataset for 20m pine tree: a) top - smooth ground
surface; b) middle - medium rough ground surface; c) bottom -
rough ground surface (See text).
C*«m Prof-K- •- Center»
Cross Profile Phgse
simulated dataset for 10m deciduous tree: a) top - smooth