The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences. Voi. XXXVII. Part Bl. Beijing 2008
After windowing, modulation, and normalization, the value of
the interpolated point is:
£x(/fc)F(* - m)W(k - m)M(k - m)
Eq. (9) is only for one dimensional (ID) data, or one
row/column of a SAR image. To resample the 2D SAR image,
one can apply Eq. (9) separately: range interpolation and
azimuth interpolation. If the sine length is S, (S+l) ID
interpolation computations are needed, S of which are
performed along the range (rows) around the interpolated point
and the (5+/)th ID interpolation computation is for
interpolating the S interpolated range values along azimuth
direction (columns). One can find more explanation about the
above equations in the ESA manual (ESA, 1999).
The non-zero Doppler centroid for ERS SAR images is only
along the azimuth direction. No modulation is needed for range
interpolation, and only azimuth interpolation requires
modulation.
In this research, two ID sine interpolations were not employed
separately, but one 2D sine interpolation simultaneously. The
2D separable sine function is applied:
computed to evaluate InSAR DEM accuracy, in order to
evaluate SAR image coregistration.
3. DATA, TOOLS AND EXPERIMENT
3.1 Data and Tools
As the SAR data, two pairs of ERS-1/2 tandem mode single
look complex images were used. Those ERS SAR data were
granted through project 3889 by ESA.
The first pair consists of one ERS-1 image acquired on
November 8, 1995, and one ERS-2 image acquired on
November 9, 1995. The rough perpendicular baseline between
them is 236 meters. This pair covers about 10 counties in
northern Indiana, USA. This area is a flat area.
The second pair consists of one ERS-1 image acquired on
October 20, 1995, and one ERS-2 image acquired on October
21, 1995. The rough perpendicular baseline between them is
145 meters. This pair covers about 10 counties in southern
Indiana, USA, a more hilly area.
The reference DEM was produced from the “Indiana 2005
State-wide Orthophotography Project”, which includes a high
resolution DEM (Orthophoto DEM). The DEM has 5-foot
(~1.5m) post spacing and 6-foot (~1.8m) vertical accuracy at
95% confidence level.
F(n x ,n y ) = Sinc\n{n x + A x )]Sinc[7r(n y + )J,
2 2
A,,A, e[-0.5,0.5)
(S,-l)
2
(10)
Matlab is the main tool that was employed for SAR image
coregistration and coherence computation. Leica ERDAS
IMAGINE was used for generating a final InSAR DEM.
3.2 Experiment
The sine length S can also be different for range and azimuth
direction. All the other additional equations also need
modifying to 2D cases accordingly, except Eq. (8), where the
modulation is still applied one dimensionally, i.e. in the
azimuth direction. The computational effort for 2D sine
interpolation is one ID interpolation less than two separate ID
sine interpolations.
The sine length S is an odd number in Eq. (10). It can also be
even number too. Hanssen and Bamler simulated sine
interpolation with sine length of even number (Hanssen and
Bamler, 1999). The paper from the European Space Agency
proposed a sine length of odd number. In this research, sine
lengths of both even and odd numbers are applied.
These algorithms are applied and discussed with real ERS SAR
data. The advantage and disadvantage of using sine
interpolation are discussed in this investigation.
2.2.4 Coregistration Evaluation
Most InSAR researches apply the coherence image to evaluate
the performance of SAR image coregistration. In this study, the
average of the whole coherence image is used as criteria, to
evaluate the coregistration results from the above coregistration
functions and algorithms.
The final InSAR DEM is certainly another good criterion for
estimating SAR image coregistration. The better coregistration
performance should result in a higher InSAR DEM accuracy,
i.e. a lower InSAR DEM error. The Root Mean Square Error
(RMSE) between the InSAR DEM and the reference DEM is
The experiments for SAR image coregistration were also
motivated by the rapidly improving hardware capabilities,
while it was not easy to implement these computationally
intensive algorithms before. These SAR image coregistration
algorithms can now be evaluated in a different computational
environment.
The main experiment is to examine and compare interpolators,
including nearest neighbor, bilinear, cubic convolution and sine
function, implement and verify sine add-ons for SAR image
coregistration, using ERS SAR data.
For coarse coregistration, complex and magnitude only were
tested and compared for cross-correlation computation. The
magnitude only should be good enough for coarse
coregistration.
More experiments were performed for fine coregistration. To
obtain subpixel cross-correlation peak, both oversampling
cross-correlation function and oversampling SAR images were
tested and compared. Also 1/10 pixel accuracy requirement was
examined by comparing oversampling cross-correlation
function by the factors of 10 times and 100 times.
Four parameter transformation equations, which are sufficient,
were mostly agreed. Six and 12 parameter transformation
equations were tested as well, and it is interesting to see how
much the coregistration can be improved using these higher
ordered transformation equations, considering computation
effort is not the issue as it was in the 1990's.
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