The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences. Vol. XXXVII. Part Bl. Beijing 2008
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SBAS approach. Then we focus on the results investigated by
the simplified SBAS method in Nanjing, P. R. China. The last
section is dedicated to the conclusion, summarizing the main
findings in the paper.
2. DESCRIPTION OF THE SBAS-DINSAR
ALGORITHM
A detailed discussion on the basic SBAS approach can be found
in P. Bernardino (P. Berardino, 2002); accordingly, we
highlight in this section what are the key issues of the algorithm.
Considering N +1 SAR images relative to the same area,
acquired at the chronologically ordered times (t 0 , ,7^);
assuming that each acquisition may be combined with at least
one other image, also assuming that all the images are co
registered with respect to an image referred to as master one
that allows us to identify a common spatial grid. The starting
point of the SBAS technique is represented by the generation of
a number, say M, of multilooked DlnSAR interferograms that
involves the previously mentioned set of N +1 SAR
acquisitions. Note also that each of these interferograms should
be calibrated with respect to a single pixel located in an area
chat can be assumed stable or, at least, with known deformation
behaviour; this point is referred to as reference SAR pixel or
reference point.
Now considering a generic pixel of azimuth and range
coordinates (x, t) ; the expression of the generic j-th
interferogram ( j = 1, , M ) computed from the SAR
acquisitions at times 1 4 and t B , will be the following (Tizzani
P., 2007):
5(f)j (x, r) = (j){t B ,x,r)~ (f){t A , X, r)
\n (1)
* — W (t B , X, r) - d(t A , x, r)]
A
And
^,x,r) = —-d(t i9 x,r)
Ä
d(t 0 ,x,r) = 0
where A is the radar wavelength, is the unknown
phase of the image involved in the interferogram generated
between the time t Q and , d(t A ,X,V) and
d{t B , X, r) are the radar line of sight (LOS) projections of the
cumulative surface deformation at the two times t A and t B .
In order to get a physically sound solution, replace the
unknowns with the mean phase velocity between time-adjacent
acquisitions, the new unknowns become:
A _ &N ~ ( j ) N-1
t —t ’ 1 t —I
M ‘0 l N 1 N-l
take (2) into (1):
V =[Vj
j
Z 0k ~h-ù v k = 30j (3)
k=ISj+1
organized in a matrix form, finally leads to the expression
Bv = 0(f)
(4)
Note that in the equation (3) IE and IS corresponding to the
acquisition time indexes associated with the image pairs used
for the interferogram generation, note also that we assume the
master (IE ) and slave (IS ) images to be chronologically
ordered, i.e., IEj > IS., V/ = 1, , M , in the
equation(4), B is M x TV matrix. Of course, when solving the
equation(4), the SVD decomposition is applied to the matrix B ,
and the minimum-norm constraint for the velocity vector V is
applied in the final solution, to achieve the final solution (f), an
additional integration step is necessary.
3. SBAS-DINSAR BASED ON PRIOR KNOWLEDGE
In fact, deformation in each image pixel has some relations
between each acquisition, by including a mode for the phase
behaviour, the above inverse problem can be simplified.
Assuming a linear relationship between the new model
parameter vector p and the wanted velocity vector V :
V = Mp
(5)
Where the columns of hi describe the vector component of V ,
substituting this in(4) gives
BMp — 5(f)
(6)
A cubical model for the phase time variation can be written as: