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2.3 Unique Orthoimage Patch from Image Fusion
When an optimal set of orthimage patches is found from all
candidate sets. The subsequent task is to fuse the radiometric
information from multiple orthoimage patches into unique one.
As Fig. 1 shown, multiple orthoimage patches corresponding to
a terrain area means multiple measurements corresponding to
same ground locations. As the preceding section mentioned, a
major orthoimage patch is decided in an optimal set of
orthoimage patches. If we supposed the radiometric difference
between this major orthoimage patch and other orthoimage
shoubd be a constant. Meanwhile those differences should
conform to the theory of normal distribution. But due to some
factors in imaging process, e.g. sun location, atmospheric
interference, terrain surface material, terrain occlusion and so
on, some radiometric differences could not meet this
assumption. That means that occasionally large random errors,
i.e. blunders, will occur. When blunders exist, a least-squares
adjustment may not be possible or will produce poor or invalid
results. Therefore, in this study, Data Snooping method will be
utilized to exclude the inappropriate radiometric differences
during fusing the multiple orthoimage patches into a unique one.
2.3.1 Data Snooping: Data Snooping was proposed by
Baarda [1968] for blunder detection. In this study, this method
is used to isolate the large radiometric difference between two
orthoimage patches corresponding to the same groundel at some
confidence level. The detailed derivation of this method can
also be found in [Wolf and Ghilani, 1997]. In this study, the
adjustment of radiometric difference between two orthoimage
patch can be expressed in matrix form as
L+V =AX (1)
where AT = [1 ]
X= fx, is the estimated radiometric difference parameter
vector. IZ = [/ ]
of radiometric difference between two orthoimage patches.
KE =ir vw
observation is regarded as the same weight, therefore, Eq.(1)
d is the coefficient matrix,
Li, is the observation matrix
vla; is the residual vector. The
; ol
has a covariance matrix W — Sy 0, .
n*n
According to [Wolf and Ghilani, 1997], the relation between the
residual vector and the true error vector can be expressed as the
following form
E=-0,W6 (2)
where
o. = w^ — AO, À" = w^ 0,
0. (AWA
Now consider the case when all measurements have zero errors
except for a particular observation / i which contains a blunder
of size Al ; - A vector of the true errors, AE , can be expressed
Aee[0 0 — 9 A 0 . 9l
S
gEALO: «07,0 495.9]
If the original measurement are uncorrelated, the specific
a
correction for Av, can be expressed as
Av; = -quW; A; = -r, M, G)
where {;; is the ith diagonal element of the 0. matrix, W;
is the ith diagonal term of the weight matrix, W , and
F— QW;
; 1$ the observational redundancy number.
From Eq.(3), the V; to an observation can be calculated and
used to isolate measurement blunders by computing the
standardized residuals from the diagonal elements of the 0.
matrix as
Vi V;
Wi = TE
= LU
=
Tyan Ton Gi iO ATi
where W, is the standardized residual, V; the computed
(4)
,, matrix, O' is the
residual, q'; the diagonal element of the Q
known unit weight standard deviation. When the O, is
unknown, the /; test statistic can be defined from Eq.(4) by
replacing O', with
Vi
f; eM b V (5)
TO Ti
As Eq.(5) defined, where
5
G, = eee (PH = W,V; ).
n—u-1 Y
/
The approach is to use a rejection level given by a / distribution
test with n-u-/ degree of freedom. The observation with the
largest absolute value of /; as given by Eq. (5) is rejected when
it is greater than the rejection level.
2.3.2 Image Fusion: After the greater radiometric difference
between each orthoimage patch and the major orthoimage patch
corresponding to all groundels are excluded, the final
orthoimage patch should be fused from this optimal set. The
concept of data fusion could be utilized in this step. The
original definition of data fusion is to fuse the data from
different sensors. Although the orthoimage patch data are from
the same kind of sensor, aerial camera, the idea could be used
without violation. There are many approaches to dealing with
this problem. [Jin ef al., 2002] In this study, the simplest
approach is employed to fuse the radiometric information into
unique one from multiple information. Namely, the major
orthoimage pacth is used as basic radiometric information. Then
radiometric information that is not rejected in each groundel are
summed up and averaged to obtain the final radiometric
information in each groundel. If only one radiometric
information is obtained from basic radiometric information,
then the radiometric information of this groundel will be null.
3. INVESTIGATION INTO THE QUALITY OF FINAL
ORTHOIMAGE PATCH
This section discusses the quality about the generated
orthoimage patch. The whole processes of orthoimage patch
generation from aerial photos can be simple separated into the
following steps: (l)the imaging, (2).the digitizing, (3).the
determination of the exterior parameters of aerial images,
(4).the acquisition the surface elevation, (5).the rectification
process, and (6).the output.
Although many steps will affect the quality of final
orthorectified image patch, the camera quality definitely have
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