International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B4. Istanbul 2004 Int
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in the equation for A, represents the up-sampled and Down-sampling by a factor of two in horizontal and vertical sali
ct e directions recursive processing over successive levels "es is
interpolated version of G; 4; - À hyperpixel in this interpolated eum c Ve processing GVCF. SUCCOssTve levels produces fus
: : à a Gaussian pyramid. (or
image corresponds to a wel ghted local average in the
. x ^ LS A y * . ~ hy
neighbourhood of the hyperpixel at the same location in G, . The next step in image decomposition is extracting the Sch
Hence, the denominator in. A, is proportional to Lj, whereas the orientation gradient details on each level (except the top) of the ob
Gaussian pyramid. Burt calls this step creating the orientation
numerator is proportional to L . Therefore the pyramid whose : : ; :
gradient pyramid (Burt and Kolczynski, 1993). It is called the
avais Are her ie th ‘el Of the ; : ; ;
levels are Ry —I, (where [is the k™ level of the unit Orientation gradient because the kernels are the gradient filters
pyramid with all hyperpixels having value 1) represents a d, through d, :
contrast pyramid. The original image can be perfectly All
reconstructed by reversing the pyramid generation operations D,, 2 dj * [5 Lu 5d (23) Bel
described above. im]
[o —1] -] -1 0 i
; : He : d, «li <1): dy =] , dy = , dy = (24) eas
The fused contrast pyramid Apis formed from the contrast | +0 l 0 | Dre
py [ [
pyramids R, and Rp of the images A and B by using the vai
selection rule: D,, are the details for level k and orientation /, Gy is the level k Ser
: : ; yq m pu me
input from the reduced image pyramid. The process for fusion m:
bu» i Ww NT ri follows the concept outlined in Section 2.4.
t, R^ (i, j) if ea.) > [Rb Gi.) : | Le
R} (i, j) = (19) ; ; : ext
2.8. Fusion method based on Morphological pyramids es
R5 G, J) Otherwise
Mathematical morphology offers another conceptual approach
where kis the level of the pyramid and (i,j) denote the to image fusion. The morphological filters, in particular opening
and closing are employed for creating a morphological pyramid
(Morales et al., 1995). The filters are designed to preserve edges
or shapes of objects, while eliminating noise and details in an
image. The morphological opening followed by-closing and
closing followed by opening are chosen because they are
hyperpixels at that level. The fusion rule selects the hyperpixels
corresponding to the largest local luminance contrast. As a
result, image features with high contrast are preserved in the
fused image.
2.6. Fusion method based on FSD Laplacian pyramids biased-reduced operators. The morphological pyramid is
constructed by successively morphological filtering and down
The filter-subtract-decimate (FSD) hierarchical pyramid sampling:
proposed by Anderson (1987) is conceptually identical with the
the Laplacian concept explained in section 2.4. I. Alan K)* Kl, L 2 0L... n (25)
In the following we refer to the input image as Gy the low-pass
where L is the pyramid level. Ip is the original image,
filtered versions are G, to Gy with decreasing resolutions and |
the corresponding difference images are pu CL kids, represents down sampling by a factor of d in both spatial D
SI g ages e p. XK N >
respectively. A recursive procedure for the creationsofithe ESD dimension. (/ » K) represents the morphological opening of the Fi
pyramid reads as follows: image / with structuring element K. and. (/ * K) represents tlt
morphological closing. The finest level L=0 of the Fig
6h -W*G, morphological pyramid contains the input image. The image a int
; any level L is created by applying morphological filtering witha M,
L, =G, Gh (20) 3x3 structuring element to the image level (L-/) followed by
down-sampling the filtered image with d-2. The process for
: 40
G,, = Subsampled G
+ + 2 em : : . .
"t a fusion follows the concept outlined in Section 2.4.
With the Gaussian filter W the process for fusion coincides with 2.9. Fusion method based on Averaging Th
the Laplacian concept outlined above (Section 2.4). AS
A simple approach for fusion, based on the assumption oi the
2.7. Fusion method based on Gradient pyramids additive Gaussian noise, consists of synthesizing the fused bar
; : Sr image by averaging corresponding pixels of the sensor images she
Fusion based on gradient pyramids Is another alternative to the Averaging should work well (Sharma, 1999) when the imag in i
Laplacian concept. As above a first step consist of construcüng to be fused are from the same type of sensor and contain
a Gaussian pyramid. Burt and Kolczynski (1993) used the 3 x 9 additive noise only. If the variance of noise in q sensor images Th
Gaussian kernel is equal then averaging them reduces the variance of noise in ide
. j the fused image according to the error propagation law. I5
w= Wikw (21) E Th
to lowpass filter the image with 2.10. Fusion method based on Selection and
res
| 3 4 Fusion based on some selection process is an alternative p IR:
d d 4 2 (22) simple averaging. Selection may use the Laplacian pyramid > cor
16 uut basis. This technique has then three distinct stages - pyram
k 2 1d construction, selection of pyramid coefficients based on
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