International Archives of Photogrammetry and Remote Sensing, Vol. 32, Part 7-4-3 W6, Valladolid, Spain, 3-4 June, 1999
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broad spectral reflective characteristics, edges are identical in
most spectral bands and only vary in strength and polarity.
(Tom, 1986; Schowengerdt, 1980). Therefore, a local
correlation between different spectral bands can be assumed,
even when no significant global correlation exists. The basic
assumption to make this relation usable for image fusion is that
a local correlation, once identified between a multispectral
channel and the degraded panchromatic band should also apply
to the higher resolution level. Consequently, the calculated local
regression coefficients and residuals can be applied to the
corresponding area of the high resolution panchromatic band.
The required steps to implement this local correlation modelling
approach (LCM) are the following (Figure 2): The
geometrically co-registered panchromatic band is blurred to
match the equivalent resolution of the multispectral image. The
regression analysis within a small moving window (e.g. 5x5
pixel) is applied to determine the optimal local modelling
coefficients and the residual errors for the pixel neighbourhood
using a single multispectral and the degraded panchromatic
band. Thus,
multi j 1 ™ = a j k>w +b j low * pan low +ej low
(3)
ej low = multi/™- (a j low +b j low * pan low )
(4)
where [a j low ] and [b j tow ] are the coefficients and [e j*° w ] the
residuals derived from the local regression analysis. The actual
resolution enhancement is then computed by using the
modelling coefficients with the original panchromatic band,
where these are applied for a pixel neighbourhood the
dimension of which is determined through the resolution
difference between both images (the coefficient images are
resampled to fit to the dimension of the high resolution
panchromatic band). Thus,
multi= aj low +bj low * pan 1 “ 8 * 1 + e/ ow (5)
Substituting [e j low ] by Eq. 4, Eq. 5 can be rearranged to:
multi ¡** = multi j tow + b j low * (pan 1 “ 8 * 1 - pan low ) (6)
This implies that only the multiplicative component [b j low ] of
the local regression analysis has to be calculated. Note that Eq.
6 corresponds to the HFA (Eq. 1), with the important difference
that [b j tow ] acts as an optimum local “scaling factor” for the
high frequencies to be added.
The net result of the restoration is an image which retains all the
information contained in the multispectral image (i.e. blurring
the restored image yields the original multispectral image),
while the introduced high frequencies are scaled according to
the local correlation properties between (degraded)
panchromatic band and multispectral channel. Local contrast
differences are adaptively modelled, even if the local relation
between the datasets exhibits an inverse polarity.
Further modifications of the LCM approach are mainly directed
towards improving the algorithm in image sections where the
local correlation between both image domains falls below a
specified value (i.e. r < 0.66). This effect frequently occurs in
more or less homogeneous image areas and may result in badly
defined regression estimates. We are presently testing different
options that appear suitable to successfully substitute the local
correlation modelling (e.g. the HFM and LUT algorithm).
Multi j low
Pan low
(a) Degrade (factor = resolution difference)
<
Multi j hi 9 h
(b) Local regression
analysis
Pan hi s h
(c) Local use of the
local coefficients
& residuals
Fig. 2. Image fusion through local correlation modelling (flowchart).