Full text: Fusion of sensor data, knowledge sources and algorithms for extraction and classification of topographic objects

International Archives of Photogrammetry and Remote Sensing, Vol. 32, Part 7-4-3 W6, Valladolid, Spain, 3-4 June, 1999 
193 
panchromatic band is used. Therefore, the original spectral 
information of the multispectral channels is not or only 
minimally affected. Such algorithms make use of classical filter 
techniques in the spatial domain, as well as the more recently 
introduced Wavelet Transform, which can be implemented in 
the frequency domain. In view of the manifold possibilities 
using wavelets for data fusion, we place only those wavelet 
algorithms into this group, the intention of which is a 
straightforward mixture of complementary frequencies, 
analogous to filter techniques in spatial domain (e.g. Garguet- 
Duport et al., 1996; Yocky, 1996). Other fusion procedures 
using the wavelet domain make use of complex (local) 
adjustments as described in chapter 2.3 (e.g. Iverson and 
Lersch, 1994; Ranchin et al., 1994; Ranchin and Wald, 1996). 
We would like to illustrate filter techniques in spatial domain 
more detailed: to extract the panchromatic channel high 
frequencies, a degraded or low-pass-filtered version of the 
panchromatic channel has to be created. This low resolution 
version should fit to the resolution level of the multispectral 
image. Subsequently, the high frequency addition method 
(HFA) extracts the high frequencies using a subtraction 
procedure and adds them to the multispectral channels via 
addition (Schowengerdt, 1980; Chavez, 1984; Chavez and 
Bowell, 1988): 
multi j Mgh = multi j tow + (pan 1 “ 8 * 1 - pan low ) (1) 
where [multi / ow ] is the original low resolution multispectral 
image, [pan low ] the degraded panchromatic band, [pan 1 “ 811 ] the 
original (high resolution) panchromatic band, [multi j 1 “ 8 * 1 ] the 
fusion result and [j] the channel index. The problem of the 
addition operation is that the introduced texture will be of 
different size relative to each multispectral channel, so a 
channelwise scaling factor for the high frequencies is needed. 
The alternative high frequency modulation method (HFM, or 
Sparkle) extracts the high frequencies via division and adds 
them to each multispectral channel via multiplication (Pradines, 
1986; Filiberti et al., 1994; Vrabel, 1996): 
multi j 111811 = multi j low * pan hlgh / pan low (2) 
Because of the multiplication operation, every multispectral 
channel is modulated by the same high frequencies. Thus, the 
HFM technique allows a straightforward fusion of both datasets. 
2.3. Fusion Procedures Using the Panchromatic Band 
Indirectly 
Fusion techniques described so far make use of the 
panchromatic channel (high) frequencies with their strength and 
polarity as they are. Certainly, the filter techniques do not or 
only minimally distort the original spectral information of the 
low resolution multispectral image, but the panchromatic high 
frequencies are not necessarily suitable for the specific spectral 
domain in which they are introduced. In particular, the (real) 
local edges or boundaries of the NIR or SWIR channels often 
exhibit an inverse polarity to that of the panchromatic band. 
Such incompatibilities not only become visually apparent in 
fusion results as undesired “ringing effect” (Schowengerdt, 
1980), but may also corrupt further steps of image analysis. 
To perform the radiometric fusion of a multi-resolution dataset 
as accurately as possible, several authors do not use to the 
original panchromatic information, but propose to use specific 
derivatives adapted to each multispectral band. In this case, the 
panchromatic band information just forms the basis for band 
specific transformations or estimating procedures. 
To adjust the panchromatic band information to the 
uncorrelated NIR channel, Price (1987) performs a cross 
tabulation between them. For each grey value of the degraded 
panchromatic band, the corresponding values of the NIR 
channel are found. The mean values of the latter are used to 
build a new lookup-table (LUT), which is applied to the 
degraded and original panchromatic bands, so that their grey 
values fit better to those of the NIR band. These recoded 
versions are then used together with the HFM algorithm. 
Because of the usually wide value range of the NIR channel for 
a given grey value of the panchromatic band (note that they are 
not correlated), a significant spectral smoothing has to be 
accepted using this adjustment method. 
Moran (1990) tries to improve the value mapping or LUT 
approach by using a small moving window as calculation unit. 
In this case, all pixels of the high resolution image with same or 
similar values as the central pixel are searched at the actual 
window position. Subsequently, the mean or mode of the 
geometrically corresponding values of the lower resolution 
multispectral channel is calculated. The retrieved value replaces 
the central pixel of the high resolution image. Zhukov et al. 
(1995) and Zhukov and Oertel (1996) introduce a similar 
“multi-sensor, multi-resolution technique” (MMT). Here, the 
high resolution image can also be a classified multispectral 
image instead of a panchromatic band. All authors using the 
recoding method obtained fusion results of high radiometric 
fidelity, while the sharpening effect appears only moderate (the 
dynamic range of the fusion result does not exceed that of the 
low resolution multispectral input). 
Another approach, which makes use of the panchromatic 
channel information indirectly, was introduced by Tom et al. 
(1984), Tom and Carlotto (1985) and Tom (1986). They 
propose an enhancement technique based on local correlation 
properties not only in the context of data fusion but the 
reduction of image noise. The local correlation modelling 
technique was successfully adapted to the case of resolution 
enhancement based on a single high resolution panchromatic 
band (Tom, 1986; Hill et al., 1998). 
3. IMAGE FUSION THROUGH LOCAL 
CORRELATION MODELLING 
The rationale for using a local modelling approach is based on 
the fact that edges are manifestations of object or material 
boundaries that occur wherever there is a change in material 
type, illumination, or topography. Since most objects exhibit
	        
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