International Archives of Photogrammetry and Remote Sensing, Vol. 32, Part 7-4-3 W6, Valladolid, Spain, 3-4 June, 1999
achieved at the cost of loosing some original advantages of
satellite remote sensing.
1.2. Combined Sensor Resolution and Data Fusion
The engineer’s answer to the above-described dilemma is a
compromise. In current and planned systems, lower resolution
multispectral channels are often complemented by a single
higher resolution panchromatic band, which provides a
“representation” of the desired resolution for the multispectral
channels. With this combined resolution concept, the acquired
data volume is kept within acceptable bounds, while additional
spatial details are still made available (Table 1).
Several sensors with such constellations are already in orbit
(SPOT, IRS-ID, Landsat 7), while others are planned (e.g. for
1999 Ikonos-2, Quickbird-1, OrbView-3). Currently, the Indian
remote sensing satellite IRS-ID offers 5.8m spatial resolution in
the panchromatic range. The planned new satellite generation
will provide lm panchromatic and 4m multispectral resolution
(because of the data quantity problem, this extremely high
resolution allows only restricted swath widths between 8 and
22km only).
Instead of using the panchromatic information separately, there
is also the option to fuse the high resolution panchromatic band
with the low resolution multispectral data to improve the spatial
resolution of the latter (Figure 1). The aim of the fusion
procedure is to produce high quality data which contains the
characteristic of both the multispectral information (object
identification) and the spatial detail (object localisation and
texture). The “permission” to merge the data is seen in the fact
that edge localisation (as detail manifestation) is more or less
identical in different spectral bands and “only” varies in
strength and polarity (Schowengerdt, 1980; Tom, 1986).
2. CATEGORIZATION OF DATA FUSION
TECHNIQUES
During the last 20 years, many fusion algorithms were
developed and documented. While the data quantity problem
and the idea of data fusion stimulated the deployment of
combined resolution sensors, the increasing availability of
combined resolution data stimulated the further development of
fusion algorithms. The intentions of algorithm developers or
users are quite different. They encompass the desire for simple
visual enhancements, as well as the demand to reconstruct the
theoretically “real” high resolution multispectral image (the true
image) as well as possible.
Fusion techniques may be categorised into 3 groups, depending
on how the panchromatic information is used during the fusion
procedure.
2.1. Fusion Procedures Using All Panchromatic Band
Frequencies
This category includes simple (partially old) band-arithmetic
techniques, such as addition and multiplication, as well as the
commonly used and well known component substitution
techniques such as IHS transformation, principal component
substitution (PCS) and the more rarely applied regression
variable substitution (Haydn et al., 1982; Carper et al., 1990;
Shettigara, 1992; Pellemans et al., 1993). Also the Brovey or
color normalizing algorithm (Roller and Cox, 1980; Hallada
and Cox, 1983), which holds an intermediate position between
band-arithmetic and component substitution techniques, can be
classified into this group.
Because all procedures of this category make use of all
frequencies of the panchromatic channel (which include also
“spectral” information components related to the lower
resolution multispectral images), they may produce spectral
distortions in the result, which depend on the degree of global
correlation between the panchromatic and the multispectral
channels to be enhanced. Especially for NIR or SWIR channels,
this global correlation is usually low, such that fusion
procedures are bound to fail. Nevertheless, the IHS trans
formation and the Brovey algorithm are often used to fuse the
panchromatic band with multispectral channels within the
visible spectrum (i.e. channels which are highly correlated with
the panchromatic band).
2.2. Fusion Procedures Using Selected Panchromatic
Band Frequencies
Fusion techniques classified in this group overcome the
limitation described above, because only the additional high
resolution spatial information (i.e., the high frequencies) of the
Î
multispectral dataset
(low resolution)
fusion procedure
î
panchromatic band
(high resolution)
î
multispectral dataset
(high resolution)
Fig. 1. Concept of data fusion for resolution enhancement (modified after Pradines, 1986).