Full text: Resource and environmental monitoring

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Generally speaking, feature extraction in the remote 
sensing context is the identification of the subset of the 
spectral bands that are most useful for converting spectral 
data into information about the scene. Therefore most 
feature extraction methods rely on high spectral 
resolution, aspatial, field and laboratory data (Warner, et. 
al., 1996). Recognition of shapes has not been considered 
in remote sensing as extensively as it has been in 
computer vision and photogrammetry because the 
resolution generally available in the past has been 
insufficient to define shape with any degree of precision 
(Richards, 1993, p130). Thematic accuracy has been a 
primary measurement in remote sensing image 
processing. With the advancement in remote sensing 
technology, high resolution data are now becoming 
available, and boundary tracking accuracy or the 
geometric accuracy of classified objects will be a 
significant aspect in remote sensing image processing. 
Johnson and Howarth (1987) undertook a simulation 
study on the effects of resolution on land cover and land 
use theme extraction using airborne data. The results 
indicated that as spatial resolution increases, high spatial 
frequency land cover classes are extracted in increasing 
detail while only the precision of border location 
improves for low spatial frequency land cover classes. 
The class or thematic accuracies are similar at different 
spatial resolution. High resolution data are not necessary 
for applications which focus on the classes, unless precise 
border delineation is required. 
Artificial neural network techniques have been used in 
remote sensing for feature extraction for classifying 
multisource and multispectral image data. A characteristic 
of such methods is that they may require a long training 
time but relatively fast data classifiers, and unlike the 
statistical classification methods, they are distribution- 
free (Richards, 1993, p207, Beneiktsson and Sveinsson, 
1997). 
Information extraction in remote sensing can be either 
directly or by inference by using a physical model of the 
imaging process. However, the information which can be 
extracted directly is limited. For land surfaces, it is only 
possible to make the following measurements from 
remotely sensed data: topography, albedo and 
temperature. Inference method can potentially produce a 
large number of measurements of the Earth surface and 
atmosphere. However, unless the spatially and temporally 
variable effects of the atmosphere are removed, the 
feature extraction problem in remote sensing, if applying 
theoretical models, is still intractable. The empirical and 
semi-empirical approaches derived, based on the 
knowledge and theory of the imaging process, either 
traditional statistical methods or newly developed neural 
network technique, remain the most attractive solutions 
(Danson et al. , 1995). 
3. TOWARD AN INTEGRATED APPROACH 
3.1 The Needs for an Integrated Approach 
SPOT panchromatic 10 meter resolution and 
multispectral 20 meter resolution image data have to date 
been the best satellite imagery data for civil applications. 
International Archives ot Photogrammetry and Remote Sensing. Vol. XXXII, Part 7, Budapest, 1998 
Within a short period of time, high resolution satellite 
data of 1 meter resolution in panchromatic mode and 4 
meters in multispectral mode will become available and 
will provide potential applications for the user (Aplin et 
al., 1997). The high resolution systems will provide an 
order of magnitude improvement in ground resolution, at 
the expense of less area and multispectral capability. The 
investors in the systems believe that one-meter resolution 
allows applications that require identifying, measuring 
and mapping built objects such as roads and buildings, 
and the real-time or near real-time availability of data in 
digital form will make them immediately usable in GIS 
database (Stoney and Hughes, 1998, Fritz, 1995). Many 
photogrammetrists are skeptical of what the high spatial 
satellite remote sensing systems can do for them, 
compared to the proven high quality products delivered 
by the traditional photogrammetric principles applied to 
sub-orbital aerial photography. While for GIS users, they 
are only concerned that the high spatial resolution raster 
image data are spatially accurate, available in a timely 
fashion, be reasonably priced, and integrate seamlessly 
with their vector-based Geographical Information 
Systems (Jensen, 1995). 
Even though, the high spatial resolution image systems 
will provide image data with less multispectral capability 
when compared to some systems of coarser resolution, 
they can be fused with lower spatial resolution 
multispectral images by using band  sharpening 
techniques. In band sharpening, the product has the 
spatial resolution of the panchromatic image and the 
spectral characteristics of the multispectral image. The 
spectral characteristics are useful for identifying thematic 
features such as trees, water, soil, etc. With increased 
spatial resolution, the features can be more accurately 
delineated, thus making the resulting product more useful 
for various applications, and even more useful if there is 
no change in the spectral content of the sharpened 
product. More importantly, band sharpening with a single 
high-resolution panchromatic image allows the 
multispectral band data to be acquired at a lower spatial 
resolution. This permits systems to be designed that have 
lower bandwidths and storage requirements. Lower 
multispectral spatial resolution can also lead to the 
implementation of increased spectral resolution on future 
sensors (Vrabel, 1996). 
The major purpose of feature extraction is to 
automatically acquire information for mapping and GIS 
databases. Accuracy, either geometric or thematic, is 
very important and it must be similar or better than that 
obtained by using manual methods (Trinder and Sowmya, 
1997). With the availability of digital image data of high 
resolution in a multispectral mode, region extraction and 
edge finding must be presented complementarily. It is 
important that researchers in the field of machine vision, 
photogrammetry and remote sensing continue to 
collaborate, so that advantages are gained from the 
combination of the skills (Trinder and Sowmya, 1997). In 
the next section, we propose a conceptual integrated 
model for feature extraction by combining the knowledge 
from different fields. 
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