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DATA INTEGRATION
The use of digital ancillary data helps to increase the speed
and accuracy of satellite image analysis. However, much of
the detailed digital information which would be considered
helpful is typically stored in a vector format. Since satellite
data is stored in a raster format, there has been the problem of
how to store two completely different data sources on one
system. Recently, driven by the need to transfer data from
one format to another, many software companies have
implemented software which allows the user to purchase data
in one file structure and convert it to a different software
environment. This implementation has created an open
market for agencies to purchase ready made data bases to
update rather than re-create.
Software which allows the complete integration of vector and
raster image data also allows for the creation of more
innovative approaches to satellite analysis. Computer firms
such as ERDAS and ESRI, Inc., (Redlands, California) have
linked forces to create recent software advances which allow
vector and raster data bases to reside within the same
software environment. This capability allows raster and
vector coverages to be used interchangeably in a way that is
transparent to the user. Advances include the ability to
display spatial vector data on top of spatial/spectral image
satellite data. Once integrated, these data can be used
interchangeably; vector data can be used to enhance raster
data for image processing, or raster data can be used to
update and enhance vector data to reflect current land
conditions.
PROCESSING SATELLITE IMAGERY USING
ANCILLARY INFORMATION
The value of the information derived from satellite data is
directly related to the spatial/spectral quality of that data and
the scientific methodology used to extract the information.
Regardless of the quality of the data, if the methodology used
to analyze the data is weak, the information derived from the
data will be weak. Therefore, it is very important that the
image analyst use every resource available to extract
information and then later verify it in accuracy assessments.
In working with large satellite coverage study areas, the
methodology for image processing, classification, or data
base development must be well thought out and focused on
the project rationale. A project map or progress chart should
be created by the project manager and image processing team.
Once the final objectives of the image product have been
established, a list of potential ancillary products and their
potential uses should be listed. Each set of ancillary data
should be discussed as to the relevancy of its use and how
much additional work may be needed to bring the data into
the system environment. Issues of concern include: How
much will the data cost? How much time is needed to convert
the data? Will it be necessary to purchase new software to
complete the conversion? What level of personnel experience
will it take to complete the data conversion? Each of these
issues should be considered and factored into the overall time
needed to complete the image analysis.
The following are two image processing case studies
completed by ERDAS Production Services. These two
studies were generated under completely different
circumstances and required completely different types of
ancillary data. The first case study was a typical classification
study using standard types of ancillary information
commonly used by today's image analyst. However, the
ability to convert information from raster to vector formats
speeded up the image processing stage. The second image
processing study was unique in that 50% or more of the
classification was completed using ancillary data, the time
needed to complete the project was cut in half, and no
ground truthing was completed.
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Case Study One - Wetlands Classification of Georgia
The Georgia Department of Natural Resources (DNR)
contracted with Production Services to produce a full land
cover classification of the state for the purpose of identifying
wetlands. The maps resulting from the classification effort
were to be used as a reference tool in development offices
throughout the state to identify and protect ecologically fragile
areas.
Due to the size of the area to be mapped it became apparent
that satellite imagery would allow the quickest, most cost-
effective method of attaining wetland information. The study
area consisted of 11 full and two one-quarter scenes of
EOSAT Thematic Mapper data, which stretched across 10
distinct physiographic regions. Because limited aerial
photography was available for training sample information or
accuracy assessment, the Georgia DNR agreed to provide this
information in the form of field investigation. Because of the
size of the area it was decided that the following ancillary data
would be used:
« 1:24,000 USGS Topographic Maps (1016 total)
» USGS DEM Data
* NHAP Aerial Photography (ordered for major
waterways)
* LORAN Helicopter Coordinates
* Physiographic Map of Georgia, 1976
+ ARC/INFOTM Map Grid
The state of Georgia is unique in that it is covered by several
very distinct physiographic regions. These region
differences, combined with the difference between each
scene’s date and path complicated the classification task
further. As a result, it was decided that the state would be
divided into regions based on a composite of the major
physiographic regions and the Landsat satellite path.
Division according to physiographic regions was done to
simplify the classification by isolating some of the endemic
geomorphic and vegetative differences which occur between
regions.
To complete this task, scenes along the same path were
mosaicked and then masked according to the region boundary
lines. Each region was classified separately as a unique study
area and assessed for accuracy by region. At the conclusion
of the project the state of Georgia was completed in 14
separate classifications. Breaking the data into unique logical
components which could be analyzed separately put the study
in perspective for the project team. It also limited the
overwhelming amount of image processing to be done and set
up a cycle for work progression. The project was
completed at an overall confidence level of greater then 85%
for the entire state, and several regions reached accuracy
levels of 90%.
Other ancillary data was used throughout the project. The
mountainous areas of North Georgia required extensive use
of topographic maps, GIS techniques to extract classification
information from shadowed areas, and a limited amount DEM
data. Final classification accuracy assessments were
completed using GIS coordinates converted to LORAN
helicopter coordinates.
Services to the Georgia DNR included the full image
classification and production of raster GIS files of the 7 1/2
minute quad areas of Georgia (1,016 total), color electrostatic