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International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B4. Istanbul 2004
I). An ISODATA unsupervised classification was applied using
bands 4,5,7. The class related to water bodies was extracted
(Fig. 2, in green) and was intersected with the thresholding
output via an AND Bolean operator to determine the common
areas between this two water related areas (Fig. 3).
An area filter then applied to eliminate water body polygons
smaller than the minimum area size. Following, the slope angles
were computed from the available DEM and the slope range 0-4
degrees was extracted (Fig 4) and used as spatial constrain,
considering that the water bodies are located within this range
of slopes. Finally the common areas between the extracted
water bodies and the selected slopes were estimated to
determine the final areas of water bodies (Fig 5). The
commission errors (extraction water body areas where there are
not) and omission errors (omission existing water body areas)
for the water bodies areas are shown in Figure 6.
4. CASE STUDY II: COASTLINE CHANGE
DETECTION
Monitoring of coastal changes contributes to the development
of various types of assessments (e.g., impacts, sensitivity,
vulnerability, erosion hazard) due to climate change including
changes in the sea-level. One of the projects of the ESS
Program Reducing Canada’s Vulnerability to Climate Change
investigates the ocean vulnerabilities to climate change on a
regional and local scales to provide critical geoscience data to
other government departments. This information can be used in
assessing climate change impacts and developing adaptation
options. The task of this coastal activity is to develop sensitivity
and impacts assessments in coastal areas of the Arctic and East
coasts of Canada by using earth observation data to provide the
necessary spatio-temporal data infrastructure for coastal areas
and by developing methodologies for feature extraction and
change detection using image data. The study area is the Arctic
south-west coast of Banks Island where the settlement of Sachs
Harbour is also located. The time-series data used were 1961
aerial photography and 2002 IKONOS imagery.
The Canny edge detector was used on the 1961 orthophoto to
semi-automated extract the coastline (Fig. 7), while due to
systems limitations heads-up digitization was used to extract the
coastline from the 2002 IKONOS imagery.
Figure 7: Extraction of coastline using the Canny edge detector.
615
The extracted pixel edges were converted to vector lines via
R=>V process using snapping, smoothing and pseudo nodes
removal operations.
For the estimation of the planimetric change detection of the
coastline the above described semi-automated feature-based
approach, developed at CTI and implemented in the ArcGIS
environment, was used. The changes were determined as
additions (gains) or deletions (loss) to the land (Fig. 8).
Preliminary results for approximately 39 km length of coast-line
show that sea has gained about 446 310 m? and land has gained
about 351 994 m°, thus resulting in total loss of land of about
93 316 m° between 1961-2002.
Figure 8: Feature-based coastline change detection between
1961-2002 (land gains in yellow; land losses in light green).
5. CONCLUDING REMARKS
There is a variety of systems and tools available and the trend to
integrate photogrammetric, image analysis and GIS
functionalities continues. There are new kinds of data sources,
such as high resolution images, simultaneous availability of
panchromatic and multispectral images, and LIDAR data. And
there are new kinds of requirements and applications that
required rapid and enhanced mapping operations.
The implementation of higher level of automation in the
mapping operations is highly desirable to reduce both the
production time and the cost involved, especially when dealing
with the vast size of the Canadian territory and the continuous
dwindling of resources. To implement rapid processes for
mapping operations, such as feature recognition, feature
extraction and change detection we have considered several
tools and techniques from existing image processing and GIS
packages which may be used to either enhance the operations or
as alternatives approaches to the procedures. The integrated use
of these tools allows also for the development of techniques,
such as the presented feature-based change detection, which
significantly improves certain operations and results.
However, there is no general solution for the various operations
and presently different tools can be used for different data types
and occasions. That is, the tools are selected based on the data
source and the required outputs, while the accuracy, reliability
and completeness of the results may vary from one application
to another. This non-standardization of approaches requires
specialised personnel and continuous training.
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