788
minimum area rules for amalgamating groups of
pixels. This kind of filtering results in a
cartographically acceptable map and is also required to
reduce the number of homogeneous areas (polygons)
as many GIS’s are limited in the number of polygons
that they can handle. A record is kept of the
percentages of the original classes that were
amalgamated to form the single class output polygons.
Improvements in digital classification through the use
of ancillary data (including digital elevation data) can
be achieved in three ways: incorporating those data
either before, during or after classification, through
stratification, classifier operations or post classification
sorting (Hutchinson, 1982). Ancillary data is used to
construct masks within the image analysis system then
Boolean logic is employed to separate classes that are
spectrally similar. Equivalent results can be achieved
through GIS processing, with potentially a wider
selection of attributes available for post-classification
accuracy improvement.
Topography plays a dominant role in many biological
and geomorphic processes. Terrain segmentation as
implemented is based on: surface morphology,
hierarchical watershed boundaries, and potential solar
radiation received at the surface. Segmentation based
on morphology begins with irregularly spaced points,
from which a triangulated irregular network (TIN) is
created. Units are defined through the amalgamation
of neighbouring triangles, based on similarity with
respect to slope and aspect. Watersheds are formed by
the examination of hydrologic flow across the triangles.
Radiation based segments are created through merging
of contiguous triangles based on criteria examining the
results of shading and shadowing values sampled at set
intervals from sunrise to sunset over specific days of
the year.
At some point the raster products require conversion
to a vector format to be compatible with most current
GIS formats. Currently our capability is limited in the
size of raster supplied as input and the number of
resultant polygons output. Presently a single value
attribute can be attached to the vector database
created, there is a requirement for the transfer of
multiple attributes, for example the record of the
original composition of a context filtered polygon.
4 RESULTS
The following discussion of results is restricted to the
1:250 000 version. At the time of writing (June 1990)
work on the ground cover part of the 1:20 000 version
is proceeding under contract.
4.1 Present Land Use
The following land uses were identified and delineated
from the satellite image transparency (codes based on
"Land Use Classification in British Columbia", (Sawicki
et al., 1986));
A000
rural activities
A100
mixture of tillage crops,
tree and vine fruits
forage
crops and
A130
orchards and vine fruits
cooo
urban built-up areas
and
residential
concentrations
E100 surface extraction
FI 10 recent logging (i.e. visible clear cuts)
Fill clear cuts or groups of clear cuts with up to
30% standing trees)
R100 ski hills, parks
N100 no perceived activity with grass cover
N200 no perceived activity with forest cover
N320 bedrock
N400 lakes
Because the logging clear cuts were a highly visible
land use, smaller units than usual for the final map
scale of 1:250 000 were delineated. This resulted in
1300 land use polygons in total for the 1:250 000 map
sheet.
4.2 Ground Cover Classification
For the 1:250 000 ground cover classification the
imagery was decimated to 100 m pixels. This
represents a reduction in data volume by sixteen. The
effect of this decimation on the accuracy of the ground
cover classification was tested for the clear cut areas.
The overall accuracy for this particular ground cover
classification (12 vegetation types) was 89% for 25m
pixels and 93% for 100m pixels.
Ground truth was derived from fieldwork for ground
cover within logging clear cuts. Ministry of Forest
1:20 000 forest cover maps provided the ground truth
for forested areas for approximately 10% of the area
under consideration. Intensive agricultural land use
mapping for three 1:20 000 map sheets provided the
ground truth for the ground cover within the
agricultural areas.
Classification accuracy is presently being assessed.
Preliminary results for the ground cover within
clearcuts indicate overall thematic mapping accuracy in
the 70% to 90% range.
Context filtering was applied to reduce the complexity
of the raw classification in a cartographically
acceptable manner. This process reduced the number
of polygons by a factor of 50 to 100. Usually, but not
always, this process would result in increased map
accuracy.
4.3 Topographic segmentation
The TRIM program 1:20 000 topographic data
provides a dense grid of elevation points from which
it is possible to construct a high quality digital
elevation model (DEM). For the 1:250 000 topographic
data the elevation data is conveyed by digitized
(scanned) contour lines. Although experienced map
users find it easy to infer surface information from
contours typical DEM interpolation algorithms often
give incorrect results because of the lack of elevation
data between contour intervals.
In an attempt to improve the quality of the DEM
derived from the 1:250 000 data, the density of
elevation points was increased in two ways. A "z" value
was interpolated for the hydrographic network based
on intersections with contour lines. Areas with sparse
contour lines were manually assigned elevation points
from 1:50 000 topographic maps. These processes
resulted in a greatly improved DEM.
Currently the software employed for topographic