THE CASE STUDY
MONITORING ALAM-PEDJA NATURE RESERVE
(FROM 1988 TO 1995)
Area
Land cover map of the Alam Pedja area covers 1176.63 km?. The
change map with aggregated cover classes (4) and their transition
areas is presented in this paper for 46 848 ha, comprising the
nature reserve area (26 000 ha) and the 2 km wide buffer zone (20
848 ha).
Material used for composing the maps:
I. Digital satellite data in 7 channels from Landsat 5 Thematic
Mapper (TM) of 08.06.1988 and 12.06.1995;
II. Digital data bases stored in ARC/INFO format: GIS coverages
at scale 1.50 000: rivers, roads, settlement, nature reserve and
buffer zone border;
III. Auxiliary data and field work.
Methods
Pre-processing. At first, satellite data were pre-processed. For
geometric correction purposes 60 ground control points were
found from topographic maps. These points were used for image
transfor-mation (third order polynomial fit, nearest neighbour
resampling) into Estonian base map projection, Baltic Map
System 1993. After this step manipulating with ARC/INFO GIS
coverage's is feasible, that means, masking out nature reserve area
(Figure 1) and adding all additional vector layers (Figure 4).
Figure 1. Rectified area with mask of Nature Reserve and border of buffer zone
Unification of the data on multi-date images was performed. For
all bands experimental lower and upper brightness values for all
cover classes were determined. With a linear stretch, a new image
was created by linearly scaling the values between the specified
minimum and maximum limits (User's Guide, 1997). In this
procedure, it was important to follow and fit the mean values on
multitemporal channel pairs. The similar range of brigthness
value units was important for comparability of two images.
Principal component analysis (PCA) was used to bringing forth
the most informative channels of satellite data. For both dates
approximately 90 per cent of the total variance within the entire
TM data set belongs to channels 3, 4, and 5. These channels were
used for creating false colour composite image — TM453. The data
in these TM channels has been shown to form optimal subset for
classification of forest and emergent wetland habitats (Sader,
1989, Sader et al., 1995).
This composition of channels serves as input data for
unsupervised classification procedure (ISODATA) and for
visualisation and delineation of the training sites in supervised
classification procedure (maximum likelihood algorithm). For
thematic extraction of land cover data using either automatic
(unsupervised) or supervised classification algorithms, prior
knowledge about cover classes typical to the territory under study
is needed.
Classification. The classification scheme (Table 1, right column)
developed for the satellite monitoring purposes in Estonia
(Aaviksoo, 1995b) was used in this work. The 34 units of the
classification scheme reflect main categories in Estonian nature,
differentation of which is possible using Landsat TM data.
Independantly of the classification method used, the spectral
classes were labelled by the land cover type in the table in case
when they occured in the test area. Actually, working with Alam-
54 International Archives of Photogrammetry and Remote Sensing. Vol. XXXII, Part 7, Budapest, 1998
Ped;
(all
pres
cate,
Tab
* y
Cla
star
we |
ider