maps were digitized and overlaid on the
imagery and used as ground truth data.
Black and white aerial photos, which was
taken in 1990 and were 1 to .20,000. in
Scale, were also used as ground truth.
3. METHOD
3.1 Successional Spectral Changes
Twenty one spruce stands, which were the
darkest in the same age class in D0708
and D0309, were selected as training
areas. Average DNs of training areas from
each imagery were plotted against the
stand. ags- in TM3, - TM4. -and /TM5.- Then .an
exponential curve was fit, and
successional spectral changes were
evaluated in each image (Figure 1, Table
De
Exponential Curve Fitting:
DN(CHj,k) — a(CHj,k) * b(CHj,k)*
exp (-c(CHj, k)*Age) (1)
where
DN(CHj,k) is estimated DN in channel j of
image k. This is referred as ‘average’
hereafter. RECHT Xk), D(CHj,k} and
‘C(CHj,k)'’ are regression coefficients for
channel j of image k. ‘Age is the stand
age of training area.
Relationships between the standard
deviation of the training areas and the
age were also checked using equation (1)
for TM3, TM4 and TMS5 (Table |).
3.2 Classification
Averages and standard deviations of DNs
in TM3, .TM4 and TM5.at every stand. ages
between 1 and 100 years were estimated as
training >» data using the exponential
curves (Table 1). The average standard
deviation of all training areas was used
for all ages, when a correlation
coefficient between the standard
deviation and the stand age was very poor.
The minimum distance classifier, which is
defined as following equations (Takagi
and Shimoda, 1994), was used .to classify
pixels into age classes.
Distance Calculation:
DST (i,CHj,k) = (DN(i,CHj)-AVR(CHj,k))
/ SD(CHj, k) (23
N
n
DSTA(i,k)^- JJ" XBST(i,CHj,kE) (3)
j=1
where
DST(i,CHj,k) is the distance of ‚pixel |
about stand age k in channel j. DN(i,CHj)
is DN of pixel i in channel j. AVR(CHj,k)
is the estimated DN for stand age k in
channel J using the exponential curves
(Table. 1). SD(CHj, k) is the standard
deviation at stand age k in channel jj
defined by the exponential curves (Table
26
Lp. DSTA(i,;kyoiss/distance of'pixel i from
the training data of age k. n is number
of channels, where it was three, namely
TM3, TM4 and TM5.
Bach. pixel" of the four images was
classified into an age class, which
showed the minimum DSTA for the pixel.
The age class is called spectral age
hereafter.
3.3 Evaluation
Then relationships of spectral ages
between images were evaluated using 62
evaluation areas, which were different
from training areas for exponential curve
fitting, ' using the regression analysis
(Figure:s2)uG The relationship between
Spectral age and stand age was also
checked (Figure 3). The evaluation areas
included various age classes and dense or
Sparse spruce stands. Images of spectral
ages were created, then they were
visually compared between each other
referring the black and white aerial
photos.
4. RESULTS AND DISCUSSION
Spruce dis... one .s-of . common. climax tree
Species in ‘the boreal forest and is
evergreen species. On the other hand,
most of pioneer species in the cool
temperate forests are deciduous, the
seasonal spectral characteristics of
these species are different. Above all,
since snow covers small undergrowth in
the boreal forest (spruce) in winter,
satellite data were almost composed of
radiation from: spruce and snow. Imsthe
meanwhile, satellite data were composed
of radiation from spruce and undergrowth
vegetation in summer, a comparison of
summer and winter images might show any
differences caused by undergrowth or any
other forest components. Thus winter and
summer images were compared to know
possibility $ofr-amonitoring forest using
images taken in different seasons and of
detecting forest structure.
The estimated spectral ages agreed well
between images except D0309 (Figure 2).
Among 6 cases, the slope and offset
appeared 1 and 0 in the regression line
between D853 and D858. This would mean
that the spectral . age . derived . from
different images are quite similar.
On the other: hand, the combination. of
D933 and D937 showed a smaller
correlation coefficient than that of D853
and D858, the spectral age didn't agree
well. Such difference was probably caused
as: follows. There would: be no snow
attached with spruce crown in D853 and
D933. However, the smaller DN of D933
suggested wetter snow surface than D853.
The intensity may become closer between
spruce and snow than dry snow condition.
International Archives of Photogrammetry and Remote Sensing. Vol. XXXI, Part B7. Vienna 1996
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