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Figure 5: Top: Daedalus channel six image (0.695 — 0.750 um, recorded at 12:30 MET, flight altitude: 300 m), original class (black
pixels) and the corresponding histogram of noon temperatures together with the appropriate Gaussian density curve (correlation
coefficient: 0.85); below: NDVI-image (recorded at 12:30 MET) and the resulting two images after applying subdivision (step 2). A
rectangular metal roof was isolated by this subdivision.
with the ones based on NDVI methods (see figure 7).
(75 + 4)%
(79 + 8)%
agreement(ndvi > 0.5)
agreement(ndvi > 0.3)
The errors represent the standard deviation of the agreement
values. In Figure 6 two resulting vegetation maps are shown.
It can be seen that the maps differ slightly from each other
(for the reason of different initial seeds), but even in the worse
case shown on the right the agreements with the NDVI-based
maps are satisfying.
6 DISCUSSION
The subdividing of the classmap through the correlation
mechanism always provides a better separation of the under-
lying scene in comparison to a one-time unsupervised clas-
sification. An inherent disadvantage of this method is the
separation of data subsets which the user probably wants to
see in one class. But this is inevitable, since man-made sur-
face types cannot be assumed to have Gaussian distributed
temperatures.
Another source of misclassification is the necessary assump-
tion that there is no change of the scene contents from one
overflight to another. If this is not valid, the concerned ob-
jects are probably misclassified because different parts of the
corresponding temperature curves belong to different sub-
stances. This effect can be seen in Figure 6, where aeroplanes
which were only present in the early morning scene are part of
232
the vegetation maps. Areas which are shaded at noon show
the same effect.
Registration inaccuracies yield misclassification essentially at
the borders of different surface types. Even by using many so
called passpoints (corresponding points in different images,
up to thirty in our case) it is not possible to get a registration
accuracy better than one pixel. Objects with a specific height
cannot be registered exactly if the corresponding viewing an-
gles are different.
The proposed algorithm is sensitive to the choice of the initial
parameters for the first classification, as expected from the
similar heating behaviour of many substances (see Figure 2).
On the other hand the subsequent unsupervised classifications
providing the subdividing of the "first guess classmap" are
robust against the choice of its initial seeds. So the final
vegetation map essentially depends on a one time choice of
parameters. Providing some adequate temperature values as
initial seeds (e.g. from regions of interest or model runs) one
can avoid this problem.
At one point the proposed algorithm surpasses the NDVI-
based method: with a threshold of 0.3 the latter one clas-
sified the metal roof as vegetation (Figure 7), the first one
succeeded at this point (Figure 6). This is one example for
the statement that by using thermal data one can improve
classification results based on other methods.
To illustrate the usefulness of histogram data the tempera-
ture curves of all resulting classes for a typical classification
Intemational Archives of Photogrammetry and Remote Sensing. Vol. XXXII, Part 7, Budapest, 1998