Oca { k Om
8.7 | 0.271 1.02 | 0251 0.04 | 0.12 | 0.35
9, dr a,
5.8 | 0.21 0.89 | 0.10] 0.02 | 0.08 | 0.14
7.8 | 0.17 | 0.95 | 0.18] 0.03 | 0.11 0.26
21.3 | 0.15 | 0.44 | 1.44 | 0.17 | 0.22 | 2.27
25.3 | 0.20 | 0.69 | 0.38} 0.02 | 0.06 | 0.56
123 019 | 1.11 0.26} 0.03 | 0.11 0.35
Tab.3: Result of standard deviation adjustment
The idea is now to separate the correction of the mean from
that of the standard deviation. Therefore equation (4b)
cannot be applied directly. The modified steps are (see also
equation10):
1. Each greyvalue is reduced by its respective mean m,
(according to equ. 4b) so that the new mean value
becomes 0.
2. The shifted values are scaled by the correction function
of the standard deviation.
3. Finally the greyvalues are shifted back by m,,,.
1 1
Kr > ——— , Kı: —zZ
Ki k
(,*(0 -0,):cos "i $7 5543: 008S. ^1
m
m
Icorr F (9; T uk t Meorr or
m
K,
9cor = g; K, 5 m, K 7 1)
m (10)
where the indices ,, and , denote the para-
meters for the mean and sigma correction,
respectively.
We notice immediately that in case of
equal K, and K, equations (10) and (7) are
equivalent. The band 4 image corrected by
this modified approach is shown in figure §&
10, its scattergram in figure 7. The high EE ^^ 5
greyvalues for incidence angles >50.1° EE
(flat terrain) could be reduced significantly,
while the basic appearance remained the Fig.7
same.
8. SUMMARISING REMARKS
The intended goal of providing an algorithm for an
approximate topographic normalisation
that works mostly automatically,
* delivers accurary measures,
+ detects automatically how reliably the given model can
be applied for a given image and finally
+ yields satisfying results in order to facilitate an a-priori
classification that can successfully be used for a sub-
sequent class dependent normalisation
could be reached by a simple extension of the primitive
Minnaert BRDF model. We found out, that by introducing
the skylight term ¢ the Minnaert constant k is always close
to 1 and therefore does not notably influence the correction
function. The ¢ term is usually closer to 1 for the short
EE
A ES sy
wavelengths and closer to zero for infrareds. Following this
knowledge one should be able to find appropriate k and ¢ for
a fairly good normalisation even manually just by trial and
error. Eventually, we need to emphasizé again, that a high
quality rectification together with an accurate DTM are
crucial preconditions for a successful topographic normal-
isation, independent of whether the normalisation just
serves as a preprocessing step or it is the final correction
based on a more sophisticated mathematical and/or
physical model.
Fig.8: TM Band4, original
Fig.9: TM Band 4, corrected through equation (7)
14 International Archives of Photogrammetry and Remote Sensing. Vol. XXXII, Part 7, Budapest, 1998
Albertz
Tasct
Wichr
Colby J.
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Conese
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gram
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