b. Beijing 2008
The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences. Vol. XXXVII. Part B3b. Beijing 2008
421
images under
s is generated
:d to grayscale
i samples were
the higher the
11 be its texture
momic pattern
>up
Posterior
1
1
2
2
1
1
2
1
1
1
1
1
1
2
1
2
2
2
2
1
2
2
2
2
2
2
1
2
2
2
cale images
rom grayscale
>rithm. In this
assified. Only
'ferent groups,
bat the DBC
e algorithm to
ith different
Image
Lm
Score
Group
Previous
Posterior
Al
1.14
1.14
1
1
A2
1.17
5.95
1
1
A3
1.14
0.71
1
1
A4
1.14
0.68
1
1
A5
1.17
5.57
1
1
A6
1.17
5.93
1
1
A7
1.14
0.16
1
1
A8
1.16
4.51
1
1
A9
1.17
5.87
1
1
A10
1.15
2.38
1
1
All
1.15
1.64
1
1
A12
1.15
2.84
1
1
A13
1.15
2.60
1
1
A14
1.14
0.87
1
1
A15
1.17
5.61
1
1
B1
1.09
-6.31
2
2
B2
1.10
-5.28
2
2
B3
1.11
-4.67
2
2
B4
1.10
-4.84
2
2
B5
1.15
3.12
2
1
B6
1.11
-3.17
2
2
B7
1.14
0.69
2
1
B8
1.14
0.62
2
1
B9
1.11
-3.91
2
2
B10
1.11
-3.28
2
2
Bll
1.12
-2.81
2
2
B12
1.13
-1.39
2
2
B13
1.10
-4.83
2
2
B14
1.10
-5.54
2
2
B15
1.10
-4.87
2
2
Table 3. Discriminant analysis results for grayscale images
under the Differential Box Count algorithm
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ACKNOWLEDGEMENTS
The authors are very grateful to Soe Myint from Arizona State
University for explanations about equation 3, and to Audrey
Karperien who develops and maintains the software FracLac at
Charles Sturt University, Australia, for explanations about the
algorithms applied in this paper. Mauro Barros Filho would like
to thank FACEPE for the financial support to this research.