In: Wagner W„ Székely, B. (eds.): ISPRS TC VII Symposium - 100 Years ISPRS, Vienna, Austria, July 5-7, 2010, IAPRS, Vol. XXXVIII, Part 7B
In: Wagn
3.3 Texture features Behaviour
Entropy is negatively correlated with window size when tested
separately. However, when combined with the spectral bands
tends to increase as the window size raises. The contrast is
correlated positively with window size in both, when tested
separately and when combined with spectral bands. In turn, the
ASM presents negative correlation in both situations.
This indicates that the second angular momentum may play an
important role when the window size varies between the values
11 and 30. Unlike the contrast that reaches the best results with
windows between 30 and 45. Entropy presents a peculiar
behaviour because it presents very significant results in all sizes
of windows, but these tend to improve as the window size
increases. In the Entropy plus Spectral graph, we can observe
two peaks: one for windows of size 27 and one for windows of
size higher than the 39.
№**»»*<*«
(c) ASM+Spectral (d) ASM
Window
Cont
+S
ASM
+S
IDM
+S
Ent
+S
Corr
+S
Window
1,00
Cont+S
0,89
1,00
ASM+S
-0,83
-0,87
1,00
IDM+S
0,38
0,08
0,13
1,00
Ent+S
0,86
0,79
-0,66
0,27
1,00
Corr+S
-0,60
-0,58
0,75
0,29
-0,46
1,00
Table 5. Correlation Matrix of all classification results using
each texture feature separately combined with spectral band, a
fixed lag distances of 3 and odd values of window sizes
between 11 and 45.
Window
Cont
ASM
IDM
Ent
Corr
Window
1,00
Cont
0,86
1,00
ASM
-0,69
-0,61
1,00
IDM
-0,71
-0,74
0,84
1,00
Ent
-0,63
-0,69
0,44
0,65
1,00
Corr
-0,94
-0,69
0,67
0,63
0,44
1,00
Wttefctwbn
(e) IDM+Spectral
(f) IDM
(I) Corr.+Spectral
(J)Corr.
Figure 4. Dispersion Graphs of classification results of texture
features according to window size for each feature processed
combined and not combined with spectral bands.
Table 6. Correlation Matrix of all classification results using
each texture feature separetely, a fixed lag distances of 3 and
odd values of window sizes between 11 and 45.
4. CONCLUSION
(a) Cont.+Spectral (b) Cont.
The red band of the IKONOS image proved to be suitable for
extraction of texture information to be used in the classification
of aquatic vegetation in high-resolution images. Smaller
distances were more efficient for image classification, as well
as window sizes larger fared better. The use of a single texture
feature combined with the spectral bands was very
efficient. Among the parameters of texture Entropy combined
with spectral bands produced good results for classification in
all window sizes. While the contrast obtained the best results in
windows of larger sizes and Second Angular Momentum
showed good results in the windows of smaller sizes.
The auth
(http://w\
image ar
Fonseca ;
also than
Universic
Marco Ol
Biodivers
para
atlas
Biodi
Barbosa,
wetla
pande
Canai
Clausi, D
Gabor an
ice in
Davis, P.
Evalu
vegeti
Geolc
Dechka J
W.Inj
vegeti
image
Remo
Franklin,
Mana
Haralick,
textur
Engin
Maillard,
throuj
Remo
Maillard 1
The
planni
Melack, J
Remot
Envin
Sons,
Mitsch,
John I
National
Wetla
Water
Ramsar C
Manui
66