ir
he
by
d,
ge
he
he
dy
to
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nd
he
he
)];
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Separating
Support Vectors A
Figure 3. Classification using support vectors and separating
hyperplane (Meyer, 2001). Hollow and solid dots
represent two classes in feature space.
An optimum hyperplane is determined using a training dataset,
and its generalization ability is verified using a validation
dataset. Training vectors x; are projected into a higher
dimensional space by the function ÿ . SVM finds a linear
separating hyperplane with the maximal margin in this higher
dimensional space. The methodology for SVM implementation
are well described by Karatzoglou and Meyer (2006) and
Kavzoglu and Colkesen (Kavzoglu and Colkesen, 2009). The
study used a polynomial kernel and employed ‘one-against-one’
technique to allow multi-class classification. The SVM
algorithm was implemented in R open-source software (Chang
and Lin, 2001; Meyer, 2001)
2.6 Training data collection
Spatially diffuse training data sets covering the study area were
collected for two crop seasons, summer 2010 and winter 2011.
A global positioning system and a laptop computer were used to
record the dominant vegetation species at particular roadside
locations. Nearly 50% of the data points collected for each crop
season was utilised for SVM modelling and remaining data sets
were used for validation purposes.
2.7 Selection of input variables
Three shape-based parameters, twenty-three textural parameters
and ten spectral parameters of the objects were analysed to
determine the appropriate set of input variables for the SVM
model. A combination of random forest variable importance
measures (Breiman, 2001; Liaw and Wiener, 2002) and
repeated classification accuracy assessment procedure was
carried out for model reduction and the selection of input
variables. Based on this analysis, the following variables (Table
1) were chosen as input to SVM model.
Table 1. Spectral and textural input variables selected for SVM
modelling
Variable name and formula References
Textural parameters
Grey level co-occurrence matrix (GLCM) (Trimble,
Entropy 2010)
N-1
GLCM Entropy - 5 Pij(-In Pi, j)
i,j=0
i is the row number of the image
j is the column number
Pi,j is the normalised value in the cell i,j
Vi jis the value in the cell i, j of the matrix
N is the number or rows or columns
International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Volume XXXIX-B7, 2012
XXII ISPRS Congress, 25 August — 01 September 2012, Melbourne, Australia
Vegetation indices
Normalised Difference Index 4-7
NDI47 = m — 5)
B4+B7
Normalized Difference Index 4-5
NDI45 (S = =
B4+B5
Enhanced Vegetation Index (Huete et al.,
Ma a 2002)
B4+CIxB3-C2xB1+L
G-22.5, C126, C2=7.5 and L=1
Modified Chlorophyll Absorption and (Daughtry et
Reflectance Index al., 2000)
MCARI - [(B4 - B3) - 0.2(B4 - 203
Green Normalised Difference Vegetation (Gitelson and
Index Merzlyak,
GNDVI (E = 5) 1996)
B4+B2
Temporal spectral variables
EVI-range (winter/summer crop season)
EVI-minimum (winter/summer crop
season)
Other spectral variables
Reflectance in Blue-Green (B1)
Reflectance in Red (B3)
Reflectance in Near Infrared (B4)
Reflectance in Mid Infrared (B5)
B indicates the band of Landsat data converted to exo-
atmospheric reflectance. eg. B4 means band 4 as shown in
Landsat hand book (NASA, 2011).
3. RESULTS AND DISCUSSION
Ground reference data collected (Section 2.6) for crop seasons
summer 2010 and winter 2011 were analysed in conjunction
with the spatial data variables described in Section 2.7.
Random forest variable importance analysis showed that the
range of EVI was the most influential variable. Temporal
signatures of average EVI values derived for different classes
during the crop season of summer 2011 are illustrated in Figure
4. Areas of cropping consistently shows higher range of EVI
values compared with bare soil or pasture, due to the spectral
variations associated with the crop phenological changes during
the crop season.
| — Fallow
0.8 eu
7 || Cotton E
9 ~~ Pasture £
06 - ——Sorghum | ^ i
| LE es =
|^ 05] ys ete
G 04.
0.3 1
0.2 |
0.1 1
0+— Ed RO em ser dE AE 1
Sep2010 Jan2011 Feb2011 Apr2011
Figure 4. Temporal changes in mean EVI values for different
classes during summer 2010 crop season derived
from Landsat time series data
Accuracy assessment clearly demonstrated the potential of
SVM techniques for classification of the major classes (fallow,
crop, pasture and woody). Overall classification accuracy for
summer 2010 was 87% (k = 0.73)(Table 2) while that of winter
2011 was 93% (k = 0.9) (0.