and so also some of the finer classes like early and late
pulses, deep and shallow water bodies etc.
Table 1. Input parameters for multi-resolution segmentation
of satellite data used in the study
IAPRS & SIS, Vol.34, Part 7, “Resource and Environmental Monitoring”, Hyderabad, India,2002
Study Homogeneity Segmen Scale No. of | Object
Area & | Criteria tation image Mean
data (0-1 range) Level objects Size in
formed pixels
Site-1, Color-0.9, Level-1 1 201932 1.9
IRS- Shape-0.1 Level-2 5 10348 25.3
LISS- (Smooth- Level-3 10 2902 90.3
IH ness:0.9, Level-4 17 997 262.9
Compact- Level-5 25 483 542.7
ness:0.1) Level-6 28 386 679.1
Level-7 35 242 1083.0
Site-2 Color-0.8, Level-1 1 218476 1.2
IRS- Shape-0.2 Level-2 2 73698 3.6
LISS- (Smooth- Level-3 4 17204 15.4
II ness:0.9, Level-4 6 8018 32.7
Compact- Level-5 8 4778 54.9
ness:0.1) Level-6 20 908 288.7
Site-1, Color-0.7, Level-1 1 82888 3.6
SAR Shape-0.3 Level-2 2 16072 16.3
data (Smooth- Level-3 3 6738 38.9
ness:0.9, Level-4 4 3617 72.5
Compact- Level-5 4.5 2835 92:5
ness:0.1) Level-6 5 2232 117.5
Level-7 7 1087 241.2
Level-8 8 842 311.3
Level-9 11 438 598.5
In the classification step, initially, broad land use land covers
such as water bodies, vegetated areas, fallow fields and
settlements have been classified at level-5 by Nearest
Neighbour rule. However, for certain classes with poor
separability from other classes manual classification
approach has been followed. Settlement is one such class that
has been manually classified based on the apriori
information to avoid misclassification. Similarly, to avoid
misclassification at finer levels of segmentation, certain
classes like vegetation, fallow fields and water bodies have
been declared as super classes at segmentation level-5 and
class hierarchy has been established. Further, taking
advantage of the distance criterion for contextual
information, banana plantations could be classified
satisfactorily in spite of its poor separability from cotton
class. The classification accuracy computed in terms of
kappa coefficient shows that the approach consistently
performed better over per pixel classifier. Performance of the
object based segmentation and classification has been tested
on site-2 with fewer classes, allowing greater intra class
variability. Comparison of results shown in figure 2 confirm
the better performance of the adopted approach over the
standard maximum likelihood classifier. In the present
exercise, the utility of object oriented segmentation and
classification could not be established with the RADARSAT
SAR dataset used. However, it could be observed that banana
plantations, bare fields and water bodies could be
discriminated from cropped fields and settlements.
It was also observed based on visual analysis and ground
observations that classification accuracy computed by
defining the homogeneous test areas corresponding to each
of the classes, in general, leads to unrealistically higher
classification accuracy. It is obvious that signature overlap
occurs mainly at the class boundaries leading to
misclassification, which is often difficult to account for at
post classification evaluation stage. Misclassification of
pixels by per pixel classifier was prominently seen at edges
and class boundaries, which resulted in not so distinct class
boundaries. Object based classification yielded clear class
boundaries with reduced misclassification.
Red soil
Cross Plantation
Other Ves. Tanks
Figure 2. Results of per pixel (ML) classifier and object oriented
multi-resolution segmentation based classification