the settlement class are classified as other features such
as forest or agricultural areas, due to the high resolution
of the imagery and wide variety of building roof spectral
properties. When tested with lower resolution imagery,
settlements are recognised as uniform but the accuracy of
the results deteriorates.
Classes must be decided on beforehand and adequate
samples that represent the classes must be collected. For
most super classes there will be subclasses for a feature
due to the spectral variation within classes. For example,
many samples of the class ‘water’ were collected as
subclasses and merged to make the final water class. A
further challenge lies in the fact that a class may consist
of various land cover types which are spectrally diverse,
but need to be grouped together. Such an example is the
urban built-up class which may consist of buildings,
gardens (vegetation), swimming pools and bare ground.
One may consider classifying buildings separately, but
this decision is influenced by the purpose of the
classification, and in this case the built-up area was
required. Even individual buildings can have a multitude
of different land cover types and colours; for example,
roof tiles, thatch, metal sheeting, etc. are all spectrally
diverse.
In this example the maximum likelihood classification
method was tested. Final classes consisted of water,
vegetation, road, built-up and bare ground or sand.
Figure 1: Subset of aerial image used in all classification
methods tested
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
Class name Producers Users KIA per
accuracy accuracy class
Road 0.67 0.40 0.34
Bare ground 1.00 1.00 1.00
or sand
Water 0.74 1.00 1.00
Built-up 0.73 0.66 0.43
Vegetation 0.50 0.60 0.51
Overall accuracy 0.70
KIA 0.58
Table 1: Accuracy assessment and kappa statistics for
pixel-based supervised method (Maximum Likelihood
Classification)
Figure 2: Results of supervised classification — maximum
likelihood classification
The classification results indicate that there is overlap
between the road and the built-up classes due to their
spectral similarity. Some buildings were also incorrectly
classified as bare ground or sand and some vegetation
was incorrectly classified as roads and built-up areas.
Unsupervised classification
In unsupervised classification, pixel values within a
certain land cover type should be close together in the
measurement (spectral) space, whereas data in different
classes should be reasonably well separated. The classes
that result from unsupervised classification are spectral
classes (Lillesand et al. 2004).
The unsupervised ISODATA method is popular in the
classification of heterogeneous high resolution images as
it is very successful in finding the spectral clusters that
are inherent in images (Zhang 2001). Unsupervised
classification may address some of the shortcomings of
applying supervised classification for land use or land
cover classification where classes have a high degree of
spectral variability. Where there is a high degree of
spectral variability, suitable training sites for relevant
land use or land cover classes will always be difficult to
achieve.
The unsupervised approach is simple and no training data
or samples are needed, thus making it much faster to
implement than the supervised approach. Another
advantage is that the unsupervised classifier identifies the
different spectral classes present in an image, which
might not be obvious to an analyst applying a supervised
classifier. Similarly, there may be so many spectral
classes in a scene that it would be difficult to train on all
of them. Since unsupervised classification is the
identification of spectrally distinct classes in an image,
the analyst must still use reference data to associate
spectral classes with the land cover types of interest. The
spectral classes identified may not be uniquely associated
with a land cover type, and one may have several
spectral classes representing a single feature class
(Lillesand et al. 2004).
The unsupervised approach was tested using the
ISODATA method. The results were not satisfactory and
classes were not easily separated due to the large
variability within individual classes. The accuracy of the