John Bosco Kyalo Kiema
is possible to implicitly incorporate topological information through the use of triangulation segmentation procedures
e.g., Delaunay triangulation.
Different classifiers may be employed in the supervised classification of remotely sensed data, namely: maximum
likelihood, minimum distance and parallelepiped classifiers (Lillesand and Kiefer, 1994). For the study presented here,
a maximum likelihood classification approach is adopted. The selection of the training data is basically done using
manual digitising. Five basic urban object classes are identified: Buildings, Pavement, Trees, Grass-covered areas and
Special. The class Special is introduced in order to take care of the many miscellaneous urban objects of limited
dimension that are imaged (e.g., vehicles, tents, water fountains, sculptures etc.). Because of diverse spectral diffusion
in the multispectral data depending on different sunlight conditions, the digitisation of the training areas is often a very
time consuming exercise. Consequently, it would be preferable to procure the training data automatically using existing
GIS databases as proposed in (Walter, 1998).
*
(a) Results based on Daedalus scanner imagery (b) Results based on Daedalus scanner and ALS data
Trees Pavement Special Grass Buildings
Figure 1: Classification results
For the purpose of this study, the elimination of shadow effects in the classification is carried out using an approach
similar to that described in (Haala and Walter, 1999). Firstly, the shadow areas on the imagery are automatically
identified. A separate class Shadow is then introduced for each of the apriori defined object classes. This means that
each object class is divided into one separate subclass for shadow areas and another for non-shadow areas. Separate
training data is digitised for each subclass. The classification is then carried out after which the shadow and non-shadow
subclasses for each object class are combined. This results in one unique class for each apriori defined object class.
Figs. la and b compare the final classification results in the absence and presence of the ALS data respectively. A
comparison of these figures clearly demonstrates the improvement realised in the classification upon fusing the
multispectral and geometric datasets. In particular, the improved ability to discriminate between the low lying urban
object classes (e.g., pavements, grass-covered areas etc.) from features that are significantly above the terrain (e.g.,
buildings, trees etc.) is noted.
Triangulation-based segmentation methods are usually employed in mid-level image processing procedures in order to
combine structured image regions into semantically homogeneous clusters. In general, these methods use the delaunay
triangle as the basic image segmentation primitive. Through this, the topological relationship between the image
segments is implicitly exploited. This is in contrast to traditional segmentation methods which use the spectral
information of the pixels. Details on spatial tessellations in general, and delaunay triangulation in particular, are
discussed in (Okabe er. al, 1992). In order to smoothen the contours of the identified segments as well as minimise the
effect of noise, use is also made of the connected components technique and morphological operations. A more
comprehensive treatment of mathematical morphology and connected components is given in (Serra, 1986) and
(Haralick and Shapiro, 1992) respectively. Segments are extracted for the different urban object classes. A delaunay
490 International Archives of Photogrammetry and Remote Sensing. Vol. XXXIII, Part B3. Amsterdam 2000.