y be
ected
urate
ee
mage
finite
finite
falls
these
based
issign
ng to
„The
or be
specific
d Rı)
s region
adtree
ed on
ibutes
matches the set of the attributes for the particular
object class. This work has to be done under the
guidance of DGs. For example,if the image shown in
Figure 4 is of an agricultural area containing a
number of fields and there are three categories ,such
as arid land,irrigation land ,and bare land , which
have the same attributes size 60 in the image, the
quadtrees may be related with the same abstract object
class, Arid/Irrigation/Bare land. As more attributes
are discorved in the image, each interpretation class
may become more specific. R, in Figure 4, for
instance,can be interpreted as an Arid land according
to the attributes;
SizeZ260 and
90<Hue<120 and
Saturationzz0. 8
4.2 Spatial relation extraction based on quadtree
In the last process , we see that quadtrees
interpretation and image processing are mainly
concerned with statistical and geometric attributes of
the image, and classifying shapes that appear in the
image. However, it is not always unambiguous to
interpret quadtrees using these attributes. As a
continuation of the interpretation , we consider further
solution by using some spatial relations in the
homegeneous region quadtree.
An simple example in Figure 5 will illustrate the use
of spatial relations. In accordance with the attributes
of the regions R;, Ry, we can not discern if they are
willow lands or poplar lands. If we consider the
relation between river (R3) and willow lands (R, and
R;), the region R, and R; may be interpreted as
willow lands.So the relations between objects is
important to exclude the ambiguity of the image
interpretations.
IK] Ri, R;—willow/Poplar
E s
River
Figure 5. An example of spatial relation
561
In this paper ,spatial relation extraction is perform on
the control quadtree and feature quadtree.
Control quadtree is a enclosure quadtree that is applied
for testing the relation between homegenous region
quadtrees or class interpretation quadtrees. Detecting
the relation. between quad rant c and b can be
simplified to shrinking and expanding a enclose
polygon (see Figure 6 a).
Enclose polygon r---_4
CC I 1
’ | |
! mum
l--4 C] | [T domesenents ! | |
| CT ien quadtree |! rim
I
L. PER 1 I I
+
—— 0
a b
pe]
icum eie]
Le : el
| |
p «l
c
Figure 6. An example of spatial relation extraction base on quadtree.
Feature quadtree is a specific quadtree which extract
two kinds of essential components of control
quadtree; (a) feature node , which is used as label to
represent the intersecting node caused by the meeting
of several line quadtrees of a control quadtree (see
Figure 6 c). (b) feature line quadtree , which is a part
of control quadtree used for representing the relations
between homogeneous region quadtrees (see Figure
6b). Thus the spatial relation extraction is performed
as the following:
1) Construct control quadtree by shrinking and
expanding enclosure polygon.
2) Quadtree node that is a part of a control quadtree
is labeled in terms of the relation between
homogeneous region quadtrees.
3) Extract feature node and feature line quadtree.
4) Extract spatial relation between homogeneous
region quadtrees by using feature node and feature
line quadtree,and a spatial relation quadtree is made.
5. CONCLUSIONS