ori ginal
image
Quadtree generation based on spectral
and statistical information
whi dn
Segmentation
quadtree
3
Low — level
quadtree generation
Geometry and attribute transformation,
construct homegeneous region list
Homogeneous
region
quadtree generation
High — level
quadtree
Control and feature
quadtree generation
Spatial
processes till
relation
quadtree
Repeat above
based on
output
satisfaction
DGs
Figure 1. Hierarchical processing for spatial relation extraction based on quadtree.
2. A NEW PROCEDURE FOR SPATIAL
RELATION EXTRACTION BASED ON
QUADTREE REPRESENTATION
The steps of automatic spatial relation extraction based
on quadtree representation by a computer system are
as the following and Figurel shows the hierarchy of
the processing in which;
Stepl. The image is first segmented by using quadtree
generation . The characteristics are detected by only
checking the spectral and statistical attributes, and a
segmentation quadtree is made.
Step2. A segmentation quadtree is defined as a
binding which composed of location code for a
558
quadtree node, attribute values measured during the
scanning of a quadtree generation and region
number. Then the quadtree segments from step 1 are
merged to yield a new quadtree segment by defining
the segment descriptive parameters and mergence
criterion that relate to the thematic units. At the same
time, the spatial configuration characteristics such as
shape , size etc. are extracted. Througe step 2 , the
segmentation quadtree is transformed into the
homegeneous region quadtree.
Step 3. The spatial relations and constraints among
the segmentation quadtree are extracted by using
control and feature quadtree generation. Thus the
region relationship list is formed. As more and more
constraints are filled in the list ,each spatial relation
[eS