A STUDY ON THE REPRESENTATION AND
INTERPRETATION OF REMOTELY SENSED IMAGERY
Li Deren
Guan Zequn
Department of Photogrammetry &. Remote Sensing
Wuhan Technical University of Surveying and Mapping
Wuhan
ABSTRACT
For past many years,many reseatchers have devoted
effort the of
representation. However, no recent study has been
considerable to problem image
undertaken for an interpretation of remotely sensed
image based on the combination of multiform
representations under conditions where a computer
system can interpret an image by incorporating multi
— information overlap analysis in the traditional
representation of image understanding. In this paper,
we describe an multilevel representation tree composed
of synthetic land unit map ,land unit relatability list,
complexes labeling, correlation list and region relation
graphs. This representation tree allows one to interpret
image in terms of remotely sensed image and non —
that may provide
remotely sensed digital maps
geometric, topological, overlapping and attributive
information in a form suitable for image
interpretation. We present an interpretation for
remotely sensed image by using multilevel
representation tree and give also a number of
experimental results.
KEY WORDS;
Multilevel
Representation, Interpretation,
representation tree, Synthetic land unit
map , Complexes labeling , Correlation list.
1. INTRODUCTION
The problem addressed in this paper is that of how
effectively to interpret an object in an image based on
the combining of remotely sensed images and non —
remotely sensed digital maps that are in multiform
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representations.
For many years, much of the research on image
recognition has involved various representatations
such as boundary representations, constructive solid
geometry representations, sweep representations , and
etc... Most of
methods are feasible for acquiring the geometric
decomposition representations these
information from the object image (Andrew, 1989).
We submit that the above — mentioned representations
provided for image recognition all have two grave
defects. The first defect is that some information ,such
as the between and their
relationships objects
environmental factors, which is very usuful for
remotely sensed image interpretation hasn? t been
reflected. The second defect is that it is impossible to
obtain a suitable correspondence between different
data that may be remotely sensed images or digital
maps. This is because the representations are aimed at
representing regular geometric form.
It has been shown that geographic information is
important to remotely sensed image interpretation,
because the data Provide information on the spatial
distribution of important factors such as rivers, roads,
towns etc.. To use the geographic information and
overcome the shortcomings as stated above, in this
paper we describe a multilevel representation tree that
have two principal branches. One of them is
composed of various digital maps, synthetic land unit
list etc. , which
map and land unit relatability
originate from multi information overlap
analysis. The other is associated with complexes