Tutorial Title: On Computing with Spatial Data
Space plays a fundamental role in human cognition. In everyday situations, it
is often viewed as a construct induced by spatial relationships, rather than as
a container that exists independently of the objects located in it. A variety of
formalisms naturally deal with space on the basis of relations between objects.
Moreover, the need to handle imprecise and uncertain information when processing
spatial data has long been recognized and fuzzy approaches have proven to be of
great interest for spatial modeling and reasoning. For instance, spatial
relationships often find good models in fuzzy relations, whether they are
naturally loaded with ambiguity (like to the right of) or associated with crisp,
mathematical definitions (like adjacency). Some models are designed for spatial
reasoning, others are not. Some can handle fuzzy objects, while others can only
handle crisp objects. Depending on the models, the considered objects are
points, lines, surfaces or volumes. They have to be available in raster form, or
in vector form. The object geometry is approximated by a simple entity (e.g., a
rectangle) or is somehow encapsulated in the model. Other means, like
histograms, or linguistic descriptions produced by fuzzy systems, can be used to
carry spatial relationship information.
The tutorial gives a comprehensive summary on the subject and presents
applications to various fields (e.g., geographic information systems,
human-machine communication, medical imaging). The intended audience includes
professionals, researchers and developers interested in soft computing-based
systems exploiting spatial data.