Approche ontologique pour la modélisation de carte contextuelle
Communication sans acte
Date
2019-11Abstract
This paper first presents a state of the art of context modeling approaches in an information system. We then propose an approach based on a spatial-temporal ontology to automate the data selection step in the process of making personalized maps. The proposed approach of context modeling takes into consideration the user’s profile and preferences, as well as events related to an environment. We then aim, by logical reasoning, to be able to deduce a selection of categories and objects that will
contribute to the creation of a personalized map.
Files in this item
Collections
Related items
Showing items related by title, author, creator and subject.
-
Article dans une revue avec comité de lectureMaps have long been seen as a single cartographic product for different uses, with the user having to adapt their interpretation to his or her own needs. On-demand mapping reverses this paradigm in that it is the map that ...
-
Communication avec acteOn nautical charts, undersea features are portrayed by sets of soundings (depth points) and isobaths (depth contours) from which map readers can interpret landforms. Different techniques were developed for automatic soundings ...
-
Article dans une revue avec comité de lectureA nautical chart is a kind of map used to describe the seafloor morphology and shoreline of adjacent lands. One of its main purposes is to guaranty safety of navigation. As a consequence, construction of a nautical chart ...
-
Communication avec acteA landform is a subjective individuation of a part of a terrain. Landform recognition is a difficult task because its definition usually relies on a qualitative and fuzzy description. Achieving automatic recognition of ...
-
Communication avec acteLes référentiels de données géoréférencées sont de plus en plus utilisés pour permettre l'annotation spatiale de documents textuels et ainsi faciliter l'accès à leur contenu, voire son analyse spatiale. En revanche, peu ...