Semantic Interpretation of 3D Point Clouds of Historical Objects
DOI:
https://doi.org/10.55630/dipp.2011.1.14Keywords:
ontology, scene interpretation, 3D point cloudAbstract
This paper presents the main concepts of a project under development concerning the analysis process of a scene containing a large number of objects, represented as unstructured point clouds. To achieve what we called the ―optimal scene interpretation‖ ( the shortest scene description satisfying the MDL principle) we follow an approach for managing 3-D objects based on a semantic framework based on ontologies for adding and sharing conceptual knowledge about spatial objects.References
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