3D models of transportation objects like a road, bridge, underpass, etc.
are required in many domains including military training, land
development, etc. While remote sensed images and LiDaR data can be used
to create approximate 3D representations, detailed 3D representations are
difficult to create automatically. Instead, interactive tools are used
with rather laborious effort. For example, the top commercial interactive
model generator we tried required 94 parameters in all for different
bridge types. In this paper, we take a different path.We automatically
derive these parameter values from GIS (Geographic Information Systems)
data, which normally contains detailed information of these objects, but
often only implicitly. The framework presented here transforms GIS data
into a knowledge base consisting of assertions. Spatial/numeric relations
are handled through plug-ins called property extractors whose results get
added to the knowledge base, used by a reasoning engine to infer object
properties. A number of properties have to be extracted from images, and
are dependent on the accuracy of computer vision methods. While a
comprehensive property extractor mechanism is work in progress, . a
prototype implementation illustrates our framework for bridges with GIS
data from the real world. To the best of our knowledge, our framework is
the first to integrate knowledge inference and uncertainty for extracting
landscape object properties by fusing facts from multi-modal GIS data
sources.
CCS Concepts: Computing methodologies --> Computer graphics;
Description logics; Reasoning about belief and knowledge
full paper
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