Towards Traffic Scene Description: The Semantic Scene Graph
- URL: http://arxiv.org/abs/2111.10196v1
- Date: Fri, 19 Nov 2021 13:08:55 GMT
- Title: Towards Traffic Scene Description: The Semantic Scene Graph
- Authors: Maximilian Zipfl, J. Marius Z\"ollner
- Abstract summary: A model to describe a traffic scene in a semantic way is described in this paper.
The model allows to describe a traffic scene independently of the road geometry and road topology.
An important aspect of the description is that it can be converted easily into a machine-readable format.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: For the classification of traffic scenes, a description model is necessary
that can describe the scene in a uniform way, independent of its domain. A
model to describe a traffic scene in a semantic way is described in this paper.
The description model allows to describe a traffic scene independently of the
road geometry and road topology. Here, the traffic participants are projected
onto the road network and represented as nodes in a graph. Depending on the
relative location between two traffic participants with respect to the road
topology, semantic classified edges are created between the corresponding
nodes. For concretization, the edge attributes are extended by relative
distances and velocities between both traffic participants with regard to the
course of the lane. An important aspect of the description is that it can be
converted easily into a machine-readable format. The current description
focuses on dynamic objects of a traffic scene and considers traffic
participants, such as pedestrians or vehicles.
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