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Papers/SCENE: Reasoning about Traffic Scenes using Heterogeneous ...

SCENE: Reasoning about Traffic Scenes using Heterogeneous Graph Neural Networks

Thomas Monninger, Julian Schmidt, Jan Rupprecht, David Raba, Julian Jordan, Daniel Frank, Steffen Staab, Klaus Dietmayer

2023-01-09Knowledge GraphsNode Classification
PaperPDFCode(official)

Abstract

Understanding traffic scenes requires considering heterogeneous information about dynamic agents and the static infrastructure. In this work we propose SCENE, a methodology to encode diverse traffic scenes in heterogeneous graphs and to reason about these graphs using a heterogeneous Graph Neural Network encoder and task-specific decoders. The heterogeneous graphs, whose structures are defined by an ontology, consist of different nodes with type-specific node features and different relations with type-specific edge features. In order to exploit all the information given by these graphs, we propose to use cascaded layers of graph convolution. The result is an encoding of the scene. Task-specific decoders can be applied to predict desired attributes of the scene. Extensive evaluation on two diverse binary node classification tasks show the main strength of this methodology: despite being generic, it even manages to outperform task-specific baselines. The further application of our methodology to the task of node classification in various knowledge graphs shows its transferability to other domains.

Results

TaskDatasetMetricValueModel
Node ClassificationAIFBAccuracy95.83SCENE
Node ClassificationMUTAGAccuracy75.44SCENE
Node ClassificationAMAccuracy90.05SCENE
Node ClassificationBGSAccuracy92.41SCENE

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