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nuScenes Knowledge Graph - A comprehensive semantic representation of traffic scenes for trajectory prediction

Leon Mlodzian, Zhigang Sun, Hendrik Berkemeyer, Sebastian Monka, Zixu Wang, Stefan Dietze, Lavdim Halilaj, Juergen Luettin

202312 citationsDOI

Abstract

Trajectory prediction in traffic scenes involves accurately forecasting the behaviour of surrounding vehicles. To achieve this objective it is crucial to consider contextual information, including the driving path of vehicles, road topology, lane dividers, and traffic rules. Although studies demonstrated the potential of leveraging heterogeneous context for improving trajectory prediction, state-of-the-art deep learning approaches still rely on a limited subset of this information. This is mainly due to the limited availability of comprehensive representations. This paper presents an approach that utilizes knowledge graphs to model the diverse entities and their semantic connections within traffic scenes. Further, we present nuScenes Knowledge Graph (nSKG), a knowledge graph for the nuScenes dataset, that models explicitly all scene participants and road elements, as well as their semantic and spatial relationships. To facilitate the usage of the nSKG via graph neural networks for trajectory prediction, we provide the data in a format, ready-to-use by the PyGlibrary. All artefacts can be found here: https://tinyurl.com/5t2vv9yu.

Topics & Concepts

Computer scienceTrajectoryGraphRepresentation (politics)Context (archaeology)Artificial intelligenceKnowledge graphScene graphMachine learningAttention networkDeep learningData miningTheoretical computer sciencePaleontologyAstronomyPhysicsBiologyPoliticsPolitical scienceLawRendering (computer graphics)Traffic Prediction and Management TechniquesData Quality and ManagementData Management and Algorithms
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