Bibliography | Kis, Attila-Balasz: Using Transformers to Improve Anomalous Trajectory Detection for Autonomous Driving. University of Stuttgart, Faculty of Computer Science, Electrical Engineering, and Information Technology, Master Thesis No. 119 (2023). 46 pages, english.
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Abstract | In this master thesis, a transformer-based method is proposed for anomaly detection in multi-agent trajectory data for autonomous driving. An unsupervised reconstruction-based approach is employed to learn a concept of normal driving behavior using vast amounts of normal trajectory data. Based on this approach, anomalous trajectories deviate from the learned notion of normality. The method is evaluated on a benchmark dataset and against a set of state-of-the-art baseline methods.
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Department(s) | University of Stuttgart, Institute of Artificial Intelligence, Analytic Computing
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Superviser(s) | Staab, Prof. Steffen; Bulling, Prof. Andreas; Lopez Portillo Alcocer, Rodrigo |
Entry date | September 17, 2024 |
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