A Benchmark for Unsupervised Anomaly Detection in Multi-Agent Trajectories
Abstract
Human intuition allows to detect abnormal driving scenarios in situations they never experienced before. Like humans detect those abnormal situations and take countermeasures to prevent collisions, self-driving cars need anomaly detection mechanisms. However, the literature lacks a standard benchmark for the comparison of anomaly detection algorithms. We fill the gap and propose the R-U-MAAD benchmark for unsupervised anomaly detection in multi-agent trajectories. The goal is to learn a representation of the normal driving from the training sequences without labels, and afterwards detect anomalies. We use the Argoverse Motion Forecasting dataset for the training and propose a test dataset of 160 sequences with human-annotated anomalies in urban environments. To this end we combine a replay of real-world trajectories and scene-dependent abnormal driving in the simulation. In our experiments we compare 11 baselines including linear models, deep auto-encoders and one-class classification models using standard anomaly detection metrics. The deep reconstruction and end-to-end one-class methods show promising results. The benchmark and the baseline models will be publicly available.
Cite
@article{arxiv.2209.01838,
title = {A Benchmark for Unsupervised Anomaly Detection in Multi-Agent Trajectories},
author = {Julian Wiederer and Julian Schmidt and Ulrich Kressel and Klaus Dietmayer and Vasileios Belagiannis},
journal= {arXiv preprint arXiv:2209.01838},
year = {2022}
}
Comments
8 pages, 4 figures, 2 tables, accepted by IEEE ITSC 2022