The paper presents a multi-agent motion prediction model called MAP-FORMER that goes beyond current practices of predicting marginal trajectories or Gaussian PDFs for individual agents. The key innovation is the ability to predict covariance matrices for agent-pairs, which allows modeling Gaussian joint PDFs for all relevant agent-pairs in a scene.
The model consists of four main modules:
The covariance matrix prediction is formulated to guarantee symmetry and positive-definiteness, enabling the construction of Gaussian joint PDFs. This provides rich statistical information about agent dependencies and interactions, which is crucial for comprehensive risk assessment in autonomous driving.
The authors evaluate their model on the rounD dataset, which contains highly interactive roundabout scenarios. The results show that the MAP-FORMER (full) model, which combines the TEnc and Transformer-based SaIEnc, outperforms both joint and marginal prediction baselines in standard metrics.
The paper concludes by discussing the potential of the predicted agent-pair covariance matrices for statistical analysis of agent interactions and risk assessment, which will be the focus of future work.
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by Marlon Stein... pada arxiv.org 05-01-2024
https://arxiv.org/pdf/2404.19283.pdfPertanyaan yang Lebih Dalam