Unveiling Transferability in Trajectory Prediction via Latent Scene Embeddings
arXiv:2606.30777v1 Announce Type: new Abstract: The growing availability of trajectory datasets has fueled major advances in data-driven motion prediction. Yet, models trained on one dataset often fail to generalize beyond their training domain as a result of differences in scene layouts, agent behaviors, and sensing conditions. A framework that learns latent representations of datasets and quantifies their similarity using distributional metrics is presented. This large-scale study covers 24 ma...
arXiv cs.CV
·Theodor Westny, David Axelsson, Bj\"orn Olofsson, Erik Frisk
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