Under CopyrightHug, RonnyRonnyHugBecker, StefanStefanBeckerHübner, WolfgangWolfgangHübnerArens, MichaelMichaelArens2022-03-144.2.20212020https://publica.fraunhofer.de/handle/publica/40993110.24406/publica-fhg-409931Existing benchmarks targeting the overall performance of trajectory prediction models lack the possibility of gaining insight into a model's behavior under specific conditions. Towards this end, a new benchmark aiming to take on a complementary role compared to existing benchmarks is proposed. It consists of synthetically generated and modified real-world trajectories from established datasets with scenario-dependent test and training splits. The benchmark provides a hierarchy of three inference tasks, representation learning, de-noising, and prediction, comprised of several test cases targeting specific aspects of a given machine learning model. This allows a differentiated evaluation of the model's behavior and generalization capabilities. As a result, a sanity check for single trajectory models is provided aiming to prevent failure cases and highlighting requirements for improving modeling capabilities.en004670A complementary trajectory prediction benchmarkconference paper