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simmediumroboticsmetric · varies

Goal-Oriented Reactive Simulation for Closed-Loop Trajectory Prediction

Description

Current trajectory prediction models are primarily trained in an open-loop manner, which often leads to covariate shift and compounding errors when deployed in real-world, closed-loop settings. Furthermore, relying on static datasets or non-reactive log-replay simulators severs the interactive loop, preventing the ego agent from learning to actively negotiate surrounding traffic. In this work, we propose an on-policy closed-loop training paradigm optimized for high-frequency, receding horizon eg

Source

http://arxiv.org/abs/2603.24155v2