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simmediumroboticsmetric · varies

What Matters for Scalable and Robust Learning in End-to-End Driving Planners?

Description

End-to-end autonomous driving has gained significant attention for its potential to learn robust behavior in interactive scenarios and scale with data. Popular architectures often build on separate modules for perception and planning connected through latent representations, such as bird's eye view feature grids, to maintain end-to-end differentiability. This paradigm emerged mostly on open-loop datasets, with evaluation focusing not only on driving performance, but also intermediate perception

Source

http://arxiv.org/abs/2603.15185v1