‘EVORA: Deep Evidential Traversability Learning for Risk-Aware Off-Road Autonomy’

“Traversing terrain with good traction is crucial for achieving fast off-road navigation. Instead of manually designing costs based on terrain features, existing methods learn terrain properties directly from data via self-supervision, but challenges remain to properly quantify and mitigate risks due to uncertainties in learned models. This work efficiently quantifies both aleatoric and epistemic uncertainties by learning discrete traction distributions and probability densities of the traction predictor’s latent features.”

Find the paper and full list of authors at ArXiv.

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