Evaluating randomized smoothing as a defense against adversarial attacks in trajectory prediction
Julian F. Schumann(Delft University of Technology), Arkady Zgonnikov, Frederik Baymler Mathiesen(Delft University of Technology), Jens Kober(University of Stuttgart), Eduardo Figueiredo, Luca Laurenti
arXiv (Cornell University)
March 11, 2026
Cited by 0
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