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2025
L4DC
L4DC 2025
Learning Two-agent Motion Planning Strategies from Generalized Nash Equilibrium for Model Predictive Control
Authors
Hansung Kim
,
Edward L. Zhu
,
Chang Seok Lim
,
Francesco Borrelli
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