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arxiv: 2306.11868 · v1 · pith:IMYBB6EK · submitted 2023-06-20 · cs.CV

Multiverse Transformer: 1st Place Solution for Waymo Open Sim Agents Challenge 2023

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classification cs.CV
keywords agentschallengeclosed-loopmethodsmultiversemvtaopenplace
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This technical report presents our 1st place solution for the Waymo Open Sim Agents Challenge (WOSAC) 2023. Our proposed MultiVerse Transformer for Agent simulation (MVTA) effectively leverages transformer-based motion prediction approaches, and is tailored for closed-loop simulation of agents. In order to produce simulations with a high degree of realism, we design novel training and sampling methods, and implement a receding horizon prediction mechanism. In addition, we introduce a variable-length history aggregation method to mitigate the compounding error that can arise during closed-loop autoregressive execution. On the WOSAC, our MVTA and its enhanced version MVTE reach a realism meta-metric of 0.5091 and 0.5168, respectively, outperforming all the other methods on the leaderboard.

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