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$AIR^2$ for Interaction Prediction (2111.08184v1)
Published 16 Nov 2021 in cs.CV
Abstract: The 2021 Waymo Interaction Prediction Challenge introduced a problem of predicting the future trajectories and confidences of two interacting agents jointly. We developed a solution that takes an anchored marginal motion prediction model with rasterization and augments it to model agent interaction. We do this by predicting the joint confidences using a rasterized image that highlights the ego agent and the interacting agent. Our solution operates on the cartesian product space of the anchors; hence the $"2"$ in $AIR2$. Our model achieved the highest mAP (the primary metric) on the leaderboard.