GOHOME: Graph-Oriented Heatmap Output for future Motion Estimation.

IEEE International Conference on Robotics and Automation(2022)

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摘要
In this paper, we propose GOHOME, a method leveraging graph representations of the High Definition Map and sparse projections to generate a heatmap output representing the future position probability distribution for a given agent in a traffic scene. This heatmap output yields an unconstrained 2D grid representation of agent future possible locations, allowing inherent multimodality and a measure of the uncertainty of the prediction. Our graph-oriented model avoids the high computation burden of representing the surrounding context as squared images and processing it with classical CNNs, but focuses instead only on the most probable lanes where the agent could end up in the immediate future. GOHOME reaches 3$rd$ on Argoverse Motion Forecasting Benchmark on the MissRate$_6$ metric while achieving significant speed-up and memory burden diminution compared to 1$^{st}$ place method HOME. We also highlight that heatmap output enables multimodal ensembling and improve 1$^{st}$ place MissRate$_6$ by more than 15$\%$ with our best ensemble.
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GOHOME,graph-oriented heatmap output,future Motion estimation,method leveraging graph representations,High Definition Map,sparse projections,future position probability distribution,given agent,traffic scene,heatmap output yields,unconstrained 2D grid representation,agent future possible locations,inherent multimodality,graph-oriented model,high computation burden,probable lanes,immediate future,Argoverse Motion,Misskate6metric,Argoverse 1,st place method HOME,multimodal ensembling,st place MissRate6by
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