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Papers/TPCN: Temporal Point Cloud Networks for Motion Forecasting

TPCN: Temporal Point Cloud Networks for Motion Forecasting

Maosheng Ye, Tongyi Cao, Qifeng Chen

2021-03-04CVPR 2021 1Motion ForecastingTrajectory Prediction
PaperPDF

Abstract

We propose the Temporal Point Cloud Networks (TPCN), a novel and flexible framework with joint spatial and temporal learning for trajectory prediction. Unlike existing approaches that rasterize agents and map information as 2D images or operate in a graph representation, our approach extends ideas from point cloud learning with dynamic temporal learning to capture both spatial and temporal information by splitting trajectory prediction into both spatial and temporal dimensions. In the spatial dimension, agents can be viewed as an unordered point set, and thus it is straightforward to apply point cloud learning techniques to model agents' locations. While the spatial dimension does not take kinematic and motion information into account, we further propose dynamic temporal learning to model agents' motion over time. Experiments on the Argoverse motion forecasting benchmark show that our approach achieves the state-of-the-art results.

Results

TaskDatasetMetricValueModel
Autonomous VehiclesArgoverse CVPR 2020DAC (K=6)0.9884TPCN
Autonomous VehiclesArgoverse CVPR 2020MR (K=1)0.5601TPCN
Autonomous VehiclesArgoverse CVPR 2020MR (K=6)0.1333TPCN
Autonomous VehiclesArgoverse CVPR 2020brier-minFDE (K=6)1.9286TPCN
Autonomous VehiclesArgoverse CVPR 2020minADE (K=1)1.5752TPCN
Autonomous VehiclesArgoverse CVPR 2020minADE (K=6)0.8153TPCN
Autonomous VehiclesArgoverse CVPR 2020minFDE (K=1)3.4872TPCN
Autonomous VehiclesArgoverse CVPR 2020minFDE (K=6)1.2442TPCN
Motion ForecastingArgoverse CVPR 2020DAC (K=6)0.9884TPCN
Motion ForecastingArgoverse CVPR 2020MR (K=1)0.5601TPCN
Motion ForecastingArgoverse CVPR 2020MR (K=6)0.1333TPCN
Motion ForecastingArgoverse CVPR 2020brier-minFDE (K=6)1.9286TPCN
Motion ForecastingArgoverse CVPR 2020minADE (K=1)1.5752TPCN
Motion ForecastingArgoverse CVPR 2020minADE (K=6)0.8153TPCN
Motion ForecastingArgoverse CVPR 2020minFDE (K=1)3.4872TPCN
Motion ForecastingArgoverse CVPR 2020minFDE (K=6)1.2442TPCN
Autonomous DrivingArgoverse CVPR 2020DAC (K=6)0.9884TPCN
Autonomous DrivingArgoverse CVPR 2020MR (K=1)0.5601TPCN
Autonomous DrivingArgoverse CVPR 2020MR (K=6)0.1333TPCN
Autonomous DrivingArgoverse CVPR 2020brier-minFDE (K=6)1.9286TPCN
Autonomous DrivingArgoverse CVPR 2020minADE (K=1)1.5752TPCN
Autonomous DrivingArgoverse CVPR 2020minADE (K=6)0.8153TPCN
Autonomous DrivingArgoverse CVPR 2020minFDE (K=1)3.4872TPCN
Autonomous DrivingArgoverse CVPR 2020minFDE (K=6)1.2442TPCN

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