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SimAug: Learning Robust Representations from Simulation for Trajectory Prediction

About

This paper studies the problem of predicting future trajectories of people in unseen cameras of novel scenarios and views. We approach this problem through the real-data-free setting in which the model is trained only on 3D simulation data and applied out-of-the-box to a wide variety of real cameras. We propose a novel approach to learn robust representation through augmenting the simulation training data such that the representation can better generalize to unseen real-world test data. The key idea is to mix the feature of the hardest camera view with the adversarial feature of the original view. We refer to our method as SimAug. We show that SimAug achieves promising results on three real-world benchmarks using zero real training data, and state-of-the-art performance in the Stanford Drone and the VIRAT/ActEV dataset when using in-domain training data.

Junwei Liang, Lu Jiang, Alexander Hauptmann• 2020

Related benchmarks

TaskDatasetResultRank
Future Trajectory PredictionSDD (Stanford Drone Dataset) (test)
ADE10.27
51
Trajectory ForecastingStanford Drone Dataset
Average Displacement Error (ADE)10.27
35
Trajectory PredictionStanford Drone (test)
minADE (20)10.27
19
Future Trajectory PredictionActEV VIRAT 2018 (val)
ADE21.73
19
Pedestrian trajectory predictionStanford Drone Dataset
ADE10.27
17
Trajectory PredictionVIRAT ActEV (test)
minADE117.96
14
Trajectory PredictionStanford Drone Dataset (SDD) (entire)
minADE2010.27
6
Trajectory PredictionNBA rebound dataset (test)
ADE0.567
5
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