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Papers/SSL-Lanes: Self-Supervised Learning for Motion Forecasting...

SSL-Lanes: Self-Supervised Learning for Motion Forecasting in Autonomous Driving

Prarthana Bhattacharyya, Chengjie Huang, Krzysztof Czarnecki

2022-06-28Representation LearningSelf-Supervised LearningMotion ForecastingAutonomous Driving
PaperPDFCode(official)

Abstract

Self-supervised learning (SSL) is an emerging technique that has been successfully employed to train convolutional neural networks (CNNs) and graph neural networks (GNNs) for more transferable, generalizable, and robust representation learning. However its potential in motion forecasting for autonomous driving has rarely been explored. In this study, we report the first systematic exploration and assessment of incorporating self-supervision into motion forecasting. We first propose to investigate four novel self-supervised learning tasks for motion forecasting with theoretical rationale and quantitative and qualitative comparisons on the challenging large-scale Argoverse dataset. Secondly, we point out that our auxiliary SSL-based learning setup not only outperforms forecasting methods which use transformers, complicated fusion mechanisms and sophisticated online dense goal candidate optimization algorithms in terms of performance accuracy, but also has low inference time and architectural complexity. Lastly, we conduct several experiments to understand why SSL improves motion forecasting. Code is open-sourced at \url{https://github.com/AutoVision-cloud/SSL-Lanes}.

Results

TaskDatasetMetricValueModel
Autonomous VehiclesArgoverse CVPR 2020DAC (K=6)0.9844SSL-Lanes
Autonomous VehiclesArgoverse CVPR 2020MR (K=1)0.5671SSL-Lanes
Autonomous VehiclesArgoverse CVPR 2020MR (K=6)0.1326SSL-Lanes
Autonomous VehiclesArgoverse CVPR 2020brier-minFDE (K=6)1.9433SSL-Lanes
Autonomous VehiclesArgoverse CVPR 2020minADE (K=1)1.6342SSL-Lanes
Autonomous VehiclesArgoverse CVPR 2020minADE (K=6)0.8401SSL-Lanes
Autonomous VehiclesArgoverse CVPR 2020minFDE (K=1)3.5643SSL-Lanes
Autonomous VehiclesArgoverse CVPR 2020minFDE (K=6)1.2493SSL-Lanes
Motion ForecastingArgoverse CVPR 2020DAC (K=6)0.9844SSL-Lanes
Motion ForecastingArgoverse CVPR 2020MR (K=1)0.5671SSL-Lanes
Motion ForecastingArgoverse CVPR 2020MR (K=6)0.1326SSL-Lanes
Motion ForecastingArgoverse CVPR 2020brier-minFDE (K=6)1.9433SSL-Lanes
Motion ForecastingArgoverse CVPR 2020minADE (K=1)1.6342SSL-Lanes
Motion ForecastingArgoverse CVPR 2020minADE (K=6)0.8401SSL-Lanes
Motion ForecastingArgoverse CVPR 2020minFDE (K=1)3.5643SSL-Lanes
Motion ForecastingArgoverse CVPR 2020minFDE (K=6)1.2493SSL-Lanes
Autonomous DrivingArgoverse CVPR 2020DAC (K=6)0.9844SSL-Lanes
Autonomous DrivingArgoverse CVPR 2020MR (K=1)0.5671SSL-Lanes
Autonomous DrivingArgoverse CVPR 2020MR (K=6)0.1326SSL-Lanes
Autonomous DrivingArgoverse CVPR 2020brier-minFDE (K=6)1.9433SSL-Lanes
Autonomous DrivingArgoverse CVPR 2020minADE (K=1)1.6342SSL-Lanes
Autonomous DrivingArgoverse CVPR 2020minADE (K=6)0.8401SSL-Lanes
Autonomous DrivingArgoverse CVPR 2020minFDE (K=1)3.5643SSL-Lanes
Autonomous DrivingArgoverse CVPR 2020minFDE (K=6)1.2493SSL-Lanes

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