From Prediction to Planning With Goal Conditioned Lane Graph Traversals
About
The field of motion prediction for automated driving has seen tremendous progress recently, bearing ever-more mighty neural network architectures. Leveraging these powerful models bears great potential for the closely related planning task. In this letter we propose a novel goal-conditioning method and show its potential to transform a state-of-the-art prediction model into a goal-directed planner. Our key insight is that conditioning prediction on a navigation goal at the behaviour level outperforms other widely adopted methods, with the additional benefit of increased model interpretability. We train our model on a large open-source dataset and show promising performance in a comprehensive benchmark.
Marcel Hallgarten, Martin Stoll, Andreas Zell• 2023
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Planning | nuPlan 14 Random (test) | CLS-NR0.56 | 40 | |
| Planning | nuPlan 14 Hard (test) | CLS-NR43.22 | 23 | |
| Planning | nuPlan interPlanLC | CLS-R34.99 | 12 | |
| Planning | nuPlan 14 (val) | CLS-NR58.4 | 12 | |
| Closed-loop Planning | nuPlan (val14) | CA85.8 | 11 | |
| Motion Planning | nuPlan 14 Hard (test) | CLS-SR40.96 | 11 | |
| Motion Planning | nuPlan (val14) | CLS-SR50.82 | 11 | |
| Motion Planning | interPlanLC | CLS-SR14.95 | 11 | |
| Planning | nuPlan interPlan | CLS-R14.55 | 10 | |
| Trajectory Planning | interPlan | interPlan Score10 | 10 |
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