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DTPP: Differentiable Joint Conditional Prediction and Cost Evaluation for Tree Policy Planning in Autonomous Driving

About

Motion prediction and cost evaluation are vital components in the decision-making system of autonomous vehicles. However, existing methods often ignore the importance of cost learning and treat them as separate modules. In this study, we employ a tree-structured policy planner and propose a differentiable joint training framework for both ego-conditioned prediction and cost models, resulting in a direct improvement of the final planning performance. For conditional prediction, we introduce a query-centric Transformer model that performs efficient ego-conditioned motion prediction. For planning cost, we propose a learnable context-aware cost function with latent interaction features, facilitating differentiable joint learning. We validate our proposed approach using the real-world nuPlan dataset and its associated planning test platform. Our framework not only matches state-of-the-art planning methods but outperforms other learning-based methods in planning quality, while operating more efficiently in terms of runtime. We show that joint training delivers significantly better performance than separate training of the two modules. Additionally, we find that tree-structured policy planning outperforms the conventional single-stage planning approach.

Zhiyu Huang, Peter Karkus, Boris Ivanovic, Yuxiao Chen, Marco Pavone, Chen Lv• 2023

Related benchmarks

TaskDatasetResultRank
PlanningnuPlan 14 Hard (test)
CLS-NR60.11
23
PlanningnuPlan interPlanLC
CLS-R67.88
12
PlanningnuPlan 14 (val)
CLS-NR71.66
12
Motion PlanninginterPlanLC
CLS-SR45.94
11
Motion PlanningnuPlan (val14)
CLS-SR62.41
11
Motion PlanningnuPlan 14 Hard (test)
CLS-SR46.65
11
PlanningnuPlan interPlan
CLS-R30.32
10
Trajectory PlanninginterPlan
interPlan Score25
10
Trajectory PredictionDragon Lake Parking (DLP) (val)
minADE (m)0.32
7
Trajectory PredictioninD (val)
minADE (m)0.49
7
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Other info

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