ArXiv TLDR

Causality-Aware End-to-End Autonomous Driving via Ego-Centric Joint Scene Modeling

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2605.13646

Seokha Moon, Minseung Lee, Joon Seo, Jinkyu Kim, Jungbeom Lee

cs.ROcs.AI

TLDR

CaAD is a causality-aware end-to-end autonomous driving framework that models ego-vehicle and agent interactions for reliable trajectory prediction.

Key contributions

  • Addresses causal oversight in end-to-end autonomous driving for better interaction reasoning.
  • Introduces an ego-centric joint-causal modeling module for inter-agent dependency learning.
  • Employs a causality-aware policy alignment stage with joint-mode embeddings for robust planning.
  • Achieves strong closed-loop planning performance on Bench2Drive and NAVSIM benchmarks.

Why it matters

Existing end-to-end driving systems struggle with complex interactions due to ignoring causal links between vehicles. CaAD provides a novel solution by explicitly modeling these dependencies, leading to safer and more reliable autonomous driving in challenging scenarios. This improves prediction consistency and overall system robustness.

Original Abstract

End-to-end autonomous driving, which bypasses traditional modular pipelines by directly predicting future trajectories from sensor inputs, has recently achieved substantial progress. However, existing methods often overlook the causal inter-dependencies in ego-vehicle planning, ignoring the reciprocal relations between the ego vehicle and surrounding agents. This causal oversight leads to inconsistent and unreliable trajectory predictions, especially in interaction-critical scenarios where ego decisions and neighboring agent behaviors must be reasoned about jointly. To address this limitation, we propose CaAD, a Causality-aware end-to-end Autonomous Driving framework that captures these dependencies within a shared latent scene representation. First, we propose a ego-centric joint-causal modeling module that builds on the marginal prediction branch, and learns causal dependencies between the ego vehicle and interaction-relevant agents. Second, we employ a causality-aware policy alignment stage implemented with joint-mode embeddings to align the stochastic ego policy with planning-oriented closed-loop feedback computed from surrounding traffic and map context. On the Bench2Drive and NAVSIM benchmarks, CaAD demonstrates strong closed-loop planning performance, achieving a Driving Score of 87.53 and Success Rate of 71.81 on Bench2Drive, and a PDMS of 91.1 on NAVSIM.

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