CVROMar 11

DynVLA: Learning World Dynamics for Action Reasoning in Autonomous Driving

arXiv:2603.11041v164.34 citationsh-index: 20
Predicted impact top 1% in CV · last 90 daysOriginality Highly original
AI Analysis

This addresses the challenge of physically grounded decision-making in interaction-intensive driving scenarios, representing an incremental advancement in driving VLA models.

The paper tackles the problem of action reasoning in autonomous driving by proposing DynVLA, which forecasts compact world dynamics before generating actions, resulting in improved decision quality and efficient inference, as demonstrated by outperforming existing methods on multiple datasets.

We propose DynVLA, a driving VLA model that introduces a new CoT paradigm termed Dynamics CoT. DynVLA forecasts compact world dynamics before action generation, enabling more informed and physically grounded decision-making. To obtain compact dynamics representations, DynVLA introduces a Dynamics Tokenizer that compresses future evolution into a small set of dynamics tokens. Considering the rich environment dynamics in interaction-intensive driving scenarios, DynVLA decouples ego-centric and environment-centric dynamics, yielding more accurate world dynamics modeling. We then train DynVLA to generate dynamics tokens before actions through SFT and RFT, improving decision quality while maintaining latency-efficient inference. Compared to Textual CoT, which lacks fine-grained spatiotemporal understanding, and Visual CoT, which introduces substantial redundancy due to dense image prediction, Dynamics CoT captures the evolution of the world in a compact, interpretable, and efficient form. Extensive experiments on NAVSIM, Bench2Drive, and a large-scale in-house dataset demonstrate that DynVLA consistently outperforms Textual CoT and Visual CoT methods, validating the effectiveness and practical value of Dynamics CoT.

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