Composing Driving Worlds through Disentangled Control for Adversarial Scenario Generation
arXiv cs.CV / 3/16/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
Key Points
- CompoSIA is a compositional driving video simulator that disentangles scene structure, object identity, and ego actions to enable fine-grained adversarial driving scenario generation.
- It introduces noise-level identity injection to support pose-agnostic identity generation from a single reference image, enabling identity replacement across diverse poses.
- A hierarchical dual-branch action control mechanism is proposed to improve controllability of ego actions during scenario synthesis.
- The work reports quantitative gains over baselines (17% improvement in FVD for identity editing; 30% and 47% reductions in rotation and translation errors) and reveals substantial planner failures in stress tests (average collision rate increases by 173%).
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