In-the-Wild Camouflage Attack on Vehicle Detectors through Controllable Image Editing
arXiv cs.CV / 3/23/2026
📰 NewsIdeas & Deep AnalysisModels & Research
Key Points
- The paper presents camouflage attacks on vehicle detectors by casting it as a conditional image-editing problem, exploring both image-level and scene-level camouflage generation strategies.
- It fine-tunes a ControlNet to synthesize camouflaged vehicles directly on real images, aiming to preserve vehicle structure while altering appearance.
- A unified objective jointly enforces vehicle structural fidelity, style consistency, and adversarial effectiveness.
- Experiments on COCO and LINZ show the method reduces AP50 by more than 38% and improves human-perceived stealthiness compared with prior approaches.
- The framework generalizes to unseen black-box detectors and demonstrates transferability to the physical world; a project page is available.
Related Articles
Regulating Prompt Markets: Securities Law, Intellectual Property, and the Trading of Prompt Assets
Dev.to
Mercor competitor Deccan AI raises $25M, sources experts from India
Dev.to
How We Got Local MCP Servers Working in Claude Cowork (The Missing Guide)
Dev.to
How Should Students Document AI Usage in Academic Work?
Dev.to
They Did Not Accidentally Make Work the Answer to Who You Are
Dev.to