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arxiv: 2506.00280 · v1 · pith:RN3T47EG · submitted 2025-05-30 · cs.CR · cs.CV· cs.LG

3D Gaussian Splat Vulnerabilities

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classification cs.CR cs.CVcs.LG
keywords gaussianadversarialapplicationsattacksafety-criticalvulnerabilitiesaccessadversary
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With 3D Gaussian Splatting (3DGS) being increasingly used in safety-critical applications, how can an adversary manipulate the scene to cause harm? We introduce CLOAK, the first attack that leverages view-dependent Gaussian appearances - colors and textures that change with viewing angle - to embed adversarial content visible only from specific viewpoints. We further demonstrate DAGGER, a targeted adversarial attack directly perturbing 3D Gaussians without access to underlying training data, deceiving multi-stage object detectors e.g., Faster R-CNN, through established methods such as projected gradient descent. These attacks highlight underexplored vulnerabilities in 3DGS, introducing a new potential threat to robotic learning for autonomous navigation and other safety-critical 3DGS applications.

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