DarkSAM: Fooling Segment Anything Model to Segment Nothing Ziqi Zhou 1,2,3, Y ufei Song
–Neural Information Processing Systems
Segment Anything Model (SAM) has recently gained much attention for its outstanding generalization to unseen data and tasks. Despite its promising prospect, the vulnerabilities of SAM, especially to universal adversarial perturbation (UAP) have not been thoroughly investigated yet. In this paper, we propose Dark-SAM, the first prompt-free universal attack framework against SAM, including a semantic decoupling-based spatial attack and a texture distortion-based frequency attack. We first divide the output of SAM into foreground and background. Then, we design a shadow target strategy to obtain the semantic blueprint of the image as the attack target.
Neural Information Processing Systems
Feb-14-2026, 02:26:52 GMT
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