AI RESEARCH
SFIBA: Spatial-based Full-target Invisible Backdoor Attacks
arXiv CS.AI
•
ArXi:2504.21052v2 Announce Type: replace-cross Multi-target backdoor attacks pose significant security threats to deep neural networks, as they can preset multiple target classes through a single backdoor injection. This allows attackers to control the model to misclassify poisoned samples with triggers into any desired target class during inference, exhibiting superior attack performance compared with conventional backdoor attacks. However, existing multi-target backdoor attacks fail to guarantee trigger specificity and stealthiness in black-box settings, resulting in two main issues.