Exploring Semantic-constrained Adversarial Example with Instruction Uncertainty Reduction
Jin Hu, Jiakai Wang, Linna Jing, Haolin Li, Haodong Liu, Haotong Qin, Aishan Liu, Ke Xu, Xianglong Liu

TL;DR
This paper introduces InSUR, a multi-dimensional framework that reduces instruction uncertainty to generate more effective and transferable semantic-constrained adversarial examples, including the first reference-free 3D SemanticAE generation.
Contribution
The paper proposes a novel multi-dimensional instruction uncertainty reduction framework for generating superior SemanticAEs, addressing key issues like referential diversity and incomplete instructions.
Findings
InSUR achieves superior transfer attack performance.
First reference-free generation of 3D SemanticAEs.
Enhanced evaluation boundary clarifies generator effectiveness.
Abstract
Recently, semantically constrained adversarial examples (SemanticAE), which are directly generated from natural language instructions, have become a promising avenue for future research due to their flexible attacking forms. To generate SemanticAEs, current methods fall short of satisfactory attacking ability as the key underlying factors of semantic uncertainty in human instructions, such as referring diversity, descriptive incompleteness, and boundary ambiguity, have not been fully investigated. To tackle the issues, this paper develops a multi-dimensional instruction uncertainty reduction (InSUR) framework to generate more satisfactory SemanticAE, i.e., transferable, adaptive, and effective. Specifically, in the dimension of the sampling method, we propose the residual-driven attacking direction stabilization to alleviate the unstable adversarial optimization caused by the diversity…
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