attack arXiv Jan 30, 2026 · 9w ago
Keke Tang, Xianheng Liu, Weilong Peng et al. · Guangzhou University · University of Science and Technology of China +2 more
Transfers adversarial perturbations across 3D point cloud architectures via low-rank semantic subspace optimization
Input Manipulation Attack vision
Transferable adversarial attacks on point clouds remain challenging, as existing methods often rely on model-specific gradients or heuristics that limit generalization to unseen architectures. In this paper, we rethink adversarial transferability from a compact subspace perspective and propose CoSA, a transferable attack framework that operates within a shared low-dimensional semantic space. Specifically, each point cloud is represented as a compact combination of class-specific prototypes that capture shared semantic structure, while adversarial perturbations are optimized within a low-rank subspace to induce coherent and architecture-agnostic variations. This design suppresses model-dependent noise and constrains perturbations to semantically meaningful directions, thereby improving cross-model transferability without relying on surrogate-specific artifacts. Extensive experiments on multiple datasets and network architectures demonstrate that CoSA consistently outperforms state-of-the-art transferable attacks, while maintaining competitive imperceptibility and robustness under common defense strategies. Codes will be made public upon paper acceptance.
cnn transformer gnn Guangzhou University · University of Science and Technology of China · Wuhan University +1 more