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Rethinking Transferable Adversarial Attacks on Point Clouds from a Compact Subspace Perspective

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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.

Keke Tang, Xianheng Liu, Weilong Peng, Xiaofei Wang, Daizong Liu, Peican Zhu, Can Lu, Zhihong Tian• 2026

Related benchmarks

TaskDatasetResultRank
Point Cloud ClassificationModelNet40 v1 (test)
ASR100
76
Adversarial AttackModelNet40
ASR95.2
40
Point Cloud ClassificationScanObjectNN v1 (test)
ASR100
40
3D Point Cloud Adversarial AttackScanObjectNN
ASR99.3
6
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