attack arXiv Dec 15, 2025 · Dec 2025
Keke Tang, Tianyu Hao, Xiaofei Wang et al. · Guangzhou University · University of Science and Technology of China +2 more
Sparse adversarial attack on 3D point cloud classifiers using Hessian-guided cooperative subset perturbation for 100% attack success
Input Manipulation Attack vision
Most adversarial attacks on point clouds perturb a large number of points, causing widespread geometric changes and limiting applicability in real-world scenarios. While recent works explore sparse attacks by modifying only a few points, such approaches often struggle to maintain effectiveness due to the limited influence of individual perturbations. In this paper, we propose SCP, a sparse and cooperative perturbation framework that selects and leverages a compact subset of points whose joint perturbations produce amplified adversarial effects. Specifically, SCP identifies the subset where the misclassification loss is locally convex with respect to their joint perturbations, determined by checking the positivedefiniteness of the corresponding Hessian block. The selected subset is then optimized to generate high-impact adversarial examples with minimal modifications. Extensive experiments show that SCP achieves 100% attack success rates, surpassing state-of-the-art sparse attacks, and delivers superior imperceptibility to dense attacks with far fewer modifications.
cnn transformer Guangzhou University · University of Science and Technology of China · Northwestern Polytechnical University +1 more