Adversarial Attack by Limited Point Cloud Surface Modifications

Atrin Arya, Hanieh Naderi, S. Kasaei
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引用次数: 4

Abstract

Recent research has revealed that the security of deep neural networks that directly process 3D point clouds to classify objects can be threatened by adversarial samples. Al-though existing adversarial attack methods achieve high success rates, they do not restrict the point modifications enough to preserve the point cloud appearance. To overcome this shortcoming, two constraints are proposed. These include applying hard boundary constraints on the number of modified points and on the point perturbation norms. Due to the restrictive nature of the problem, the search space contains many local maxima. The proposed method addresses this issue by using a high step-size at the beginning of the algorithm to search the main surface of the point cloud fast and effectively. Then, in order to converge to the desired output, the step-size is gradually decreased. To evaluate the performance of the proposed method, it is run on the ModelNet40 and ScanObjectNN datasets by employing the state-of-the-art point cloud classification models; including PointNet, PointNet++, and DGCNN. The obtained results show that it can perform successful attacks and achieve state-of-the-art results by only a limited number of point modifications while preserving the appearance of the point cloud. Moreover, due to the effective search algorithm, it can perform successful attacks in just a few steps. Additionally, the proposed step-size scheduling algorithm shows an improvement of up to 14.5% when adopted by other methods as well. The proposed method also performs effectively against popular defense methods.
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有限点云表面修改的对抗性攻击
最近的研究表明,直接处理三维点云对物体进行分类的深度神经网络的安全性可能会受到对抗性样本的威胁。尽管现有的对抗性攻击方法取得了很高的成功率,但它们并没有限制点的修改以保持点云的外观。为了克服这一缺点,提出了两个约束条件。这包括对修改点的数目和对点扰动范数施加硬边界约束。由于问题的限制性,搜索空间包含许多局部极大值。该方法通过在算法开始时使用高步长来快速有效地搜索点云的主表面,从而解决了这一问题。然后,为了收敛到期望的输出,逐步减小步长。为了评估所提出方法的性能,采用最先进的点云分类模型,在ModelNet40和ScanObjectNN数据集上运行该方法;包括PointNet、pointnet++和DGCNN。实验结果表明,该算法在保留点云外观的前提下,只需少量的点修改,即可成功实施攻击,达到最先进的攻击效果。此外,由于有效的搜索算法,它可以在几个步骤内完成成功的攻击。此外,所提出的步长调度算法在与其他方法相结合时,效率提高了14.5%。该方法也能有效地对抗常用的防御方法。
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