论文标题
Pointca:评估3D点云完成模型的鲁棒性针对对抗性示例
PointCA: Evaluating the Robustness of 3D Point Cloud Completion Models Against Adversarial Examples
论文作者
论文摘要
作为3D识别和分割的上游过程,点云完成已成为许多任务(例如导航和场景理解)的重要组成部分。尽管各种点云完成模型已经证明了它们的强大能力,但它们针对对抗性攻击的稳健性,这些攻击已被证明对深层神经网络是致命的恶意性,但仍然未知。此外,由于不同的输出表格和攻击目的,现有的对点云分类器的攻击方法不能应用于完成模型。为了评估完成模型的鲁棒性,我们提出了Pointca,这是针对3D点云完成模型的第一次对抗性攻击。 Pointca可以生成与原始云保持很高相似性的对抗点云,而作为具有完全不同语义信息的另一个对象完成。具体而言,我们最大程度地减少了对抗性示例和设置的目标点之间的表示差异,以共同探索几何空间中的对抗点云和特征空间。此外,为了发起更隐秘的攻击,我们对邻里密度信息进行了创新的攻击来调整扰动约束,从而导致每个点的几何学感知和分配自适应修改。针对不同主要点云完成网络的广泛实验表明,Pointca可能导致77.9%至16.7%的性能降解,结构倒角距离保持在0.01以下。我们得出的结论是,现有的完成模型非常容易受到对抗示例的影响,而当应用于不完整且不平均的点云数据时,点云分类的最新防御措施将部分无效。
Point cloud completion, as the upstream procedure of 3D recognition and segmentation, has become an essential part of many tasks such as navigation and scene understanding. While various point cloud completion models have demonstrated their powerful capabilities, their robustness against adversarial attacks, which have been proven to be fatally malicious towards deep neural networks, remains unknown. In addition, existing attack approaches towards point cloud classifiers cannot be applied to the completion models due to different output forms and attack purposes. In order to evaluate the robustness of the completion models, we propose PointCA, the first adversarial attack against 3D point cloud completion models. PointCA can generate adversarial point clouds that maintain high similarity with the original ones, while being completed as another object with totally different semantic information. Specifically, we minimize the representation discrepancy between the adversarial example and the target point set to jointly explore the adversarial point clouds in the geometry space and the feature space. Furthermore, to launch a stealthier attack, we innovatively employ the neighbourhood density information to tailor the perturbation constraint, leading to geometry-aware and distribution-adaptive modifications for each point. Extensive experiments against different premier point cloud completion networks show that PointCA can cause a performance degradation from 77.9% to 16.7%, with the structure chamfer distance kept below 0.01. We conclude that existing completion models are severely vulnerable to adversarial examples, and state-of-the-art defenses for point cloud classification will be partially invalid when applied to incomplete and uneven point cloud data.