With the popularity of 3D sensors in self-driving and other robotics applications, extensive research has focused on designing novel neural network architectures for accurate 3D point cloud completion. However, unlike in point cloud classification and reconstruction, the role of adversarial samples in3D point cloud completion has seldom been explored. In this work, we show that training with adversarial samples can improve the performance of neural networks on 3D point cloud completion tasks. We propose a novel approach to generate adversarial samples that benefit both the performance of clean and adversarial samples. In contrast to the PGD-k attack, our method generates adversarial samples that keep the geometric features in clean samples and contain few outliers. In particular, we use principal directions to constrain the adversarial perturbations for each input point. The gradient components in the mean direction of principal directions are taken as adversarial perturbations. In addition, we also investigate the effect of using the minimum curvature direction. Besides, we adopt attack strength accumulation and auxiliary Batch Normalization layers method to speed up the training process and alleviate the distribution mismatch between clean and adversarial samples. Experimental results show that training with the adversarial samples crafted by our method effectively enhances the performance of PCN on the ShapeNet dataset.
翻译:由于3D传感器在自我驱动和其他机器人应用中的流行性能,广泛的研究侧重于设计新的神经网络结构,以便准确完成3D点云。然而,与云层分类和重建不同,对3D点云完成率的对抗性样本的作用很少探讨。在这项工作中,我们表明,对3D点云完成任务进行对立性样的培训可以改进神经网络的性能。我们提出了一种新颖的方法来生成对立性样,既有利于清洁和对抗性样品的性能。与PGD-k攻击不同,我们的方法生成了将几何特征保存在清洁样品中的对抗性样,并包含很少的外星。特别是,我们使用主要方向限制对每个输入点的对抗性扰动作用。主要方向的梯度部分被作为3D点云完成任务的对抗性扰动。此外,我们还研究了使用最小曲线方向的效果。此外,我们采用了攻击强度积累和辅助性批量正常化层方法,以加快培训过程,并减轻清洁和敌对性能样品之间的分布错错差。我们使用实验性结果显示,我们用模型的性能加强了我们的反向性能。