论文标题

了解开发三维对抗性攻击的关键点云特征

Understanding Key Point Cloud Features for Development Three-dimensional Adversarial Attacks

论文作者

Naderi, Hanieh, Dinesh, Chinthaka, Bajic, Ivan V., Kasaei, Shohreh

论文摘要

对抗性攻击对深度神经网络(DNN)对各种输入信号的分析提出了严重的挑战。在三维点云的情况下,已经开发出方法来识别在网络决策中起关键作用的点,这些点对于产生现有的对抗性攻击至关重要。例如,显着图方法是一种识别对抗性下降点的流行方法,其去除将极大地影响网络决策。本文旨在通过探索哪些点云特征对于预测对抗点最重要,以增强对三维对抗攻击的理解。具体而言,定义了14个关键点云特征,例如边缘强度和距离质心的距离,并采用多个线性回归来评估其对抗点的预测能力。基于关键功能选择见解,已经开发了一种新的攻击方法来评估所选功能是否可以成功产生攻击。与依赖于模型特定漏洞的传统攻击方法不同,这种方法着重于点云本身的内在特征。证明这些功能可以预测四个不同的DNN架构,点网络(PointNet),PointNet ++,动态图卷积神经网络(DGCNN)和点卷积网络(PointConv)的对抗点,超过了随机猜测和实现与基于saility Map的攻击相当的结果。这项研究具有重要的工程应用程序,例如在机器人技术和自动驾驶等领域中增强基于三维云的系统的安全性和鲁棒性。

Adversarial attacks pose serious challenges for deep neural network (DNN)-based analysis of various input signals. In the case of three-dimensional point clouds, methods have been developed to identify points that play a key role in network decision, and these become crucial in generating existing adversarial attacks. For example, a saliency map approach is a popular method for identifying adversarial drop points, whose removal would significantly impact the network decision. This paper seeks to enhance the understanding of three-dimensional adversarial attacks by exploring which point cloud features are most important for predicting adversarial points. Specifically, Fourteen key point cloud features such as edge intensity and distance from the centroid are defined, and multiple linear regression is employed to assess their predictive power for adversarial points. Based on critical feature selection insights, a new attack method has been developed to evaluate whether the selected features can generate an attack successfully. Unlike traditional attack methods that rely on model-specific vulnerabilities, this approach focuses on the intrinsic characteristics of the point clouds themselves. It is demonstrated that these features can predict adversarial points across four different DNN architectures, Point Network (PointNet), PointNet++, Dynamic Graph Convolutional Neural Networks (DGCNN), and Point Convolutional Network (PointConv) outperforming random guessing and achieving results comparable to saliency map-based attacks. This study has important engineering applications, such as enhancing the security and robustness of three-dimensional point cloud-based systems in fields like robotics and autonomous driving.

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