Imperceptible and Robust Backdoor Attack in 3D Point Cloud
Kuofeng Gao, Jiawang Bai, Baoyuan Wu, Mengxi Ya, Shu-Tao Xia

TL;DR
This paper introduces a novel backdoor attack on 3D point cloud models that is both imperceptible and robust against common pre-processing defenses, significantly increasing attack success rates.
Contribution
The authors propose a nonlinear local transformation-based backdoor attack that creates resistant and imperceptible poisoned samples, outperforming existing methods in robustness and stealth.
Findings
Achieves over 80% attack success rate against defenses
Effective on multiple datasets and models
Outperforms previous backdoor attack techniques
Abstract
With the thriving of deep learning in processing point cloud data, recent works show that backdoor attacks pose a severe security threat to 3D vision applications. The attacker injects the backdoor into the 3D model by poisoning a few training samples with trigger, such that the backdoored model performs well on clean samples but behaves maliciously when the trigger pattern appears. Existing attacks often insert some additional points into the point cloud as the trigger, or utilize a linear transformation (e.g., rotation) to construct the poisoned point cloud. However, the effects of these poisoned samples are likely to be weakened or even eliminated by some commonly used pre-processing techniques for 3D point cloud, e.g., outlier removal or rotation augmentation. In this paper, we propose a novel imperceptible and robust backdoor attack (IRBA) to tackle this challenge. We utilize a…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Medical Imaging and Analysis
