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Main Authors: Jung, Geunyoung, Kim, Soohong, Kong, Inseok, Jung, Jiyoung
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.15708
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author Jung, Geunyoung
Kim, Soohong
Kong, Inseok
Jung, Jiyoung
author_facet Jung, Geunyoung
Kim, Soohong
Kong, Inseok
Jung, Jiyoung
contents The advent of deep neural networks has led to remarkable progress in 3D point cloud recognition, but they remain vulnerable to adversarial attacks. Although various defense methods have been studied, they suffer from a trade-off between robustness and transferability. We propose Adversarial Point Counterattack (APC) to achieve both simultaneously. APC is a lightweight input-level purification module that generates instance-specific counter-perturbations for each point, effectively neutralizing attacks. Leveraging clean-adversarial pairs, APC enforces geometric consistency in data space and semantic consistency in feature space. To improve generalizability across diverse attacks, we adopt a hybrid training strategy using adversarial point clouds from multiple attack types. Since APC operates purely on input point clouds, it directly transfers to unseen models and defends against attacks targeting them without retraining. At inference, a single APC forward pass provides purified point clouds with negligible time and parameter overhead. Extensive experiments on two 3D recognition benchmarks demonstrate that the APC achieves state-of-the-art defense performance. Furthermore, cross-model evaluations validate its superior transferability. The code is available at https://github.com/gyjung975/APC.
format Preprint
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publishDate 2026
record_format arxiv
spellingShingle APC: Transferable and Efficient Adversarial Point Counterattack for Robust 3D Point Cloud Recognition
Jung, Geunyoung
Kim, Soohong
Kong, Inseok
Jung, Jiyoung
Computer Vision and Pattern Recognition
The advent of deep neural networks has led to remarkable progress in 3D point cloud recognition, but they remain vulnerable to adversarial attacks. Although various defense methods have been studied, they suffer from a trade-off between robustness and transferability. We propose Adversarial Point Counterattack (APC) to achieve both simultaneously. APC is a lightweight input-level purification module that generates instance-specific counter-perturbations for each point, effectively neutralizing attacks. Leveraging clean-adversarial pairs, APC enforces geometric consistency in data space and semantic consistency in feature space. To improve generalizability across diverse attacks, we adopt a hybrid training strategy using adversarial point clouds from multiple attack types. Since APC operates purely on input point clouds, it directly transfers to unseen models and defends against attacks targeting them without retraining. At inference, a single APC forward pass provides purified point clouds with negligible time and parameter overhead. Extensive experiments on two 3D recognition benchmarks demonstrate that the APC achieves state-of-the-art defense performance. Furthermore, cross-model evaluations validate its superior transferability. The code is available at https://github.com/gyjung975/APC.
title APC: Transferable and Efficient Adversarial Point Counterattack for Robust 3D Point Cloud Recognition
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2604.15708