CRApr 23

Adversarial Robustness of Near-Field Millimeter-Wave Imaging under Waveform-Domain Attacks

arXiv:2604.2177429.5
AI Analysis

It exposes critical security risks in safety-critical mmWave imaging systems (e.g., airport screening) for practitioners and researchers.

This paper studies adversarial robustness of near-field millimeter-wave imaging under waveform-domain attacks, finding that mmWave imaging is highly vulnerable to such attacks, with deep-learning-based algorithms showing higher robustness than classical ones.

Near-field millimeter-wave (mmWave) imaging is widely deployed in safety-critical applications such as airport passenger screening, yet its own security remains largely unexplored. This paper presents a systematic study of the adversarial robustness of mmWave imaging algorithms under waveform-domain physical attacks that directly manipulate the image reconstruction process. We propose a practical white-box adversarial model and develop a differential imaging attack framework that leverages the differentiable imaging pipeline to optimize attack waveforms. We also construct a real measured dataset of clean and attack waveforms using a mmWave imaging testbed. Experiments on 10 representative imaging algorithms show that mmWave imaging is highly vulnerable to such attacks, enabling an adversary to conceal or alter targets with moderate transmission power. Surprisingly, deep-learning-based imaging algorithms demonstrate higher robustness than classical algorithms. These findings expose critical security risks and motivate the development of robust and secure mmWave imaging systems.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes