TY - JOUR
T1 - Adversarial Attacks Against AI-Powered Object Detection in Low-Altitude Defense
AU - Li, Yang
AU - Wang, Zhengjie
AU - Huang, Nanhai
N1 - Publisher Copyright:
© 2026, Beijing Institute of Technology. All Rights Reserved.
PY - 2026
Y1 - 2026
N2 - Deep learning-based object detection technology serves as the perceptual core of low-altitude security systems, directly impacting the reliability of critical applications such as drone inspection and aerial logistics. To evaluate the robustness of low-altitude visual systems under adversarial conditions, with the widely deployed YOLOv8 detector as research subject, a joint adversarial attack method was proposed. By co-optimizing multi-task losses, including target localization and classification, the method generated adversarial patches capable of inducing false negatives and false positives in the detector. Experiments conducted on a dataset containing various aircraft targets (MAR20) demonstrated that the proposed method achieved an average attack success rate of 78.86 against YOLOv8 series models, significantly outperforming random noise attacks. Cross-model transfer experiments further revealed that the adversarial patches maintained an average attack success rate exceeding 65 across different variants of YOLOv8, indicating strong generalization capability. These results systematically expose the adversarial vulnerabilities inherent in YOLOv8's joint optimization mechanism. From an attacker's perspective, this study empirically revealed the severe vulnerabilities present in low-altitude security visual systems under joint adversarial optimization, providing an important reference for building robustness evaluation frameworks, designing active defense strategies, and ensuring the secure deployment of critical low-altitude infrastructure.
AB - Deep learning-based object detection technology serves as the perceptual core of low-altitude security systems, directly impacting the reliability of critical applications such as drone inspection and aerial logistics. To evaluate the robustness of low-altitude visual systems under adversarial conditions, with the widely deployed YOLOv8 detector as research subject, a joint adversarial attack method was proposed. By co-optimizing multi-task losses, including target localization and classification, the method generated adversarial patches capable of inducing false negatives and false positives in the detector. Experiments conducted on a dataset containing various aircraft targets (MAR20) demonstrated that the proposed method achieved an average attack success rate of 78.86 against YOLOv8 series models, significantly outperforming random noise attacks. Cross-model transfer experiments further revealed that the adversarial patches maintained an average attack success rate exceeding 65 across different variants of YOLOv8, indicating strong generalization capability. These results systematically expose the adversarial vulnerabilities inherent in YOLOv8's joint optimization mechanism. From an attacker's perspective, this study empirically revealed the severe vulnerabilities present in low-altitude security visual systems under joint adversarial optimization, providing an important reference for building robustness evaluation frameworks, designing active defense strategies, and ensuring the secure deployment of critical low-altitude infrastructure.
KW - adversarial attack
KW - adversarial patch
KW - attack transferability
KW - low-altitude security
KW - object detection
UR - https://www.scopus.com/pages/publications/105038720707
U2 - 10.15918/j.tbit1001-0645.2025.172
DO - 10.15918/j.tbit1001-0645.2025.172
M3 - Article
AN - SCOPUS:105038720707
SN - 1001-0645
VL - 46
SP - 489
EP - 496
JO - Beijing Ligong Daxue Xuebao/Transaction of Beijing Institute of Technology
JF - Beijing Ligong Daxue Xuebao/Transaction of Beijing Institute of Technology
IS - 5
ER -