• Journal of Internet Computing and Services
    ISSN 2287 - 1136 (Online) / ISSN 1598 - 0170 (Print)
    https://jics.or.kr/

A Research on Adversarial Example-based Passive Air Defense Method against Object Detectable AI Drone


Simun Yuk, Hweerang Park, Taisuk Suh, Youngho Cho, Journal of Internet Computing and Services, Vol. 24, No. 6, pp. 119-125, Dec. 2023
10.7472/jksii.2023.24.6.119, Full Text:
Keywords: object detectable drone, AI drone, Adversarial machine learning, swarm drone, air defense, base defense

Abstract

Through the Ukraine-Russia war, the military importance of drones is being reassessed, and North Korea has completed actual verification through a drone provocation towards South Korea at 2022. Furthermore, North Korea is actively integrating artificial intelligence (AI) technology into drones, highlighting the increasing threat posed by drones. In response, the Republic of Korea military has established Drone Operations Command(DOC) and implemented various drone defense systems. However, there is a concern that the efforts to enhance capabilities are disproportionately focused on striking systems, making it challenging to effectively counter swarm drone attacks. Particularly, Air Force bases located adjacent to urban areas face significant limitations in the use of traditional air defense weapons due to concerns about civilian casualties. Therefore, this study proposes a new passive air defense method that aims at disrupting the object detection capabilities of AI models to enhance the survivability of friendly aircraft against the threat posed by AI based swarm drones. Using laser-based adversarial examples, the study seeks to degrade the recognition accuracy of object recognition AI installed on enemy drones. Experimental results using synthetic images and precision-reduced models confirmed that the proposed method decreased the recognition accuracy of object recognition AI, which was initially approximately 95%, to around 0-15% after the application of the proposed method, thereby validating the effectiveness of the proposed method.


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Cite this article
[APA Style]
Yuk, S., Park, H., Suh, T., & Cho, Y. (2023). A Research on Adversarial Example-based Passive Air Defense Method against Object Detectable AI Drone. Journal of Internet Computing and Services, 24(6), 119-125. DOI: 10.7472/jksii.2023.24.6.119.

[IEEE Style]
S. Yuk, H. Park, T. Suh, Y. Cho, "A Research on Adversarial Example-based Passive Air Defense Method against Object Detectable AI Drone," Journal of Internet Computing and Services, vol. 24, no. 6, pp. 119-125, 2023. DOI: 10.7472/jksii.2023.24.6.119.

[ACM Style]
Simun Yuk, Hweerang Park, Taisuk Suh, and Youngho Cho. 2023. A Research on Adversarial Example-based Passive Air Defense Method against Object Detectable AI Drone. Journal of Internet Computing and Services, 24, 6, (2023), 119-125. DOI: 10.7472/jksii.2023.24.6.119.