Statistical Analysis of Wireless Traffic: An Adversarial Approach to Drone Surveillance

In the latest years, the popularity of commercial drones has grown rapidly due to their cheaper costs and great availability on the market. The great diffusion of remotely piloted devices unfortunately leads to several security and safety concerns that need to be tackled. In this paper, we consider a fingerprint-based drone detection approach relying on the analysis of WiFi traffic features to identify the presence of unauthorized devices. In particular, we study the statistical distribution of the features composing the fingerprint vector, and we propose an adversarial approach to drone detection in order to invalidate the reliability of the surveillance system, by introducing fake ad-hoc traffic features. Results show that our novel approach is able to deceive the drone detection system through the introduction of flows belonging to arbitrary traffic classes. Also, the proposed adversarial method provides the expected significant impact on the performance of the system, actually reducing the recognition accuracy to about 50%.

[1]  Sofie Pollin,et al.  Key Technologies and System Trade-offs for Detection and Localization of Amateur Drones , 2017, IEEE Communications Magazine.

[2]  Igor Bisio,et al.  Improving WiFi Statistical Fingerprint-Based Detection Techniques Against UAV Stealth Attacks , 2018, 2018 IEEE Global Communications Conference (GLOBECOM).

[3]  Tarik Taleb,et al.  Low-Altitude Unmanned Aerial Vehicles-Based Internet of Things Services: Comprehensive Survey and Future Perspectives , 2016, IEEE Internet of Things Journal.

[4]  Joel J. P. C. Rodrigues,et al.  TCALAS: Temporal Credential-Based Anonymous Lightweight Authentication Scheme for Internet of Drones Environment , 2019, IEEE Transactions on Vehicular Technology.

[5]  Igor Bisio,et al.  Unauthorized Amateur UAV Detection Based on WiFi Statistical Fingerprint Analysis , 2018, IEEE Communications Magazine.

[6]  Qihui Wu,et al.  An Amateur Drone Surveillance System Based on the Cognitive Internet of Things , 2017, IEEE Communications Magazine.

[7]  Igor Bisio,et al.  Blind Detection: Advanced Techniques for WiFi-Based Drone Surveillance , 2019, IEEE Transactions on Vehicular Technology.

[8]  Athanasios V. Vasilakos,et al.  Design and Analysis of Secure Lightweight Remote User Authentication and Key Agreement Scheme in Internet of Drones Deployment , 2019, IEEE Internet of Things Journal.

[9]  Jiming Chen,et al.  Anti-Drone System with Multiple Surveillance Technologies: Architecture, Implementation, and Challenges , 2018, IEEE Communications Magazine.

[10]  Ismail Güvenç,et al.  Detection, Tracking, and Interdiction for Amateur Drones , 2018, IEEE Communications Magazine.