English

SpoofTrackBench: Interpretable AI for Spoof-Aware UAV Tracking and Benchmarking

Cryptography and Security 2025-12-01 v2

Abstract

SpoofTrackBench is a reproducible, modular benchmark for evaluating adversarial robustness in real-time localization and tracking (RTLS) systems under radar spoofing. Leveraging the Hampton University Skyler Radar Sensor dataset, we simulate drift, ghost, and mirror-type spoofing attacks and evaluate tracker performance using both Joint Probabilistic Data Association (JPDA) and Global Nearest Neighbor (GNN) architectures. Our framework separates clean and spoofed detection streams, visualizes spoof-induced trajectory divergence, and quantifies assignment errors via direct drift-from-truth metrics. Clustering overlays, injection-aware timelines, and scenario-adaptive visualizations enable interpretability across spoof types and configurations. Evaluation figures and logs are auto-exported for reproducible comparison. SpoofTrackBench sets a new standard for open, ethical benchmarking of spoof-aware tracking pipelines, enabling rigorous cross-architecture analysis and community validation.

Keywords

Cite

@article{arxiv.2510.22726,
  title  = {SpoofTrackBench: Interpretable AI for Spoof-Aware UAV Tracking and Benchmarking},
  author = {Van Le and Tan Le},
  journal= {arXiv preprint arXiv:2510.22726},
  year   = {2025}
}
R2 v1 2026-07-01T07:06:36.606Z