UAV-SEAD: State Estimation Anomaly Dataset for UAVs
Aykut Kabaoglu, Sanem Sariel

TL;DR
This paper introduces a large-scale, real-world UAV dataset with diverse sensor data and anomaly annotations to advance research in UAV state estimation anomaly detection and improve system reliability.
Contribution
It provides the first extensive real-world UAV dataset with labeled anomalies across multiple sensor types, facilitating realistic anomaly detection research.
Findings
Dataset includes 1396 flight logs over 52 hours in varied environments.
Anomaly classification covers mechanical, external, global, and altitude issues.
Dataset enables training and evaluation of anomaly detection systems.
Abstract
Accurate state estimation in Unmanned Aerial Vehicles (UAVs) is crucial for ensuring reliable and safe operation, as anomalies occurring during mission execution may induce discrepancies between expected and observed system behaviors, thereby compromising mission success or posing potential safety hazards. It is essential to continuously monitor and detect such conditions in order to ensure a timely response and maintain system reliability. In this work, we focus on UAV state estimation anomalies and provide a large-scale real-world UAV dataset to facilitate research aimed at improving the development of anomaly detection. Unlike existing datasets that primarily rely on injected faults into simulated data, this dataset comprises 1396 real flight logs totaling over 52 hours of flight time, collected across diverse indoor and outdoor environments using a collection of PX4-based UAVs…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Air Traffic Management and Optimization · UAV Applications and Optimization
