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Using Trajectory Smoothness Metrics to Identify Drones in Radar Track Data

Authors :
Sandip Roy
David Petrizze
Logan Dihel
Mengran Xue
Chester Dolph
Henry Holbrook
Publication Year :
2022
Publisher :
United States: NASA Center for Aerospace Information (CASI), 2022.

Abstract

The identification of unmanned aircraft systems (UAS) using trajectory data is considered. Specifically, a number of smoothness metrics are proposed, which can be used to distinguish UAS from other aerial objects even when they are engaged in accelerative maneuvers (non-constant-velocity flight). The metrics are evaluated on a data set from a UAS sense-and-avoid field test, which contains track data of aerial objects recorded by a vehicle-board radar system during a flight test. The metrics are found to effectively differentiate UAS from other objects such as birds for this data set. In addition, an initial statistical performance analysis of one of the smoothness metrics is undertaken, using 15 data sets deriving from multiple flight tests. The smoothness metric is shown to identify the target UAS with 95% accuracy (95% true positive rate), while achieving a false positive rate of less than 9%.

Details

Language :
English
Database :
NASA Technical Reports
Notes :
109492.02.07.07.07.06, , NNX13AJ46A
Publication Type :
Report
Accession number :
edsnas.20220006977
Document Type :
Report