Unmanned Aerial Vehicles (UAVs) present a difficult localization problem for traditional radar systems due to their small radar cross section and relatively slow speeds. To help address this problem, the U.S. Army Research Laboratory (ARL) is developing and testing acoustic-based detection and tracking algorithms for UAVs. The focus has been on detection, bearing and elevation angle estimation using either minimum mean square error or adaptive beamforming methods. A model-based method has been implemented which includes multipath returns, and a Kalman filter has been implemented for tracking. The acoustic data were acquired using ARL's tetrahedral microphone array against several UAV's. While the detection and tracking algorithms perform reasonably well, several challenges remain. For example, interference from other sources resulted in lower signal to interference ratio (SIR), which can significantly degrade performance. The presence of multipath nearly always results in greater variance in elevation angle estimates than in bearing angle estimates.
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