Publication | Closed Access
Cognitive Chaotic UWB-MIMO Detect-Avoid Radar for Autonomous UAV Navigation
26
Citations
35
References
2016
Year
RadarEngineeringUav NavigationAutomatic Target RecognitionAerospace EngineeringTracking SystemUnmanned SystemDetection AlgorithmSystems EngineeringMoving Object TrackingAutonomous Uav NavigationComputer ScienceIntelligent SystemsRadar Signal ProcessingRadar ApplicationSignal ProcessingTarget Identification
A cognitive detect and avoid radar system based on chaotic UWB-MIMO waveform design to enable autonomous UAV navigation is presented. A Dirichlet-process-mixture-model (DPMM)-based Bayesian clustering approach to discriminate extended targets and a change-point (CP) detection algorithm are applied for the autonomous tracking and identification of potential collision threats. A DPMM-based clustering mechanism does not rely upon any a priori target scene assumptions and facilitates online multivariate data clustering/classification for an arbitrary number of targets. Furthermore, this radar system utilizes a cognitive mechanism to select efficient chaotic waveforms to facilitate enhanced target detection and discrimination. We formulate the CP mechanism for the online tracking of target trajectories, which present a collision threat to the UAV navigation; thus, we supplement the conventional Kalman-filter-based tracking. Simulation results demonstrate a significant performance improvement for the DPMM-CP-assisted detection as compared with direct generalized likelihood-ratio-based detection. Specifically, we observe a 4-dB performance gain in target detection over conventional fixed UWB waveforms and superior collision avoidance capability offered by the joint DPMM-CP mechanism.
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