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NNAKF: A Neural Network Adapted Kalman Filter for Target Tracking

Sami Jouaber, Silvère Bonnabel, Santiago Velasco-Forero, Marion Pilté

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Abstract

An adaptive three-dimensional Kalman filter for the tracking of maneuvering targets in three dimensions is proposed. In the radar industry, numerous trackers are based on a constant velocity model, with a process noise covariance matrix Q which is adapted in real time to enhance tracking: it is kept at moderate values during straight lines where the constant velocity assumption applies and is increased during maneuvers. In the present paper we advocate a novel method to increase Q during maneuvers (and hence the Kalman gains) based on a recurrent neural network (RNN). The difficulty and the interest of our approach lies in the fact the neural network is trained together with the filter, by backpropagation through the filter, and hence learns the covariance matrix such as to directly maximize the accuracy of the final output.

Topics & Concepts

Kalman filterCovariance matrixComputer scienceTracking (education)Radar trackerExtended Kalman filterArtificial neural networkBackpropagationArtificial intelligenceControl theory (sociology)Filter (signal processing)Noise (video)CovarianceConstant (computer programming)Fast Kalman filterCovariance intersectionRadarComputer visionAlgorithmMathematicsStatisticsTelecommunicationsProgramming languageControl (management)PedagogyImage (mathematics)PsychologyTarget Tracking and Data Fusion in Sensor NetworksInertial Sensor and NavigationNeural Networks and Applications
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