Abstract

Methods of clutter rejection are discussed which furnish an inherent counterpart of target tracking and detection algorithms. We describe how nonparametric curve estimation methods reduce the original sensor data to a "signal-plus-noise" model which is well suited for various hypotheses testing and dynamical filtering algorithms. We also verify a "white noise" assumption for the model of residuals.

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