Abstract
In space-time adaptive processing (STAP), the clutter covariance matrix is routinely estimated from secondary "target-free"data. Because this type of data is, more often than not, rather scarce, the so-obtained estimates of the clutter covariance matrix are typically rather poor. In knowledge-aided (KA) STAP, an a priori guess of the clutter covariance matrix (e.g., derived from knowledge of the terrain probed by the radar) is available. In this note, we describe a computationally simple and fully automatic method for combining this prior guess with secondary data to obtain a theoretically optimal (in the mean-squared error sense) estimate of the clutter covariance matrix. The authors apply the proposed method to the KASSPER data set to illustrate the type of achievable performance. © 2008 IEEE.
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CITATION STYLE
Stoica, P., Li, J., Zhu, X., & Guerci, J. R. (2008). On using a priori knowledge in space-time adaptive processing. IEEE Transactions on Signal Processing, 56(6), 2598–2602. https://doi.org/10.1109/TSP.2007.914347
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