Journal of Infrared and Millimeter Waves, Volume. 40, Issue 2, 198(2021)
Sample selection based on direct estimation of cell under test clutter characteristics
This paper proposes a training sample selection algorithm for radar based on direct estimation of the CUT clutter characteristics. The proposed method directly uses the sub-aperture covariance matrix of CUT to characterize the clutter. Since the estimation process doesn't depend on training samples, the estimation of CUT is not affected by the outliers. Moreover, considering the existence of target signal in the CUT, the proposed method removes the target component from the sub-aperture covariance matrix of CUT based on clutter covariance matrix reconstruction, which utilizes the clutter Capon spectrum integrated over a sector separated from the location of target. Compared with the traditional generalized inner product algorithm which uses single snapshot to calculate the detection parameters, the new algorithm uses the sub-aperture covariance matrix of the samples to characterize its statistical characteristics, obtaining more stable results. The simulation results show that the proposed algorithm selects training samples more accurately.
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Qin QIN, Zi-Mei TU, Ming LI. Sample selection based on direct estimation of cell under test clutter characteristics[J]. Journal of Infrared and Millimeter Waves, 2021, 40(2): 198
Category: Research Articles
Received: Sep. 27, 2020
Accepted: --
Published Online: Aug. 31, 2021
The Author Email: Zi-Mei TU (zmtu@sspu.edu.cn)