Improved detection of close proximity targets using two-step NHD

B. Himed, Y. Salama, J. Michels
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引用次数: 23

Abstract

In airborne radar adaptive signal processing, the covariance matrix is usually estimated using secondary (training) data cells taken from adjacent range cells located symmetrically around the test cell. In non-homogeneous clutter, many of these data cells may lack the IID property, resulting in estimation performance loss. Nonhomogeneity detectors have been introduced in order to achieve more representative data selection. The generalized inner product (GIP) has been shown to work well with measured data. In this paper, we introduce a variation of the GIP to filter out the non-representative data. Moreover, the proposed approach makes use of equalized data based on the GIP. Results using the MCARM database show improved performance.
改进了两步NHD对近距离目标的探测
在机载雷达自适应信号处理中,协方差矩阵的估计通常使用从对称分布在测试单元周围的相邻距离单元中获取的辅助(训练)数据单元。在非均匀杂波中,许多这些数据单元可能缺乏IID属性,从而导致估计性能损失。为了实现更具代表性的数据选择,引入了非均匀性检测器。广义内积(GIP)已被证明能很好地处理实测数据。在本文中,我们引入了GIP的一种变体来过滤掉非代表性数据。此外,该方法还利用了基于GIP的均衡数据。使用MCARM数据库的结果显示性能有所提高。
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