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首页> 外文期刊>Instrumentation and Measurement, IEEE Transactions on >Coherent Detection of Swerling 0 Targets in Sea-Ice Weibull-Distributed Clutter Using Neural Networks
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Coherent Detection of Swerling 0 Targets in Sea-Ice Weibull-Distributed Clutter Using Neural Networks

机译:利用神经网络相干检测海冰威布尔分布杂波中的零个目标

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摘要

The detection of Swerling 0 targets in movement in sea-ice Weibull-distributed clutter by neural networks (NNs) is presented in this paper. Synthetic data generated for typical sea-ice Weibull parameters reported in the literature are used. Due to the capability of NNs for learning the statistical properties of the clutter and target signals during a supervised training, high clutter reduction rates are achieved, reverting on high detection performances. The proposed NN-based detector is compared with a reference detector proposed in the literature that approximates the Neyman–Pearson (NP) detector. The results presented in the paper allow empirically demonstrating how the NN-based detector outperforms the detector taken as reference in all the cases under study. It is achieved not only in performance but also in robustness with respect to changes in sea-ice Weibull-distributed clutter conditions. Moreover, the computational cost of the NN-based detector is very low, involving high signal processing speed.
机译:本文提出了利用神经网络(NNs)检测海冰威布尔分布杂波中Swerling 0目标的运动。使用为文献中报道的典型海冰威布尔参数生成的合成数据。由于神经网络具有在有监督的训练过程中学习杂波和目标信号统计特性的能力,因此可以实现高杂波抑制率,并具有较高的检测性能。所提出的基于NN的检测器与文献中提出的近似Neyman-Pearson(NP)检测器的参考检测器进行了比较。本文中提出的结果可以凭经验证明在所有正在研究的案例中,基于NN的检测器如何优于作为参考的检测器。相对于海冰威布尔分布杂波条件的变化,它不仅在性能上,而且在鲁棒性上都可以实现。而且,基于NN的检测器的计算成本非常低,涉及高信号处理速度。

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