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Weak Target Detection based on Deep Neural Network under Sea Clutter Background

机译:基于深神经网络在海杂波背景下的弱目标检测

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To upgrade the performance of the traditional radar target detecting method based on one certain threshold, this paper applies the deep learning network into target detection field, which regards radar target detection as a binary signal classification question. Since sea clutter exhibits non-stationary characteristics with high sea state condition, fractal properties of sea clutter are considered for target detection. In addition, fractal parameters of autoregressive (AR) spectrum are regarded as the feature inputs for deep learning network. Finally, real radar sea clutter data are applied for training the deep learning neutral network, and several datasets are selected to test the detecting performance of the network. From the binary classification results, the proposed method based on deep learning network performs a better detecting performance than traditional CFAR and fractal methods.
机译:为了基于一个特定阈值升级传统雷达目标检测方法的性能,本文将深度学习网络应用于目标检测字段,这将雷达目标检测视为二进制信号分类问题。由于海杂波具有高海水状态条件的非静止特性,因此考虑了海杂波的分形特性进行靶检测。此外,自回归(AR)频谱的分形参数被视为深度学习网络的特征输入。最后,应用真正的雷达海杂波数据用于训练深度学习中性网络,并选择几个数据集来测试网络的检测性能。从二进制分类结果来看,基于深度学习网络的建议方法比传统的CFAR和分形方法更好地检测性能。

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