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Target detection in sea clutter using convolutional neural networks

机译:卷积神经网络在海杂波中的目标检测

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A detector based on convolutional neural networks is proposed for radar detection of floating targets in highly complex and nonstationary cluttered environments. This detector is coherent and monocell, i.e. it works with the complex envelope of the echoes from the same range cell. It includes a pre-processing time-frequency block implemented by the Wigner-Ville distribution, which provides a constant false alarm rate (CFAR) behavior regarding the clutter power when normalization is utilized. Simple theoretical models for the clutter and targets were allowed to study the impact of the correlation and Doppler of both target and clutter on its performance. This detector has also been tested with real-life sea clutter with an improved performance compared to classic detectors.
机译:提出了一种基于卷积神经网络的探测器,用于雷达在高度复杂和不稳定的杂波环境中对漂浮目标的探测。该检测器是相干且单细胞的,即它可以处理来自同一测距单元的回波的复杂包络。它包括一个由Wigner-Ville分布实现的预处理时频块,当使用归一化时,该块提供了有关杂波功率的恒定虚警率(CFAR)行为。允许使用简单的理论模型对杂波和目标进行研究,以研究目标和杂波的相关性和多普勒对其性能的影响。与经典探测器相比,该探测器还经过了现实生活中的海杂波测试,性能得到了改善。

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