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Radar Automatic Target Recognition Based on Real-Life HRRP of Ship Target by Using Convolutional Neural Network

机译:利用卷积神经网络,基于船舶目标现实生活HRRP的雷达自动目标识别

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摘要

High-resolution range profile (HRRP) is one of the most important approaches for radar automatic target recognition (RATR), which can project the target echoes from the scattering center of a ship target onto the radar line of sight (RLOS). This paper proposes an approach to use convolutional neural networks (CNNs) to recognize HRRP ship targets and a two-dimensional HRRP data format as the input of the CNN network. Compared with traditional pattern recognition approaches of handcrafted features based on researchers' prior knowledge and experience, the target recognition approach with deep neural network helps to avoid excessive use of artificially designed rules to extract features, and deep learning can automatically get the deep description features of the target. The approach presented in this paper has three main advantages: (1) Experiments conducted on the ship's HRRP dataset collected from the actual coastline are more realistic than most other papers using simulated datasets; (2) Proposed two-dimensional binary-map HRRP data format has good recognition performance, so it can be known that proper data preprocessing can improve recognition accuracy; (3) It can be seen from the experimental results that the CNN-based method proves that CNN can automatically learn the discriminative deep features of HRRP. It is feasible to use CNN to radar automatic target recognition based on real-life radar HRRP of ship targets.
机译:高分辨率范围曲线(HRRP)是雷达自动目标识别(RATR)最重要的方法之一,它可以将目标回波从船舶目标的散射中心投射到雷达视察(RLO)上。本文提出了一种方法来使用卷积神经网络(CNNS)来识别HRRP船舶目标和二维HRRP数据格式作为CNN网络的输入。与传统模式识别方法相比,通过研究人员的先验知识和经验,具有深度神经网络的目标识别方法有助于避免过度利用人工设计的规则来提取特征,深度学习可以自动获得深度描述特征目标。本文提出的方法具有三个主要优点:(1)从实际海岸线收集的船舶HRRP数据集上进行的实验比使用模拟数据集的大多数其他论文更加真实; (2)提出的二维二进制映射HRRP数据格式具有良好的识别性能,因此可以知道,适当的数据预处理可以提高识别准确性; (3)从实验结果可以看出,基于CNN的方法证明CNN可以自动学习HRRP的鉴别性深度特征。使用CNN基于船舶目标的现实雷达HRRP使用CNN来雷达自动目标识别是可行的。

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