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One-dimension hierarchical local receptive fields based extreme learning machine for radar target HRRP recognition

机译:基于雷达目标HRRP识别的基于极端学习机的一维分层本地接收领域

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摘要

Radar automatic target recognition (RATR) aims at extracting meaningful target features from the electromagnetic echo signal and utilizing the features to automatically recognize the target types. The high-resolution range profile (HRRP) plays an important role in RATR field, HRRP is the amplitude of the echo summation for target scattering centers in each range cell of wideband radar. Using deep neural networks for HRRP radar target recognition encounters the problem of storage overhead and slow convergence rate, to resolve those issues, we propose a one-dimension local receptive fields based extreme learning auto-encoder (1D ELM-LRF-AE) network for HRRP local structures and meaningful representations learning. ELM-LRF-AE consists of an input layer, a random convolution layer, a pooling layer, several local connected layers and an output layer, it reconstructs the input with a greedy strategy that the input feature vectors are divided into several subgroups and the i-th pooling feature vector is used to reconstruct the i-th grouping input feature vector. Then we use the learned pooling feature vectors to replace the random pooling feature vectors as the learned representations. We also stack several 1D ELM-LRF-AEs to build 1D hierarchical local receptive fields based extreme learning machine (1D H-ELM-LRF) for high level HRRP abstract representations learning and recognition. Experimental results on simulated HRRP data set demonstrate the superior high recognition performance and high computational efficiency of our algorithm. (C) 2020 Elsevier B.V. All rights reserved.
机译:雷达自动目标识别(RATR)旨在从电磁回波信号中提取有意义的目标特征,并利用该功能自动识别目标类型。高分辨率范围谱(HRRP)在RATR字段中起重要作用,HRRP是宽带雷达各范围电池中的目标散射中心的回声求和的幅度。利用深度神经网络进行HRRP雷达目标识别遇到存储开销和慢趋同率的问题,以解决这些问题,我们提出了一种基于一个基于极端学习自动编码器(1D ELM-LRF-AE)网络的一维本通接场HRRP本地结构和有意义的陈述学习。 ELM-LRF-AE由输入层,随机卷积层,池化层,几个局部连接层和输出层组成,它重建了具有贪婪策略的输入,即输入特征向量被分成几个子组和I - 池池特征向量用于重建第i个分组输入特征向量。然后我们使用学习的池功能向量将随机池特征向量替换为学习的表示。我们还堆叠了几个1D ELM-LRF-AES以构建基于极端学习机(1D H-ELM-LRF)的1D分层本地接收领域,用于高级HRRP摘要表示学习和识别。模拟HRRP数据集的实验结果证明了我们算法的优越高识别性能和高计算效率。 (c)2020 Elsevier B.v.保留所有权利。

著录项

  • 来源
    《Neurocomputing》 |2020年第22期|314-325|共12页
  • 作者单位

    Air Force Engn Univ Coll Air & Missile Def Xian 710051 Peoples R China;

    Air Force Engn Univ Coll Air & Missile Def Xian 710051 Peoples R China;

    Air Force Engn Univ Coll Air & Missile Def Xian 710051 Peoples R China;

    Air Force Engn Univ Coll Informat & Nav Xian 710051 Peoples R China;

    Air Force Engn Univ Coll Air & Missile Def Xian 710051 Peoples R China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Local receptive fields based extreme; learning machine; Auto-encoder; HRRP recognition; Deep learning;

    机译:基于局部接受领域的极端;学习机;自动编码器;HRRP识别;深入学习;

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