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基于双对数谱和卷积网络的船舶辐射噪声分类

徐源超 蔡志明 孔晓鹏

徐源超, 蔡志明, 孔晓鹏. 基于双对数谱和卷积网络的船舶辐射噪声分类[J]. 电子与信息学报, 2022, 44(6): 1947-1955. doi: 10.11999/JEIT211407
引用本文: 徐源超, 蔡志明, 孔晓鹏. 基于双对数谱和卷积网络的船舶辐射噪声分类[J]. 电子与信息学报, 2022, 44(6): 1947-1955. doi: 10.11999/JEIT211407
XU Yuanchao, CAI Zhiming, KONG Xiaopeng. Classification of Ship Radiated Noise Based on Bi-Logarithmic Scale Spectrum and Convolutional Network[J]. Journal of Electronics & Information Technology, 2022, 44(6): 1947-1955. doi: 10.11999/JEIT211407
Citation: XU Yuanchao, CAI Zhiming, KONG Xiaopeng. Classification of Ship Radiated Noise Based on Bi-Logarithmic Scale Spectrum and Convolutional Network[J]. Journal of Electronics & Information Technology, 2022, 44(6): 1947-1955. doi: 10.11999/JEIT211407

基于双对数谱和卷积网络的船舶辐射噪声分类

doi: 10.11999/JEIT211407
详细信息
    作者简介:

    徐源超:男,1994年生,博士生,研究方向为水声目标识别

    蔡志明:男,1962年生,教授,研究方向为水声信号与信息处理

    孔晓鹏:男,1987年生,讲师,研究方向为水声目标识别与非线性声学

    通讯作者:

    徐源超 xycwshr@126.com

  • 中图分类号: TN911.7; TP181

Classification of Ship Radiated Noise Based on Bi-Logarithmic Scale Spectrum and Convolutional Network

  • 摘要: 卷积层平移等变性与线性谱不适配,卷积网络对高维特征的长距离依赖建模能力不足。该文提出一种双对数谱特征用于船舶辐射噪声分类。双对数谱通过重新排列对数谱频点,保证高频端分辨率的同时,规避使用太深的卷积网络。利用双对数谱各行表征同一目标的先验知识,构建卷积网络和目标函数。DeepShip数据集上的试验结果表明,特征维数相同情况下,提出的算法分类正确率比以线性谱为输入的卷积网络提高2.4%以上。
  • 图  1  工况变化时,同源特征在线性和对数频率下的表现

    图  2  线性频率坐标下同源特征激活神经元不同

    图  3  双对数谱处理流程

    图  4  集成卷积网络(ACNN)结构

    图  5  卷积网络第1层的最大输出

    图  6  惩罚系数对损失函数的影响

    表  1  DeepShip 数据集样本统计

    类别记录数样本数
    货轮1099580
    客轮19111544
    油轮24011048
    拖船6910112
    合计60942284
    下载: 导出CSV

    表  2  ACNN 的网络结构参数

    层号参数
    输入$1 \times I \times J$维
    1Conv2d(32, 1×5)
    2Conv2d+MaxPool2d(64, 1×3), 1×2
    3Conv2d+MaxPool2d(64, 1×3), 1×2
    4Conv2d+MaxPool2d(64, 1×3), 1×2
    5Conv2d+MaxPool2d(64, 1×3), 1×2
    6Conv2d+MaxPool2d(128, 1×3), 1×2
    变形为$ 4J \times I $维
    7Conv1d(256, 1)
    8Conv1d(64, 1)
    9Conv1d+AvgPool1d(4, 1), $I$
    下载: 导出CSV

    表  3  对照组 CNN 结构参数

    网络输入维数卷积核数
    CNN1d25632-64-64-64-64-128
    102416-32-64-64-64-64-128
    20488-16-32-64-64-64-64-128
    CNN2d4×25632-64-64-64-64-128
    8×256
    全连接层均为1024-256-64-4
    下载: 导出CSV

    表  4  分类正确率

    网络特征维数正确率(%)
    CNN1d线性谱25663.62
    102464.70
    204864.60
    对数谱25665.02
    102466.25
    204865.31
    CNN2d双对数谱4×25666.07
    ACNN66.86
    ACNN+约束67.11
    CNN2d8×25666.35
    ACNN67.32
    ACNN+约束67.47
    下载: 导出CSV
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出版历程
  • 收稿日期:  2021-12-01
  • 修回日期:  2022-03-31
  • 录用日期:  2022-04-02
  • 网络出版日期:  2022-04-12
  • 刊出日期:  2022-06-21

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