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基于串联式一维神经网络的毫米波雷达动态手势识别方法

靳标 彭宇 邝晓飞 张贞凯

靳标, 彭宇, 邝晓飞, 张贞凯. 基于串联式一维神经网络的毫米波雷达动态手势识别方法[J]. 电子与信息学报, 2021, 43(9): 2743-2750. doi: 10.11999/JEIT200894
引用本文: 靳标, 彭宇, 邝晓飞, 张贞凯. 基于串联式一维神经网络的毫米波雷达动态手势识别方法[J]. 电子与信息学报, 2021, 43(9): 2743-2750. doi: 10.11999/JEIT200894
Biao JIN, Yu PENG, Xiaofei KUANG, Zhenkai ZHANG. Dynamic Gesture Recognition Method Based on Millimeter-wave Radar by One-Dimensional Series Neural Network[J]. Journal of Electronics & Information Technology, 2021, 43(9): 2743-2750. doi: 10.11999/JEIT200894
Citation: Biao JIN, Yu PENG, Xiaofei KUANG, Zhenkai ZHANG. Dynamic Gesture Recognition Method Based on Millimeter-wave Radar by One-Dimensional Series Neural Network[J]. Journal of Electronics & Information Technology, 2021, 43(9): 2743-2750. doi: 10.11999/JEIT200894

基于串联式一维神经网络的毫米波雷达动态手势识别方法

doi: 10.11999/JEIT200894
基金项目: 国家自然科学基金(61701416, 61871203)
详细信息
    作者简介:

    靳标:男,1986年生,博士,副教授,研究方向为雷达目标跟踪与识别、MIMO雷达发射波形设计等

    彭宇:男,1996年生,硕士生,研究方向为雷达目标识别、深度学习

    邝晓飞:男,1996年生,硕士生,研究方向为MIMO雷达资源分配

    张贞凯:男,1982年生,博士,副教授,研究方向为雷达通信一体化、认知雷达

    通讯作者:

    靳标 biaojin@just.edu.cn

  • 中图分类号: TN911.73; TP391.4

Dynamic Gesture Recognition Method Based on Millimeter-wave Radar by One-Dimensional Series Neural Network

Funds: The National Natural Science Foundation of China (61701416, 61871203)
  • 摘要: 现有的基于雷达传感器的手势识别方法,大多先利用雷达回波对手势的距离、多普勒和角度等信息进行参数估计,得到各种数据谱图,然后再利用卷积神经网络对这些谱图进行分类,实现过程较为复杂。该文提出一种基于串联式1维神经网络(1D-ScNN)的毫米波雷达动态手势识别方法。首先基于毫米波雷达获取动态手势的原始回波,然后利用1维卷积和池化操作对手势特征进行提取,并将这些特征信息输入1维Inception v3结构。最后在网络的末端接入长短期记忆(LSTM)网络来聚合1维特征,充分利用动态手势的帧间相关性,提高识别准确率和训练收敛速度。实验结果表明,该方法实现过程简单,收敛速度快,识别准确率可以达到96.0%以上,高于现有基于数据谱图的手势分类方法。
  • 图  1  雷达原始回波解析流程图

    图  2  1D-ScNN结构图

    图  3  1D-Inception结构

    图  4  LSTM算子运算过程

    图  5  动态手势定义

    图  6  滤波器尺寸对测试精度的影响

    图  7  不同学习率的训练精度和训练损失

    图  8  1D-ScNN识别准确率

    图  9  1D-ScNN与1D-ID-CNN模型的混淆矩阵

    表  1  雷达传感器参数

    参数数量
    发射天线数量(个)3
    接收天线数量(个)4
    采集帧数 (帧)32
    帧时间(ms)40
    Chirp数(个)32
    带宽(MHz)1798.92
    采样点数64
    采样率(MHz)10
    下载: 导出CSV

    表  2  1维卷积参数配置

    类型卷积核+步长参数量输出尺寸时间复杂度(FLOPs)
    Input0(8, 262144, 2)
    Conv1D-164*48+86208(8, 32768, 64)2.01×108
    Conv1D-2128*9+873856(8, 4095, 128)3.02×108
    MaxPool1D1*4+40(8, 1024, 128)
    1D-Inception(a)64*4+17248(8, 1024, 192)1.43×104
    MaxPool1D1*4+40(8, 256, 192)
    1D-Inception(b)64*6+110448(8, 256, 256)2.05×104
    MaxPool1D1*4+40(8, 64, 256)
    1D-Inception(c)64*7+113584(8, 64, 320)2.36×104
    MaxPool1D1*4+20(8, 32, 320)
    下载: 导出CSV

    表  3  不同模型比较结果

    输入类型模型数据量参数量单样本采集帧数时间复杂度(FLOPs)平均准确率(%)
    数据谱图TS-FNN[4]4000323.20×101092.06
    RDA-T[7]3600322.11×10995.30
    LRACN[17]75011162771008.74×10894.34
    原始回波1D-ID-CNN2000275381325.03×10893.75
    360094.00
    400093.02
    1D-ScNN(本文方法)2000156693325.03×10896.00
    360095.75
    400096.01
    下载: 导出CSV
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出版历程
  • 收稿日期:  2020-10-19
  • 修回日期:  2021-01-30
  • 网络出版日期:  2021-02-24
  • 刊出日期:  2021-09-16

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