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计算机工程

• 移动互联与通信技术 • 上一篇    下一篇

基于深度自编码网络的慢速移动目标检测

刘凯 1,林基明 1,2,郑霖1,杨超 1   

  1. (1.桂林电子科技大学 广西无线宽带通信与信号处理重点实验室,广西 桂林 541004;2.梧州学院,广西 梧州 543002)
  • 收稿日期:2017-01-26 出版日期:2018-02-15 发布日期:2018-02-15
  • 作者简介:刘凯(1991—),男,硕士研究生,主研方向为信号处理;林基明,教授、博士、博士生导师;郑霖,教授、博士;杨超,博士研究生。
  • 基金资助:
    国家自然科学基金(61362006,61571143);广西无线宽带通信与信号处理重点实验室基金(GXKL061501);广西自然科学基金(2014GXNSFBA118288,2014GXNSFAA118387)。

Slow Moving Target Detection Based on Deep Self-coding Network

LIU Kai  1,LIN Jiming  1,2,ZHENG Lin  1,YANG Chao  1   

  1. (1.Guangxi Key Laboratory of Wireless Wideband Communication and Signal Processing,Guilin University of Electronic Technology,Guilin,Guangxi 541004,China;2.Wuzhou University,Wuzhou,Guangxi 543002,China)
  • Received:2017-01-26 Online:2018-02-15 Published:2018-02-15

摘要: 强杂波背景下的慢速目标检测存在低多普勒频移、杂波干扰严重、鲁棒性不足、特征提取困难与信息利用不充分等问题。为此,提出一种基于深度自编码网络的宽带信号目标检测方法。利用时频变换解析回波信息,通过深度自编码网络算法,在时频域提取针对目标的深度抽象信息进行目标检测,以准确感知环境变化。仿真结果表明,与支持向量机、超限学习机和后向传播神经网络等传统机器学习相比,该方法可以有效感知环境变化,具有较高的鲁棒性和检测性能。

关键词: 目标检测, 深度学习, 自编码神经网络, 特征提取, 机器学习

Abstract: The slow target detection in the background of strong clutter has such problems as low Doppler frequency shift,clutter interference,lack of robustness,feature extraction difficulties and inadequate information utilization.Therefore,a target detection method of wideband signal based on deep self-coding network is proposed.The echo information is analyzed by using time-frequency transform,and the deep self-coding network algorithm is used to extract the target deep abstract information in the time-frequency domain for target detection to accurately sense the environmental change.Simulation results show that compared with traditional machine learning such as Support Vector Machine(SVM),Extreme Learning Machine(ELM) and Back Propagation Neural Network(BPNN),the proposed method can effectively detect environmental changes and has high robustness and detection performance.

Key words: target detection, deep learning, self-coding neural network, feature extraction, machine learning

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