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时频谱图和数据增强的水声信号深度学习目标识别方法
引用本文:刘峰,罗再磊,沈同圣,赵德鑫. 时频谱图和数据增强的水声信号深度学习目标识别方法[J]. 应用声学, 2021, 40(4): 518-524
作者姓名:刘峰  罗再磊  沈同圣  赵德鑫
作者单位:军事科学院 国防科技创新研究院 北京,军事科学院 国防科技创新研究院 北京,军事科学院 国防科技创新研究院 北京,军事科学院 国防科技创新研究院 北京
摘    要:水声目标识别一直是水声领域研究的重点问题之一,深度学习方法可以有效地解决目标识别问题,然而,水声样本的稀少限制了该方法的应用.该文提出一种基于数据增强的水声信号深度学习目标识别方法,该方法以Mel功率谱作为网络的输入特征,通过对原始信号在时域和时频域的拉伸和掩蔽等变换,实现数据扩展和增加泛化性能的目的,最后,利用改进的...

关 键 词:水声目标识别  卷积神经网络  数据增强  Mel功率谱
收稿时间:2020-09-27
修稿时间:2021-07-07

Deep learning target recognition method of underwater acoustic signal based on data augmentation and time-frequency spectrum
Liu Feng,LUO Zailei,SHEN Tongsheng and ZHAO Dexin. Deep learning target recognition method of underwater acoustic signal based on data augmentation and time-frequency spectrum[J]. Applied Acoustics(China), 2021, 40(4): 518-524
Authors:Liu Feng  LUO Zailei  SHEN Tongsheng  ZHAO Dexin
Affiliation:National lnnovation lnstitute of Defense Technology,Academy of Military Sciences,National lnnovation lnstitute of Defense Technology,Academy of Military Sciences,National lnnovation lnstitute of Defense Technology,Academy of Military Sciences,National lnnovation lnstitute of Defense Technology,Academy of Military Sciences
Abstract:Underwater acoustic target recognition has always been one of the key issues in the field of underwater acoustic research. Deep learning methods can effectively solve the problem of target recognition. However, the scarcity of underwater acoustic samples limits the application of this method. This paper proposes a deep learning target recognition method for underwater acoustic signals based on data enhancement. This method uses Mel power spectrum as the input feature of the network, and in order to increase the generalization performance of the method, data augmentation is achieved by realizes the data by stretching and masking the original signal in the time domain and time-frequency domain. The purpose of extending and increasing generalization performance, and Ffinally, using an improved VGG network model to achieve target classification. The experimental results show that the underwater target recognition accuracy (95.2%) obtained by this method is better than the other four comparison methods, which demonstrates that the network model and data enhancement method proposed in this paper can help to improve the target classification performance.
Keywords:Underwater  acoustic target  recognition, convolutional  neural network, data  augmentation, Mel  spectrogram
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