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Deep Learning Methods for Underwater Target Feature Extraction and Recognition

机译:水下目标特征提取与识别的深度学习方法

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The classification and recognition technology of underwater acoustic signal were always an important research content in the field of underwater acoustic signal processing. Currently, wavelet transform, Hilbert-Huang transform, and Mel frequency cepstral coefficients are used as a method of underwater acoustic signal feature extraction. In this paper, a method for feature extraction and identification of underwater noise data based on CNN and ELM is proposed. An automatic feature extraction method of underwater acoustic signals is proposed using depth convolution network. An underwater target recognition classifier is based on extreme learning machine. Although convolution neural networks can execute both feature extraction and classification, their function mainly relies on a full connection layer, which is trained by gradient descent-based; the generalization ability is limited and suboptimal, so an extreme learning machine (ELM) was used in classification stage. Firstly, CNN learns deep and robust features, followed by the removing of the fully connected layers. Then ELM fed with the CNN features is used as the classifier to conduct an excellent classification. Experiments on the actual data set of civil ships obtained 93.04% recognition rate; compared to the traditional Mel frequency cepstral coefficients and Hilbert-Huang feature, recognition rate greatly improved.
机译:水下声信号的分类和识别技术一直是水下声信号处理领域的重要研究内容。当前,小波变换,希尔伯特-黄变换和梅尔频率倒谱系数被用作水下声信号特征提取的方法。提出了一种基于CNN和ELM的水下噪声数据特征提取与识别方法。提出了一种利用深度卷积网络的水下声信号特征自动提取方法。水下目标识别分类器基于极限学习机。尽管卷积神经网络可以执行特征提取和分类,但是它们的功能主要依赖于完整的连接层,该层由基于梯度下降的训练。由于泛化能力有限且次优,因此在分类阶段使用了极限学习机(ELM)。首先,CNN学习了深刻而强大的功能,然后删除了完全连接的层。然后,将具有CNN功能的ELM用作分类器,以进行出色的分类。对民用船舶实际数据集进行的实验获得了93.04%的识别率;与传统的梅尔频率倒谱系数和希尔伯特·黄特征相比,识别率大大提高。

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