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Underwater Small Target Recognition Based on Convolutional Neural Network

机译:基于卷积神经网络的水下小目标识别

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With the increasingly extensive use of diver and unmanned underwater vehicle in military, it has posed a serious threat to the security of the national coastal area. In order to prevent the underwater diver's impact on the safety of water area, it is of great significance to identify underwater small targets in time to make early warning for it. In this paper, convolutional neural network is applied to underwater small target recognition. The recognition targets are diver, whale and dolphin. Due to the time-frequency spectrum can reflect the essential features of underwater target, convolutional neural network can learn a variety of features of the acoustic signal through the image processed by the time-frequency spectrum, time-frequency image is input to convolutional neural network to recognize the underwater small targets. According to the study of learning rate and pooling mode, the network parameters and structure suitable for underwater small target recognition in this paper are selected. The results of data processing show that the method can identify underwater small targets accurately.
机译:随着潜水员和无人驾驶水下车辆在军队中日益广泛的利用,它对国家沿海地区的安全构成了严重的威胁。为了防止水下潜水员对水域安全的影响,在及时识别水下小型目标是提高预警的重要意义。本文将卷积神经网络应用于水下小目标识别。识别目标是潜水员,鲸鱼和海豚。由于时频谱可以反映水下目标的基本特征,卷积神经网络可以通过时频谱处理的图像来学习声学信号的各种特征,时频图像被输入到卷积神经网络识别水下小目标。根据学习率和池模式的研究,选择了本文中适用于水下小目标识别的网络参数和结构。数据处理结果表明,该方法可以准确地识别水下小目标。

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