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A Deep Convolutional Neural Network Inspired by Auditory Perception for Underwater Acoustic Target Recognition

机译:深度卷积神经网络,受到水下声学目标识别的听觉感知

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摘要

Underwater acoustic target recognition (UATR) using ship-radiated noise faces big challenges due to the complex marine environment. In this paper, inspired by neural mechanisms of auditory perception, a new end-to-end deep neural network named auditory perception inspired Deep Convolutional Neural Network (ADCNN) is proposed for UATR. In the ADCNN model, inspired by the frequency component perception neural mechanism, a bank of multi-scale deep convolution filters are designed to decompose raw time domain signal into signals with different frequency components. Inspired by the plasticity neural mechanism, the parameters of the deep convolution filters are initialized randomly, and the is n learned and optimized for UATR. The n, max-pooling layers and fully connected layers extract features from each decomposed signal. Finally, in fusion layers, features from each decomposed signal are merged and deep feature representations are extracted to classify underwater acoustic targets. The ADCNN model simulates the deep acoustic information processing structure of the auditory system. Experimental results show that the proposed model can decompose, model and classify ship-radiated noise signals efficiently. It achieves a classification accuracy of 81.96%, which is the highest in the contrast experiments. The experimental results show that auditory perception inspired deep learning method has encouraging potential to improve the classification performance of UATR.
机译:使用水下舰船辐射声目标识别(UATR)噪音面向由于复杂的海洋环境重大挑战。在本文中,通过听觉感知的神经机制的启发,一个新的终端到终端的深命名的听觉神经网络的启发深卷积神经网络(ADCNN)提出了UATR。在ADCNN模型,通过所述频率分量的感知神经机制的启发,多尺度深卷积滤波器组被设计为原始时域信号分解成具有不同频率分量的信号。由可塑性神经机制的启发,深卷积滤波器的参数是随机初始化,并且由n教训和UATR优化。所述n,最大-汇集层和完全连接层提取从每个分解的信号特征。最后,在熔融层,设有从各分解信号被合并和深特征表示被提取到水声目标分类。该ADCNN模型模拟听觉系统的声学深信息处理结构。实验结果表明,该模型能有效地分解,模型和分类舰船辐射噪声信号。它实现了81.96%,这是在对比实验中最高的分类准确度。实验结果表明,听觉灵感深度学习方法鼓励潜力,提高UATR的分类性能。

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