College of Automation, Harbin Engineering University, Harbin 150001, China.
College of Business, Anshan Normal University, Anshan 114007, China.
Sensors (Basel). 2021 Feb 18;21(4):1429. doi: 10.3390/s21041429.
Facing the complex marine environment, it is extremely challenging to conduct underwater acoustic target feature extraction and recognition using ship-radiated noise. In this paper, firstly, taking the one-dimensional time-domain raw signal of the ship as the input of the model, a new deep neural network model for underwater target recognition is proposed. Depthwise separable convolution and time-dilated convolution are used for passive underwater acoustic target recognition for the first time. The proposed model realizes automatic feature extraction from the raw data of ship radiated noise and temporal attention in the process of underwater target recognition. Secondly, the measured data are used to evaluate the model, and cluster analysis and visualization analysis are performed based on the features extracted from the model. The results show that the features extracted from the model have good characteristics of intra-class aggregation and inter-class separation. Furthermore, the cross-folding model is used to verify that there is no overfitting in the model, which improves the generalization ability of the model. Finally, the model is compared with traditional underwater acoustic target recognition, and its accuracy is significantly improved by 6.8%.
面对复杂的海洋环境,利用舰船辐射噪声进行水下声目标特征提取与识别极具挑战性。本文首先以舰船一维时域原始信号作为模型的输入,提出了一种新的用于水下目标识别的深度神经网络模型。首次将深度可分离卷积和时间扩展卷积应用于被动水下声目标识别。所提出的模型通过舰船辐射噪声的原始数据和水下目标识别过程中的时间注意力实现了自动特征提取。其次,利用测量数据对模型进行评估,并基于模型提取的特征进行聚类分析和可视化分析。结果表明,模型提取的特征具有良好的类内聚集和类间分离特性。此外,通过交叉折叠模型验证模型不存在过拟合,提高了模型的泛化能力。最后,将模型与传统水下声目标识别进行比较,其识别准确率提高了 6.8%。