School of Mechanical Engineering, Hangzhou Dianzi University, Hangzhou, China.
Key Laboratory of Underwater Acoustic Environment Institute of Acoustic, Chinese Academy of Science, Beijing, China.
PLoS One. 2022 Dec 1;17(12):e0273898. doi: 10.1371/journal.pone.0273898. eCollection 2022.
Conventional passive tracking methods for underwater acoustic targets in sonar engineering generate time azimuth histogram and use it as a basis for target azimuth and tracking. Passive underwater acoustic targets only have azimuth information on the time azimuth histogram, which is easy to be lost and disturbed by ocean noise. To improve the accuracy of passive tracking, we propose to adopt the processed multi-beam Low Frequency Analysis and Recording (LOFAR) as the dataset for passive tracking. In this paper, an improved LeNet-5 convolutional neural network model (CNN) model is used to identify targets, and a passive tracking method for underwater acoustic targets based on multi-beam LOFAR and deep learning is proposed, combined with Extended Kalman Filter (EKF) to improve the tracking accuracy. The performance of the method under realistic conditions is evaluated through simulation analysis and validation using data obtained from marine experiments.
声纳工程中水下声目标的传统被动跟踪方法生成时间方位直方图,并将其作为目标方位和跟踪的基础。被动水下声目标在时间方位直方图上只有方位信息,容易被海洋噪声丢失和干扰。为了提高被动跟踪的准确性,我们提出采用处理后的多波束低频分析和记录(LOFAR)作为数据集进行被动跟踪。在本文中,使用改进的 LeNet-5 卷积神经网络模型(CNN)模型来识别目标,并提出了一种基于多波束 LOFAR 和深度学习的水下声目标被动跟踪方法,结合扩展卡尔曼滤波器(EKF)来提高跟踪精度。通过使用海洋实验获得的数据进行仿真分析和验证,评估了该方法在实际条件下的性能。