College of Information Science and Engineering, Ocean University of China, Qingdao 266100, China.
School of Physics and Electronic Engineering, Taishan University, No. 525 Dongyue Street, Tai'an 271021, China.
Sensors (Basel). 2021 Nov 24;21(23):7799. doi: 10.3390/s21237799.
In signal analysis and processing, underwater target recognition (UTR) is one of the most important technologies. Simply and quickly identify target types using conventional methods in underwater acoustic conditions is quite a challenging task. The problem can be conveniently handled by a deep learning network (DLN), which yields better classification results than conventional methods. In this paper, a novel deep learning method with a hybrid routing network is considered, which can abstract the features of time-domain signals. The used network comprises multiple routing structures and several options for the auxiliary branch, which promotes impressive effects as a result of exchanging the learned features of different branches. The experiment shows that the used network possesses more advantages in the underwater signal classification task.
在信号分析和处理中,水下目标识别(UTR)是最重要的技术之一。在水下声环境中,使用传统方法简单快速地识别目标类型是一项极具挑战性的任务。这个问题可以通过深度学习网络(DLN)方便地解决,其分类结果优于传统方法。本文考虑了一种具有混合路由网络的新型深度学习方法,该方法可以对时域信号的特征进行抽象。所使用的网络由多个路由结构和辅助分支的多个选项组成,通过交换不同分支学习到的特征,从而产生了显著的效果。实验表明,该网络在水下信号分类任务中具有更多优势。