Shen Sheng, Yang Honghui, Sheng Meiping
School of Marine Science and Technology, Northwestern Polytechnical University, Xi'an 710072, China.
Entropy (Basel). 2018 Apr 2;20(4):243. doi: 10.3390/e20040243.
The accuracy of underwater acoustic targets recognition via limited ship radiated noise can be improved by a deep neural network trained with a large number of unlabeled samples. However, redundant features learned by deep neural network have negative effects on recognition accuracy and efficiency. A compressed deep competitive network is proposed to learn and extract features from ship radiated noise. The core idea of the algorithm includes: (1) Competitive learning: By integrating competitive learning into the restricted Boltzmann machine learning algorithm, the hidden units could share the weights in each predefined group; (2) Network pruning: The pruning based on mutual information is deployed to remove the redundant parameters and further compress the network. Experiments based on real ship radiated noise show that the network can increase recognition accuracy with fewer informative features. The compressed deep competitive network can achieve a classification accuracy of 89.1 % , which is 5.3 % higher than deep competitive network and 13.1 % higher than the state-of-the-art signal processing feature extraction methods.
通过使用大量未标记样本训练的深度神经网络,可以提高基于有限船舶辐射噪声的水下声学目标识别的准确性。然而,深度神经网络学习到的冗余特征对识别准确性和效率有负面影响。提出了一种压缩深度竞争网络,用于从船舶辐射噪声中学习和提取特征。该算法的核心思想包括:(1)竞争学习:通过将竞争学习集成到受限玻尔兹曼机学习算法中,隐藏单元可以在每个预定义组中共享权重;(2)网络剪枝:采用基于互信息的剪枝方法去除冗余参数,进一步压缩网络。基于真实船舶辐射噪声的实验表明,该网络可以用更少的信息特征提高识别准确性。压缩深度竞争网络可以达到89.1%的分类准确率,比深度竞争网络高5.3%,比当前最先进的信号处理特征提取方法高13.1%。