个人信息Personal Information
教授
博士生导师
硕士生导师
主要任职:人力资源处处长(党委教师工作部部长、党委人才办公室主任)【兼党委组织部副部长】
性别:男
毕业院校:上海交通大学
学位:博士
所在单位:生物医学工程学院
学科:生物医学工程. 信号与信息处理. 模式识别与智能系统
电子邮箱:cong@dlut.edu.cn
改进的卷积神经网络实现端到端的水下目标自动识别
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论文类型:期刊论文
发表时间:2022-07-01
发表刊物:Journal of Signal Processing
卷号:36
期号:6
页面范围:958-965
ISSN号:1003-0530
关键字:"underwater acoustic target recognition; convolutional neural network; higher-order statistics"
CN号:11-2406/TN
摘要:Traditional feature-based underwater target recognition methods perform poorly due to the high complexity of underwater acoustic signals. Advanced recognition methods based on the deep learning model can effectively reduce the information loss caused by the feature extraction,thereby improving the classification performance. In this paper,we proposed a convolutional neural network ( CNN) model suitable for the underwater targets recognition scenario,which introduced a one-dimension Convolution layer with the kernel of 1 in the convolution module to preserve the local characteristics of underwater acoustic signals and reduce the complexity of the model; meanwhile,replaced the fully connected layer with a global average pooling ( GAP) layer which outputted the interpretable results based on the feature vector corresponding to feature map and reduced the training parameters to prevent overfitting. The results showed that the modified CNN model achieved a classification accuracy of 91.7%,compared with the classification method based on conventional CNN which obtained 69.8% and features of higher-order statistics ( HOS) which obtained 85%. It is concluded that the proposed method can better preserve the time-domain structure of underwater acoustic signals,furthermore improving the classification performance.
备注:新增回溯数据