Javascript must be enabled to continue!
A classification method of underwater target radiated noise signals based on enhanced images and convolutional neural networks
View through CrossRef
As the economy and society continue to develop, the range of underwater vehicles is expanding and technology is constantly being upgraded. Consequently, it is becoming increasingly difficult to classify and identify them, and the traditional classification method based on signal characteristics can no longer meet the urgent need for the accurate identification of underwater targets. This paper therefore proposes multiple convolutional neural network recognition methods based on enhanced Gramian Angular Field (GAF) images. Firstly, the radiated noise signals of underwater targets are converted into enhanced images using the GAF method. Then, the converted image dataset is used as input for the convolutional neural network. The input dataset is modified accordingly for each convolutional neural network. Finally, the significant advantages of convolutional neural networks in image processing are leveraged to achieve precise classification of underwater target radiated noise. In order to propose a convolutional neural network method that matches the enhanced image method, this paper compares the calculation results of multiple convolutional neural network models. The experimental results show that the VGG-16 model achieves greater classification accuracy and efficiency, reaching 80.67%.
Title: A classification method of underwater target radiated noise signals based on enhanced images and convolutional neural networks
Description:
As the economy and society continue to develop, the range of underwater vehicles is expanding and technology is constantly being upgraded.
Consequently, it is becoming increasingly difficult to classify and identify them, and the traditional classification method based on signal characteristics can no longer meet the urgent need for the accurate identification of underwater targets.
This paper therefore proposes multiple convolutional neural network recognition methods based on enhanced Gramian Angular Field (GAF) images.
Firstly, the radiated noise signals of underwater targets are converted into enhanced images using the GAF method.
Then, the converted image dataset is used as input for the convolutional neural network.
The input dataset is modified accordingly for each convolutional neural network.
Finally, the significant advantages of convolutional neural networks in image processing are leveraged to achieve precise classification of underwater target radiated noise.
In order to propose a convolutional neural network method that matches the enhanced image method, this paper compares the calculation results of multiple convolutional neural network models.
The experimental results show that the VGG-16 model achieves greater classification accuracy and efficiency, reaching 80.
67%.
Related Results
Comparison of radiated noise classification methods for underwater targets based on different enhanced images and convolutional neural networks
Comparison of radiated noise classification methods for underwater targets based on different enhanced images and convolutional neural networks
With the continuous development of economy and society, factors such as the variety of underwater targets and the high level of environmental noise have a great impact on the class...
A Rapid Prediction Method for Underwater Vehicle Radiated Noise Based on Feature Selection and Parallel Residual Neural Network
A Rapid Prediction Method for Underwater Vehicle Radiated Noise Based on Feature Selection and Parallel Residual Neural Network
Efficient and high-precision prediction of underwater vehicle radiated noise is crucial for warship stealth assessment. To overcome the high modeling complexity and limited predict...
Edge Enhanced CrackNet for Underwater Crack Detection of Concrete Dams
Edge Enhanced CrackNet for Underwater Crack Detection of Concrete Dams
Underwater crack detection in dam structures is of significant engineering importance and scientific value for ensuring the structural safety, assessing operational conditions, and...
Emerging underwater survey technologies: A review and future outlook
Emerging underwater survey technologies: A review and future outlook
Emerging underwater survey technologies are revolutionizing the way we explore and understand the underwater world. This review examines the latest advancements in underwater surve...
Optimizing Underwater Vision: A Rigorous Investigation into CNN's Deep Image Enhancement for Subaquatic Scenes
Optimizing Underwater Vision: A Rigorous Investigation into CNN's Deep Image Enhancement for Subaquatic Scenes
In this paper, Convolutional Neural Networks were used to enhance the visual fidelity of underwater images. The UWCNN is introduced in this article, which utilizes underwater scene...
Exploring target imaging in underwater bubble group environment based on polarization information
Exploring target imaging in underwater bubble group environment based on polarization information
Underwater optical imaging is an important way to implement the seabed exploration and target recognition. There occur a lot of bubbles due to the sea wave, ship wake, marine creat...
Present status and challenges of underwater acoustic target recognition technology: A review
Present status and challenges of underwater acoustic target recognition technology: A review
Future naval warfare has placed high demands on underwater targets’ target detection, target recognition, and opposition resistance, among other things. However, the ocean’s comple...
Research Progress of Noise in High-Speed Cutting Machining
Research Progress of Noise in High-Speed Cutting Machining
High-speed cutting technology has become a development trend in the material processing industry. However, high-intensity noise generated during high-speed cutting exerts a potenti...

