2019 IEEE. Detection of underwater mines is important for ensuring the safety of maritime routes. This paper presents a new approach for mine-like object sensing in sonar imagery. We propose a deep learning architecture that combines a convolution neural network and a hierarchical Gaussian process classifier. The proposed architecture is designed to improve the classification accuracy of the conventional convolutional neural network and to provide a well-calibrated measure of classification uncertainty. It can be trained in an end-to-end manner with labeled examples, or sonar snapshots, of underwater objects. To address the data scarcity in this application, we apply the generative adversarial network to produce extra sonar snapshots for tr...
Underwater mines are a cost-effective method in asymmetric warfare, and are commonly used to block s...
Underwater Vehicles have become more sophisticated, driven by the off-shore sector and the scientifi...
Underwater target classification methods based on deep learning suffer from obvious model overfittin...
This paper proposes a method that synthesizes realistic sonar images using a Generative Adversarial ...
With the advances in sonar imaging technology, sonar imagery has increasingly been used for oceanogr...
CRUSER TechCon 2018 Research at NPS. Wednesday 1: SensingThreats of sea mines are increasing due to ...
Deep learning, also known as deep machine learning or deep structured learning based techniques, hav...
This paper proposes a method to detect underwater objects using sonar image simulator and convolutio...
This paper presents a comprehensive overview of current deep-learning methods for automatic object c...
Forward Looking Sonars (FLS) are a typical choiceof sonar for autonomous underwater vehicles. They a...
This paper proposes a method to detect underwater objects using sonar image simulator and convolutio...
In this PhD thesis, the problem of underwater mine detection and classification using synthetic ape...
Due to the rising demand for minerals and metals, various deep-sea mining systems have been develope...
Recent advancements in deep learning offer an effective approach for the study in machine vision usi...
Underwater object detection in sonar images requires a large number of images of target objects. For...
Underwater mines are a cost-effective method in asymmetric warfare, and are commonly used to block s...
Underwater Vehicles have become more sophisticated, driven by the off-shore sector and the scientifi...
Underwater target classification methods based on deep learning suffer from obvious model overfittin...
This paper proposes a method that synthesizes realistic sonar images using a Generative Adversarial ...
With the advances in sonar imaging technology, sonar imagery has increasingly been used for oceanogr...
CRUSER TechCon 2018 Research at NPS. Wednesday 1: SensingThreats of sea mines are increasing due to ...
Deep learning, also known as deep machine learning or deep structured learning based techniques, hav...
This paper proposes a method to detect underwater objects using sonar image simulator and convolutio...
This paper presents a comprehensive overview of current deep-learning methods for automatic object c...
Forward Looking Sonars (FLS) are a typical choiceof sonar for autonomous underwater vehicles. They a...
This paper proposes a method to detect underwater objects using sonar image simulator and convolutio...
In this PhD thesis, the problem of underwater mine detection and classification using synthetic ape...
Due to the rising demand for minerals and metals, various deep-sea mining systems have been develope...
Recent advancements in deep learning offer an effective approach for the study in machine vision usi...
Underwater object detection in sonar images requires a large number of images of target objects. For...
Underwater mines are a cost-effective method in asymmetric warfare, and are commonly used to block s...
Underwater Vehicles have become more sophisticated, driven by the off-shore sector and the scientifi...
Underwater target classification methods based on deep learning suffer from obvious model overfittin...