Object recognition and tracking is a challenge for underwater vehicles. Traditional algorithm requires a clear feature definition, which suffers from uncertainty as the variation of occlusion, illumination, season and viewpoints. A deep learning approach requires a large amount of training data, which suffers from the computation. The proposed method is to avoid the above drawbacks. The Siamese Region Proposal Network tracking algorithm using two weights sharing is applied to track the target in motion. The key point to overcome is the one-shot detection task when the object is unidentified. Various complex and uncertain environment scenarios are applied to evaluate the proposed system via the deep learning model’s predictions metrics (accu...
In this study, an application of deep learning-based neural computing is proposed for efficient real...
In the widespread field of underwater robotics applications, the demand for increasingly intelligent...
Abstract—In this paper we present the computer vision component of a 6DOF pose estimation algorithm ...
Object recognition and tracking is a challenge for underwater vehicles. Traditional algorithm requir...
The conventional algorithm used for target recognition and tracking suffers from the uncertainties o...
Autonomous underwater vehicles (AUV) recycling in an underwater environment is particularly challeng...
Context: The context of this research is to detect and track humans in an underwater environment usi...
Bearings-only target tracking is commonly used in many fields, like air or sea traffic monitoring, t...
Deep learning has become more common in recent years because it has achieved excellent results in ac...
Seabed fishing depends on humans in common, for instance, the sea cucumber, sea urchin, and scallop ...
In recent years, marine ecosystems and fisheries have become potential resources. Therefore, monitor...
Uses of underwater videos to assess diversity and abundance of fish are being rapidly adopted by mar...
Recently, human being’s curiosity has been expanded from the land to the sky and the sea. Besides se...
Deep Reinforcement Learning methods for Underwater target Tracking This is a set of tools developed...
Abstract—In recent years, deep learning based methods have achieved promising performance ...
In this study, an application of deep learning-based neural computing is proposed for efficient real...
In the widespread field of underwater robotics applications, the demand for increasingly intelligent...
Abstract—In this paper we present the computer vision component of a 6DOF pose estimation algorithm ...
Object recognition and tracking is a challenge for underwater vehicles. Traditional algorithm requir...
The conventional algorithm used for target recognition and tracking suffers from the uncertainties o...
Autonomous underwater vehicles (AUV) recycling in an underwater environment is particularly challeng...
Context: The context of this research is to detect and track humans in an underwater environment usi...
Bearings-only target tracking is commonly used in many fields, like air or sea traffic monitoring, t...
Deep learning has become more common in recent years because it has achieved excellent results in ac...
Seabed fishing depends on humans in common, for instance, the sea cucumber, sea urchin, and scallop ...
In recent years, marine ecosystems and fisheries have become potential resources. Therefore, monitor...
Uses of underwater videos to assess diversity and abundance of fish are being rapidly adopted by mar...
Recently, human being’s curiosity has been expanded from the land to the sky and the sea. Besides se...
Deep Reinforcement Learning methods for Underwater target Tracking This is a set of tools developed...
Abstract—In recent years, deep learning based methods have achieved promising performance ...
In this study, an application of deep learning-based neural computing is proposed for efficient real...
In the widespread field of underwater robotics applications, the demand for increasingly intelligent...
Abstract—In this paper we present the computer vision component of a 6DOF pose estimation algorithm ...