Autonomous underwater vehicles (AUV) recycling in an underwater environment is particularly challenging due to the continuous exploitation of marine resources. AUV recycling via visual technology is the primary method. However, the current visual technology is limited by harsh sea conditions and has problems, such as poor tracking and detection. To solve these problems, we propose a long-term target anti-interference tracking (LTAT) method, which integrates Siamese networks, You Only Look Once (YOLO) networks and online learning ideas. Meanwhile, we propose using the cubature Kalman filter (CKF) for optimization and prediction of the position. We constructed a launch and recovery system (LARS) tracking and capturing the AUV. The system cons...
Due to the unknown motion model and the complexity of the environment, the problem of target trackin...
This paper presents a data-driven approach to control the movement of autonomous underwater vehicles...
In this study, an application of deep learning-based neural computing is proposed for efficient real...
Object recognition and tracking is a challenge for underwater vehicles. Traditional algorithm requir...
In the widespread field of underwater robotics applications, the demand for increasingly intelligent...
An adaptive target tracking method based on extended Kalman filter (TT-EKF) is proposed to simultane...
Deep Reinforcement Learning methods for Underwater target Tracking This is a set of tools developed...
Bearings-only target tracking is commonly used in many fields, like air or sea traffic monitoring, t...
Autonomous underwater vehicles (AUVs) play very important roles in underwater missions. However, the...
This thesis introduces the use of Machine Learning, specifically Reinforcement Learning, to create a...
The active tracking technology of underwater acoustic targets is an important research direction in ...
Abstract- This paper presents two alternative methods for moving long baseline (MLBL) navigation of ...
We present a new vision-based localization system applied to an autonomous underwater vehicle (AUV) ...
The growing movement toward sustainable use of ocean resources is driven by the pressing need to all...
To realize the potential of autonomous underwater robots that scale up our observational capacity in...
Due to the unknown motion model and the complexity of the environment, the problem of target trackin...
This paper presents a data-driven approach to control the movement of autonomous underwater vehicles...
In this study, an application of deep learning-based neural computing is proposed for efficient real...
Object recognition and tracking is a challenge for underwater vehicles. Traditional algorithm requir...
In the widespread field of underwater robotics applications, the demand for increasingly intelligent...
An adaptive target tracking method based on extended Kalman filter (TT-EKF) is proposed to simultane...
Deep Reinforcement Learning methods for Underwater target Tracking This is a set of tools developed...
Bearings-only target tracking is commonly used in many fields, like air or sea traffic monitoring, t...
Autonomous underwater vehicles (AUVs) play very important roles in underwater missions. However, the...
This thesis introduces the use of Machine Learning, specifically Reinforcement Learning, to create a...
The active tracking technology of underwater acoustic targets is an important research direction in ...
Abstract- This paper presents two alternative methods for moving long baseline (MLBL) navigation of ...
We present a new vision-based localization system applied to an autonomous underwater vehicle (AUV) ...
The growing movement toward sustainable use of ocean resources is driven by the pressing need to all...
To realize the potential of autonomous underwater robots that scale up our observational capacity in...
Due to the unknown motion model and the complexity of the environment, the problem of target trackin...
This paper presents a data-driven approach to control the movement of autonomous underwater vehicles...
In this study, an application of deep learning-based neural computing is proposed for efficient real...