Reinforcement-Learning-Based Visual Servoing of Underwater Vehicle Dual-Manipulator System
Yingxiang Wang,
Jian Gao
Abstract:As a substitute for human arms, underwater vehicle dual-manipulator systems (UVDMSs) have attracted the interest of global researchers. Visual servoing is an important tool for the positioning and tracking control of UVDMSs. In this paper, a reinforcement-learning-based adaptive control strategy for the UVDMS visual servo, considering the model uncertainties, is proposed. Initially, the kinematic control is designed by developing a hybrid visual servo approach using the information from multi-cameras. The comm… Show more
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