Automatic Tuning Methodology of Visual Servoing System Using Predictive Approach

C. Copot, Lei Shi, S. Vanlanduit
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引用次数: 5

Abstract

In this paper, a tuning methodology based on predictive model approach for visual servoing system is investigated. The proposed approach uses features prediction based method to estimate the camera velocity and thus to calculate the optimal control tuning parameter. In order to have a faster convergence and in the same time a desired behaviour of the servoing system, a new control parameter is computed every sampling time. To evaluate the designed tuning strategy, a visual servoing architecture with an eye-in-hand configuration has been considered. The experimental results showed that the proposed tuning algorithm based on prediction model has a stable and convergent behavior when dealing with visual servoing applications. To the knowledge of the authors, the proposed methodology is the first approach which enables an automatic selection of control parameter for the proportional visual control law.
基于预测方法的视觉伺服系统自动整定方法
本文研究了一种基于预测模型方法的视觉伺服系统整定方法。该方法采用基于特征预测的方法来估计摄像机速度,从而计算出最优控制整定参数。为了使伺服系统具有更快的收敛速度和期望的行为,每次采样都计算一个新的控制参数。为了评估所设计的调谐策略,考虑了具有眼手结构的视觉伺服体系结构。实验结果表明,所提出的基于预测模型的调谐算法在处理视觉伺服应用时具有稳定和收敛的特性。据作者所知,所提出的方法是第一个能够自动选择比例视觉控制律的控制参数的方法。
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