基于高斯过程的三维未知目标运动学习视觉追踪控制

Marco Omainska, J. Yamauchi, Thomas Beckers, T. Hatanaka, S. Hirche, M. Fujita
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引用次数: 9

摘要

本文提出了一种基于观测器的视觉追踪控制方法,该方法将三维目标运动学习与高斯过程回归(GPR)相结合。我们考虑一个装有刚体的视觉传感器跟踪一个速度未知但依赖于目标位姿的目标刚体的情况。我们从视觉信息中估计姿态,并提出了一个高斯过程(GP)模型来从姿态估计中预测目标速度。我们通过证明估计和控制误差最终以高概率有界来分析所提出的控制的稳定性。最后,通过仿真验证了在视觉测量受到噪声干扰的情况下所提出的控制方案的性能。
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Gaussian process-based visual pursuit control with unknown target motion learning in three dimensions
In this paper, we propose an observer-based visual pursuit control integrating three-dimensional target motion learning by Gaussian Process Regression (GPR). We consider a situation where a visual sensor equipped rigid body pursuits a target rigid body whose velocity is unknown but dependent on the target's pose. We estimate the pose from visual information and propose a Gaussian Process (GP) model to predict the target velocity from the pose estimate. We analyse stability of the proposed control by showing that estimation and control errors are ultimately bounded with high probability. Finally, simulations illustrate the performance of the proposed control schemes even if the visual measurement is corrupted by noise.
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