Modular neural-visual servoing using a neural-fuzzy decision network

Q. M. Wu, K. Stanley
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引用次数: 16

Abstract

Visual servoing is a growing research area. One of the key problems of feature based visual servoing is calculating the inverse Jacobian, relating change in features to change in robot position. Neural networks can learn to approximate the inverse feature Jacobian. However, the neural network approach can only approximate the feature Jacobian for a small workspace. In order to overcome this problem, we propose using a modular approach, where several networks are trained over a small area. Furthermore, we use a neural-fuzzy counterpropagation network to decide which subspace the robot is currently occupying. The neural fuzzy network provides smoother transitions between subspaces than hard switching. Preliminary results of the system's operation are also presented.
基于神经模糊决策网络的模块化神经视觉伺服
视觉伺服是一个新兴的研究领域。基于特征的视觉伺服的关键问题之一是计算反雅可比矩阵,将特征的变化与机器人位置的变化联系起来。神经网络可以学习近似逆特征雅可比矩阵。然而,神经网络方法只能近似一个小的工作空间的特征雅可比矩阵。为了克服这个问题,我们建议使用模块化方法,在一个小区域内训练几个网络。此外,我们使用神经模糊反传播网络来确定机器人当前占据的子空间。与硬切换相比,神经模糊网络在子空间之间提供了更平滑的转换。并给出了系统运行的初步结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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