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Grey neural network-based forecasting system for vision-guided robot trajectory tracking

机译:基于灰色神经网络的视觉引导机器人轨迹跟踪预测系统

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This paper presents a grey neural network-based forecasting system (GNNFS) in solving the prediction problem. GNNFS adopts a grey model to predict the signal and a neural network (NN) to forecast the prediction error of the grey model. A sequential batch learning (SBL) is developed to adjust the weights of the NN. The proposed GNNFS is applied to a binocular robot, called an Eye-Robot, for human-robot interaction which involved predicting the trajectory of a participant's hand and tracking the hand. By applying the SBL, the GNNFS can gradually learn to predict the trajectory of the hand and track it well. The experimental results show that the GNNFS can carry out the SBL in real-time for vision-guided robot trajectory tracking.
机译:本文提出了一种基于灰色神经网络的预测系统(GNNFS)来解决预测问题。 GNNFS采用灰色模型来预测信号,并采用神经网络(NN)来预测灰色模型的预测误差。开发了顺序批处理学习(SBL)来调整NN的权重。拟议的GNNFS被应用于称为人眼机器人的双目机器人,用于人机交互,其中涉及预测参与者手部的轨迹并跟踪手部。通过应用SBL,GNNFS可以逐渐学习预测手的轨迹并对其进行良好的跟踪。实验结果表明,GNNFS可以实时执行SBL,用于视觉引导的机器人轨迹跟踪。

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