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Prediction of three-dimensional coordinate measurement of space points based on BP neural network

机译:基于BP神经网络的空间点的三维坐标测量预测

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In order to improve the measurement accuracy of three-dimensional coordinate measurement system based on dual-PSD, this paper proposes a three-dimensional coordinate measurement method based on back propagation (BP) neural network considering the high ability of the neural network to deal with the complex nonlinear mapping problem. This method can describe the mapping relationship between three-dimensional coordinates of space points in the world coordinate system and coordinates of light spots on dual-PSD well. Levenberg-Marquardt learning algorithm is used to train the network, and then trained BP neural network model is used to predict three-dimensional coordinates of space points. Experimental results show that the average measurement error of space points obtained by the method is low. It proves that the built BP neural network model can be used to predict three-dimensional coordinates of space points. [Submitted 9 July 2018; Accepted 30 October 2018].
机译:为了提高基于双PSD的三维坐标测量系统的测量精度,提出了一种基于背部传播(BP)神经网络的三维坐标测量方法,考虑到神经网络处理的高能力 复杂的非线性映射问题。 该方法可以描述世界坐标系中空间点的三维坐标之间的映射关系,以及双PSD井上的光点坐标。 Levenberg-Marquardt学习算法用于训练网络,然后训练的BP神经网络模型用于预测空间点的三维坐标。 实验结果表明,该方法获得的空间点的平均测量误差低。 事实证明,内置的BP神经网络模型可用于预测空间点的三维坐标。 [2018年7月9日提交; 公认于2018年10月30日]。

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