使用结构光和神经网络的3D物体重建

Juan C. Espinal, M. Ornelas, H. Puga, J. M. Carpio, J. A. Muñoz
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引用次数: 3

摘要

提出了一种基于光线图像处理和神经网络的三维形状检测技术。该技术包括在物体上投射激光光条。然后,光线线被物体表面的变化所扭曲。物体的浮雕是通过测量光线的位移得到的。利用已知物体高度对应的直线位移数据实现神经网络。神经网络模拟了激光线在物体上的位移行为。这样就不需要使用实验装置的参数,结果得到了改善。利用三坐标测量机实测数据和仿真数据计算的均方根误差对该技术的性能进行了评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
3D Object Reconstruction Using Structured Light and Neural Networks
A technique for 3D shape detection based on light line image processing and neural networks is presented. The technique consists in the projection of a laser light stripe over the object. The light line then is distorted by changes on the object surface. The relief of the object is obtained by measuring the displacement of the light line. A neural network is implemented with data from line displacements corresponding to known object heights. The neural network models the behavior of the displacement of the laser line over the objects. In this way, the parameters of the experimental setup are not used and the results are improved. The performance of the technique is evaluated with the rms error, which is calculated by using data from a Coordinate Measuring Machine and simulated data.
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