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Automatic machine vision calibration using statistical and neural network methods

机译:使用统计和神经网络方法的自动机器视觉校准

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A methodology is presented for camera calibration that is designed to improve the accuracy of machine vision based object measurement Systems. The regression and artificial neural network techniques studied are considered to be complimentary rather than competitive. Neural networks have been identified as being particularly useful for the precise modelling of non-linear response, and offer the additional benefits oi being non-prescriptive and generally applicable to factors such as radial lens distortion, manufacturing errors and minor camera misalignments. The combination of these modelling techniques within automated program control strategy is suggested as a new approach for straightforward and accessible machine vision calibration. The method has particularly good application to vision metrology and reverse engineering tasks. A demonstrator system has been constructed, employing a scanning laser line and vision system for object measurement in three-dimensions. Experimental results are presented along with a demonstration of the reduction in measurement error that can be attained through the application of regression analysis and artificial neural network modelling.
机译:提出了一种用于相机校准的方法,该方法旨在提高基于机器视觉的物体测量系统的准确性。研究的回归和人工神经网络技术被认为是互补而不是竞争。已经确定了神经网络对于非线性响应的精确建模特别有用,并且提供了非规范性的附加好处,并且通常适用于诸如径向镜头变形,制造误差和较小的相机未对准等因素。建议将这些建模技术与自动程序控制策略结合起来,作为一种简单易用的机器视觉校准的新方法。该方法特别适用于视觉计量和逆向工程任务。已经构建了演示系统,该系统采用扫描激光线和视觉系统进行三维物体测量。提出了实验结果,并演示了通过应用回归分析和人工神经网络建模可以降低测量误差的方法。

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