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Adaptive thresholding and dynamic windowing method for automatic centroid detection of digital Shack-Hartmann wavefront sensor

机译:数字Shack-Hartmann波前传感器自动重心检测的自适应阈值和动态加窗方法

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摘要

A Shack-Hartmann wavefront sensor (SWHS) splits the incident wavefront into many subsections and transfers the distorted wavefront detection into the centroid measurement. The accuracy of the centroid measurement determines the accuracy of the SWHS. Many methods have been presented to improve the accuracy of the wavefront centroid measurement. However, most of these methods are discussed from the point of view of optics, based on the assumption that the spot intensity of the SHWS has a Gaussian distribution, which is not applicable to the digital SHWS. In this paper, we present a centroid measurement algorithm based on the adaptive thresholding and dynamic windowing method by utilizing image processing techniques for practical application of the digital SHWS in surface profile measurement. The method can detect the centroid of each focal spot precisely and robustly by eliminating the influence of various noises, such as diffraction of the digital SHWS, unevenness and instability of the light source, as well as deviation between the centroid of the focal spot and the center of the detection area. The experimental results demonstrate that the algorithm has better precision, repeatability, and stability compared with other commonly used centroid methods, such as the statistical averaging, thresholding, and windowing algorithms.
机译:Shack-Hartmann波前传感器(SWHS)将入射波前分成许多小节,并将失真的波前检测转换为质心测量。质心测量的准确性决定了SWHS的准确性。已经提出了许多方法来提高波前质心测量的准确性。但是,基于SHWS的光点强度具有高斯分布的假设,从光学的角度讨论了这些方法中的大多数,不适用于数字SHWS。在本文中,我们提出了一种基于自适应阈值和动态窗口化方法的质心测量算法,该算法利用图像处理技术将数字SHWS实际应用在表面轮廓测量中。该方法可以消除各种噪声的影响,例如数字SHWS的衍射,光源的不均匀性和不稳定性以及焦点和光源的中心点之间的偏差,从而可以精确,可靠地检测每个焦点的中心点。检测区域的中心。实验结果表明,与统计平均,阈值和加窗算法等其他常用质心方法相比,该算法具有更好的精度,可重复性和稳定性。

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