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首页> 外文期刊>Applied optics >PROCESSING WAVE-FRONT-SENSOR SLOPE MEASUREMENTS USING ARTIFICIAL NEURAL NETWORKS
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PROCESSING WAVE-FRONT-SENSOR SLOPE MEASUREMENTS USING ARTIFICIAL NEURAL NETWORKS

机译:使用人工神经网络处理波前传感器斜率测量

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摘要

For adaptive-optics systems to compensate for atmospheric turbulence effects, the wave-front perturbation must he measured with a wave front sensor (WFS), and key parameters of the atmosphere and the adaptive-optics system must be known. Two parameters of particular interest include the Fried coherence length r(o) and the WFS slope measurement error. Statistics-based optimal techniques, such as the minimum variance phase reconstructor, have been developed to improve the imaging performance of adaptive-optics systems. However, these statistics-based models rely on knowledge of the current state of the key parameters. Neural networks provide nonlinear solutions to adaptive-optics problems while offering the possibility of adapting to changing seeing conditions. We address the use of neural networks for three tasks: (1) to reduce the WFS slope measurement error, (2) to estimate the Fried coherence length r(o), and (3) to estimate the variance of the WFS slope measurement error. All of these tasks are accomplished by using only the noisy WFS measurements as input. Where appropriate, we compare our method with classical statistics-based methods to determine if neural networks offer true benefits in performance. Although a statistics-based method is found to perform better than a neural network in reducing WFS slope measurement error neural networks perform better in estimating the variance of the WFS slope measurement error, and both methods perform well in estimating r(o). (C) 1995 Optical Society of America [References: 22]
机译:对于要补偿大气湍流效应的自适应光学系统,必须使用波前传感器(WFS)测量波前扰动,并且必须知道大气层和自适应光学系统的关键参数。两个特别值得关注的参数包括Fried相干长度r(o)和WFS斜率测量误差。已经开发了基于统计的最佳技术,例如最小方差相位重建器,以提高自适应光学系统的成像性能。但是,这些基于统计的模型依赖于关键参数的当前状态的知识。神经网络为自适应光学问题提供了非线性解决方案,同时提供了适应不断变化的观看条件的可能性。我们将神经网络用于以下三个任务:(1)减少WFS斜率测量误差,(2)估计Fried相干长度r(o),和(3)估计WFS斜率测量误差的方差。所有这些任务都是通过仅使用嘈杂的WFS测量作为输入来完成的。在适当的情况下,我们将我们的方法与传统的基于统计的方法进行比较,以确定神经网络是否在性能方面提供了真正的好处。尽管发现在减少WFS斜率测量误差方面基于统计的方法比神经网络的性能更好,但神经网络在估计WFS斜率测量误差的方差方面表现更好,并且两种方法在估计r(o)方面均表现良好。 (C)1995年美国眼镜学会[参考文献:22]

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