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用于从恒星图像确定哈勃太空望远镜像差的人工神经网络。

Artificial neural network for the determination of Hubble Space Telescope aberration from stellar images.

作者信息

Barrett T K, Sandler D G

出版信息

Appl Opt. 1993 Apr 1;32(10):1720-7. doi: 10.1364/AO.32.001720.

Abstract

An artificial-neural-network method, first developed for the measurement and control of atmospheric phase distortion, using stellar images, was used to estimate the optical aberration of the Hubble Space Telescope. A total of 26 estimates of distortion was obtained from 23 stellar images acquired at several secondary-mirror axial positions. The results were expressed as coefficients of eight orthogonal Zernike polynomials: focus through third-order spherical. For all modes other than spherical the measured aberration was small. The average spherical aberration of the estimates was -0.299 microm rms, which is in good agreement with predictions obtained when iterative phase-retrieval algorithms were used.

摘要

一种最初为利用恒星图像测量和控制大气相位畸变而开发的人工神经网络方法,被用于估计哈勃太空望远镜的光学像差。从在几个副镜轴向位置获取的23张恒星图像中总共获得了26个畸变估计值。结果以八个正交泽尼克多项式的系数表示:从聚焦到三阶球差。对于除球差以外的所有模式,测量到的像差都很小。估计值的平均球差为-0.299微米均方根,这与使用迭代相位恢复算法时获得的预测结果非常吻合。

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