Reconstruction and assessment of the least-squares and slope discrepancy components of the phase

被引:0
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作者
Tyler, Glenn A. [1 ]
机构
[1] Optical Sciences Company, 1341 South Sunkist Street, Anaheim, CA 92806, United States
关键词
Adaptive optics - Computer simulation - Error compensation - Fourier optics - Gradient index optics - Image analysis - Least squares approximations - Optical phase conjugation - Spatial variables measurement;
D O I
10.1364/josaa.17.001828
中图分类号
学科分类号
摘要
The concept of slope discrepancy developed in the mid-1980's to assess measurement noise in a wave-front sensor system is shown to have additional contributions that are due to fitting error and branch points. This understanding is facilitated by the development of a new formulation that employs Fourier techniques to decompose the measured gradient field (i.e., wave-front sensor measurements) into two components, one that is expressed as the gradient of a scalar potential and the other that is expressed as the curl of a vector potential. A key feature of the theory presented here is the fact that both components of the phase (one corresponding to each component of the gradient field) are easily reconstructable from the measured gradients. In addition, the scalar and vector potentials are both easily expressible in terms of the measured gradient field. The work concludes with a wave optics simulation example that illustrates the ease with which both components of the phase can be obtained. The results obtained illustrate that branch point effects are not significant until the Rytov number is greater than 0.2. In addition, the branch point contribution to the phase not only is reconstructed from the gradient data but is used to illustrate the significant performance improvement that results when this contribution is included in the correction applied by an adaptive optics system. © 2000 Optical Society of America.
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页码:1828 / 1839
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