THE KNIFE EDGE TEST AS A WAVEFRONT SENSOR (IMAGE PROCESSING).

An algorithm to reduce data from the knife edge test is given. The method is an extension of the theory of single sideband holography to second order effects. Application to phase microscopy is especially useful because a troublesome second order term vanishes when the knife edge does not attenuate...

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Main Author: KENKNIGHT, CHARLES ELMAN.
Language:en
Published: The University of Arizona. 1987
Subjects:
Online Access:http://hdl.handle.net/10150/184151
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spelling ndltd-arizona.edu-oai-arizona.openrepository.com-10150-1841512015-10-23T04:29:11Z THE KNIFE EDGE TEST AS A WAVEFRONT SENSOR (IMAGE PROCESSING). KENKNIGHT, CHARLES ELMAN. Electron microscopes -- Design and construction. Diffraction patterns. Imaging systems -- Image quality. An algorithm to reduce data from the knife edge test is given. The method is an extension of the theory of single sideband holography to second order effects. Application to phase microscopy is especially useful because a troublesome second order term vanishes when the knife edge does not attenuate the unscattered radiation probing the specimen. The algorithm was tested by simulation of an active optics system that sensed and corrected small (less than quarter wavelength) wavefront errors. Convergence to a null was quadratic until limited by detector-injected noise in signal. The best form of the algorithm used only a Fourier transform of the smoothed detector record, a filtering of the transform, an inverse transform, and an arctangent solving for the phase of the input wavefront deformation. Iterations were helpful only for a Wiener filtering of the data record that weighted down Fourier amplitudes smaller than the mean noise level before analysis. The simplicity and sensitivity of this wavefront sensor makes it a candidate for active optic control of small-angle light scattering in space. In real time optical processing a two dimensional signal can be applied as a voltage to a deformable mirror and be received as an intensity modulation at an output plane. Combination of these features may permit a real time null test. Application to electron microscopy should allow the finding of defocus, astigmatism, and spherical aberrations for single micrographs at 0.2 nm resolution, provided a combination of specimen and support membrane is used that permits some a priori knowledge. For some thin specimens (up to nearly 100 atom layers thick) the left-right symmetry of diffraction should allow reconstruction of the wave-front deformations caused by the specimen with double the bandpass used in each image. 1987 text Dissertation-Reproduction (electronic) http://hdl.handle.net/10150/184151 698768310 8726811 en Copyright © is held by the author. Digital access to this material is made possible by the University Libraries, University of Arizona. Further transmission, reproduction or presentation (such as public display or performance) of protected items is prohibited except with permission of the author. The University of Arizona.
collection NDLTD
language en
sources NDLTD
topic Electron microscopes -- Design and construction.
Diffraction patterns.
Imaging systems -- Image quality.
spellingShingle Electron microscopes -- Design and construction.
Diffraction patterns.
Imaging systems -- Image quality.
KENKNIGHT, CHARLES ELMAN.
THE KNIFE EDGE TEST AS A WAVEFRONT SENSOR (IMAGE PROCESSING).
description An algorithm to reduce data from the knife edge test is given. The method is an extension of the theory of single sideband holography to second order effects. Application to phase microscopy is especially useful because a troublesome second order term vanishes when the knife edge does not attenuate the unscattered radiation probing the specimen. The algorithm was tested by simulation of an active optics system that sensed and corrected small (less than quarter wavelength) wavefront errors. Convergence to a null was quadratic until limited by detector-injected noise in signal. The best form of the algorithm used only a Fourier transform of the smoothed detector record, a filtering of the transform, an inverse transform, and an arctangent solving for the phase of the input wavefront deformation. Iterations were helpful only for a Wiener filtering of the data record that weighted down Fourier amplitudes smaller than the mean noise level before analysis. The simplicity and sensitivity of this wavefront sensor makes it a candidate for active optic control of small-angle light scattering in space. In real time optical processing a two dimensional signal can be applied as a voltage to a deformable mirror and be received as an intensity modulation at an output plane. Combination of these features may permit a real time null test. Application to electron microscopy should allow the finding of defocus, astigmatism, and spherical aberrations for single micrographs at 0.2 nm resolution, provided a combination of specimen and support membrane is used that permits some a priori knowledge. For some thin specimens (up to nearly 100 atom layers thick) the left-right symmetry of diffraction should allow reconstruction of the wave-front deformations caused by the specimen with double the bandpass used in each image.
author KENKNIGHT, CHARLES ELMAN.
author_facet KENKNIGHT, CHARLES ELMAN.
author_sort KENKNIGHT, CHARLES ELMAN.
title THE KNIFE EDGE TEST AS A WAVEFRONT SENSOR (IMAGE PROCESSING).
title_short THE KNIFE EDGE TEST AS A WAVEFRONT SENSOR (IMAGE PROCESSING).
title_full THE KNIFE EDGE TEST AS A WAVEFRONT SENSOR (IMAGE PROCESSING).
title_fullStr THE KNIFE EDGE TEST AS A WAVEFRONT SENSOR (IMAGE PROCESSING).
title_full_unstemmed THE KNIFE EDGE TEST AS A WAVEFRONT SENSOR (IMAGE PROCESSING).
title_sort knife edge test as a wavefront sensor (image processing).
publisher The University of Arizona.
publishDate 1987
url http://hdl.handle.net/10150/184151
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