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Wavefront Sensing II Richard Lane Department of Electrical and Computer Engineering University of Canterbury
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Contents Session 1 – Principles Session 2 – Performances Session 3 – Wavefront Reconstruction
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Session 2 Performances Geometrical wavefront sensing take 2 The inverse problem The astronomical setting The basic methods
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Geometric wavefront sensing (or curvature sensing without curvature) Plane 1 Plane 2 Image Plane Improve sensitivity (signal stronger) Improve the number of modes measurable (signal weaker)
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Slopes in the wave-front causes the intensity distribution to be stretched like a rubber sheet Geometric optics model z W(x) xx Aim is to map the distorted distribution back to uniform
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Geometric wavefront sensing Take 2 Plane 1 Plane 2 Image Plane Intensity Plane 1 Intensity Plane 2 Intensity distribution gives the probability distribution For the photon arrival
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Intensity Plane 1 Intensity Plane 2 Probability density functions Integrate to Form CDF Choose level Difference gives a slope estimate Final slope estimate Integrate slope to find the phase Recovering the phase Defocus!
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Forward Problem
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Inverse Problem Performance is determined by amount of photons entering the aperture and assumptions about the object and turbulence
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Imaging a star
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Multiple layers Layer 1 Layer 2 Aperture Plane h1h1 h2h2 For wide angle imaging we need to know the height of the turbulence
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The fundamental problem: How to optimally estimate the optical effects of turbulence from a minimal set of measurements
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Limiting Factors Technological –CCD read noise –Design of wavefront sensor (Curvature, Shack- Hartmann, Phase Diversity) Fundamental –Photon Noise –Loss of information in measurements –Quality of prior knowledge
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In Its Raw Form the Inverse Problem Is Always Insoluble There are always an infinite number of ways to explain data. The problem is to explain the data in the most reasonable way Example Shack-Hartmann sensing for estimating turbulence
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Example – fit a curve to known slopes Solution requires assumptions on the nature of the turbulence Use a limited set of basis functions Assume Kolmogorov turbulence or smoothness
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Parameter estimation Essentially we need to find a set of unknown parameters which describe the object and/or turbulence The parameters can be in terms of pixels or coefficients of basis functions Solution should not be overly sensitive to our choice of parameters. Ideally it should be on physical grounds
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Bayesian estimation 101 An important problem Estimate And if you know that it models two people splitting the bill in a restaurant?
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Possible phase functions Zernike basis Zernike Polynomials Low orders are smooth Pixel basis, highest frequency = 1/(2Δ) Δ
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Estimation using Zernike polynomials Measurement Interaction Zernike Polynomial vector matrix Coefficents i th column of Θ corresponds to the measurement that would occur if the phase was the i th Zernike polynomial phase weighting Zernikie polynomial
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Extension to many modes Provided the set of basis functions is complete, the answer is independent of the choice The best functions are approximately given by the eigenfunctions of the covariance matrix C These approximate the low order Zernike polynomials, hence their use. Conventional approach is to use a least squares solution and estimate only the first M Zernikes when M ≈N/2 (N is the number of measurements)
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Not all measurements are equally noisy hence minimise Ordinary least squares Minimise Weighted least squares
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Conventional Results As the number M increases the wavefront error decreases then increases as M approaches N. Reason when M=N there is no error and there should be as higher order modes exist and will be affecting the measurements
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Phase estimation from the centroid Tilt and coma both produce displacement of the centroid According to Noll for Kolmogorov turbulence –Variance of the tilt –Variance of the coma Ideally you should estimate a small amount of coma
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Bayesian viewpoint The problem in the previous slide is that we are not modelling the problem correctly Assuming that the higher order modes are zero, is forcing errors on the lower order modes Need to estimate the coefficients of all the modes as random variables
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Example of Bayesian estimation for underdetermined equations Measurement z is a linear function of two unknowns x,y Statistical expectation We want to minimise the expected error The estimate (denoted by ^) is a linear function of z
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Minimisation of the error Key step, rewrite in terms of and Solution is a function of the covariance of the unknown parameters
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Vector solution for the phase Express the phase as a sum of orthogonal basis functions Observed measurements are a linear function of the coefficients Reconstructor depends on the covariance of a
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Simple example for tilt D/r0=4 From Noll From Primot et al
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Bayesian estimate of the wavefront Minimizes
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Summary Bayesian method When the data is noisy you need to put more emphasis on the prior. For example, if the data is very bad, don’t try and estimate a large number of modes When done properly the result does not depend strongly on C being exact Error predicted to be where
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Operation of a Bayesian estimator Minimizes When D becomes very large, the data is very noisy then more weight is placed on the prior dataprior Ultimately as D→∞, a→0 (for very noisy data no estimate is made)
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Bayesian examination question You are on a game show. You can select one of three doors Behind one door is $10000, behind the others nothing After you select a door, the compere then opens one of the other doors revealing nothing. You are given the option to change your choice Should you?
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Estimating the performance limits when it is non-Gaussian The preceding analysis is fine when the measurement errors can be modelled as a Gaussian random variable On many equations you need to perform an analysis to work out the error in the analysis Cramer-Rao bounds
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Cramer-Rao bound Linear unbiased estimators only Essentially the quality of the parameter estimate is given by the curvature of the pdf Doesn’t tell you how to achieve the bound
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Simple example Find the performance limit estimating the mean of a one-dimensional Gaussian from 1 sample
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Points to note Limit is a lower bound. Clearly for 1 sample from the pdf it cannot be attained The variance decays as 1/N with more samples For a Gaussian asymptotically the centroid of the distribution can be shown to approach the Cramer- Rao bound
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Estimation of a laser guide star location, Cramer-Rao bound Small projection telescope Large AO corrected projection telescope Large uncorrected projection telescope Key points: In the presence of saturation a focused spot may not be optimal Need to know the pattern to reach the limit
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Optimal estimation of a parameter wavefront tilt Important because the wavefront tilt is the dominant form of phase aberration A small error in estimating the tilt can be larger than the full variance of a higher order aberration.
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Issues Displacement of the centroid of an image is proportional to the average tilt (not the least mean square) of the phase distortion Will discuss this issue later, but for the moment concentrate on estimating the mean square tilt.
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How do you estimate the centre of a spot? The performance of the Shack-Hartmann sensor depends on how well the displacement of the spot is estimated. The displacement is usually estimated using the centroid (center-of-mass) estimator. This is the optimal estimator for the case where the spot is Gaussian distributed and the noise is Poisson.
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Centroid estimation for a sinc 2 function
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Why Not Use the Centroid? In practice the spot intensity decays as This means that photons can still occur at points quite distant from the centre. Estimator is divergent unless restricted to a finite region in the image plane
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Diffraction-limited spot For a square aperture, the distribution is:
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Photon arrival simulation
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Solutions (1) Use a quad cell detector and discard the photons away from the centre The signal from the outer cells is discarded because it adds too much noise
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Solutions 2 Use an optimal estimator that weights the information appropriately Consider two measurements of an unknown parameter an estimate of a parameter with different variances A weighted sum is always a better estimator A non linear estimator is better still
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Maximum-likelihood estimation If photons are detected at x 1, x 2 …, x N, the estimate is the value that maximizes the expression The Cramer-Rao lower bound for the variance is For a large number of photons, N, the variance approaches the Cramer-Rao lower bound.
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Technique relies on finding a model of the object Not sensitive to the size of window (unlike the centroid) Centroid is a closed form solution for fitting a Gaussian of variable width Centroid location by model fitting
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Tilt estimation in curvature sensing The image is displaced by the atmospheric tilt, how well you can estimate it is determined by the shape of the image formed.
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Tilt estimation in the curvature actual propagated wavefronts
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Performance versus detector position for a curvature sensor
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Actual Wavefront sensor data Observation at Observatoire de Lyon SPID instrument on 1-m telescope 20x20 Shack-Hartmann lenslet array Exposure time 2ms Objects: Pollux, point object 2500 frames Castor3 arc second binary 2500 frames
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Centroiding issues Accuracy required to a fraction of a pixel Sampling rate 60% of Nyquist
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Need a good model of the object In each lenslet of the Shack-Hartmann acts like a small telescope the dominant effect is one of tilt. => We have a large number of images of the same object shifted before they are sampled. Finding the model
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Solution: approach Use blind deconvolution to find model MAP framework (Hardie et al, FLIR) Data-capturing process: Choose initially so that Prior information: –Laplacian smoothness for the optics –Maximum entropy for CCD
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Typical SPID data frames Single Wavefront Sensor FrameLong term WSF Blow up of a spotMovie of a spot
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Simulations Inputs: –Object f = point source –Optics = diffraction-limited pattern of square aperture –CCD structure: Gaussian-like –Random displacements –White Gaussian noise: dB, 30dB, 15dB
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Simulation result: 15dB noise Optics reconstruction CCD reconstruction
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Traditional centroiding Centre of gravity of spot image Problems: –Finite pixel size –Finite window size –Readout noise (more pixels = more noise) –Bias Problems become worse with extended objects
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Model-fitting Full blind deconvolution computationally unreasonable Fit a model estimated by blind deconvolution Use model to determine centroids
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Error in centroid calculation
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Blind deconvolution results Optics reconstruction CCD reconstruction
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Results from speckle image deconvolution (narrowband) Binary estimated with model fitted centroids Binary estimated with traditional centroids
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Phase reconstructions of Binary Traditional centroiding Model based centroiding
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Conclusions Bayesian approaches provide a logical framework for filling in missing data Make sure of what you are assuming Cramer-Rao bound can provide a performance limit You need to look at the whole process when deriving an algorithm
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And the answer is: (ref Stark and Woods) Yes change the door ? ??
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Actual Wavefront sensor data Observation at Observatoire de Lyon SPID instrument on 1-m telescope 20x20 Shack-Hartmann lenslet array Exposure time 2ms Objects: Pollux, point object 2500 frames Castor3 arc second binary 2500 frames
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Subpixel displacement estimation Wavefront sensing is based on estimating the tilts produced by atmospheric distortion, the accuracy of displacement estimation is critical. Data from SPID 2500 frames undersampled by 40% Estimated CCD pixel sensitivity Estimated optics psf Spot displacements
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Explanation of the terms Results from
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Possible phase functions Zernike basis
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The inverse problem
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Alternatively
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Prior information Infinite number of unknowns, but a finite number of centroid measurements from the sensor Conventional approach is to choose the basis functions and estimate M coefficients, where M < N the number of measurements
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Using real data: binary star 14x14 Shack-Hartmann lenslet array Exposure time 3.2ms Object: Castor, a binary star –Intensity ratio: 2.1 –Separation: 3.1 arcseconds
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Blind deconvolution results Intensity ratio: 2.4 Separation: 3 arc seconds
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