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Phase retrieval in the focal plane

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Wolfgang Gaessler, Diethard Peter Clemens Storz MPIA, Heidelberg, Germany Phase retrieval in the focal plane Preface: Parallel sub-window read What the MPIA-Readout ... – PowerPoint PPT presentation

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Title: Phase retrieval in the focal plane


1
Phase retrieval in the focal plane
  • Wolfgang Gaessler, Diethard Peter Clemens Storz
  • MPIA, Heidelberg, Germany

2
Preface Parallel sub-window read
Long exposure
Fast sub-windows in parallel
twin
tscience
3
What the MPIA-Readout Electronic can do
  • MPIA-ROE3
  • 1 (3) Sub-windows at science RON (5e-)
  • 25x25 Pixel
  • 135 Hz (50 Hz)
  • Up to 600Hz for one sub-window with 3 times
    science RON
  • Even with the old HAWAII 2 chips
  • Currently, limited by some undersized Flash RAM

4
sCMOS
  • info_at_pco.de
  • Development on back-illuminated

5
Focal plane AO
Methods using one image plane for phase retrieval.
  • I Uf2
  • No unique solution
  • Non linear
  • Computation intensive
  • Simple setup
  • No additional parts
  • As close as possible to the science image

Bucci, et al. 1997
6
Questions
  • Could it increase sensitivity?
  • Whats already done?
  • Is the computation power the limit?
  • How could an implementation look like?

7
Increased Sensitivity?
  • Number of Photons D2
  • Number of Sub-Apertures D2
  • No gain for AO with larger diameter
  • Doesnt this change in focal plane?
  • Yes, but needs proper sampling.
  • Pixseeing/Pixdiff D2
  • Solution Dynamic binning

8
Dynamic binning
SNRbin,soft D SNRbin,hard D2
9
Solving I Uf2
  • Image sharpening algorithm
  • Intensity metrics maximizing
  • Muller et. al. 1974 theory
  • Buffington et. al. 1977 implementation in
    telescope
  • Recently Murray et. al. 2007, Both et. al. 2005
  • Iterative Fourier Transform
  • Gerchberg Saxton

10
Image sharpening metrics
  • Optimization metrics
  • S?In(x,y)dxdy n2,3,4 maximize
  • S ?ln(I(x,y))dxdy maximize
  • Lukosz-Zernike metric minimize
  • ? spot radius
  • NA aperture
  • ? wavelength
  • b Lukosz-Zernike coefficient

11
Image sharpening algorithms
  • Change shape of DM to minimize
  • ADN -gt N1 iterations (Murray et. al.2007)
  • AD actuator dynamic gt255, N actuator
    gt1000
  • Time consuming for high order correction

12
Gerchberg Saxon
  • Approximate amplitude constant in pupil
  • Inverse Fourier transform
  • Compare to PSF
  • Fourier transform

13
Implementation by Bucci et. al. 1997
  • Penalty algorithm
  • Representation in Zernike
  • Minimizes the Intensity with a gradient operator
  • Stable and usual trapping problem less relevant
  • O(Nmode ln(Nmode) x Npix)
  • Converge after some 100 iterations
  • For low order sensing feasable

14
Low order sensorNon common path error tracker
Guide Star
Guide Star
  • Low order sensor (TT, focus, etc.)
  • Time varying flexure and distortion
  • Slow offload of non common path

Telescope
Telescope
DM
DM
Science Focal Plane
WFC
WFC
WFS
WFS
15
Conclusion
  • Phase retrieval in the focal plane is a long
    known problem worked on with several solutions
  • Image sharpening
  • Iterative Inverse Fourier transformation
  • All are quite time consuming in computation
  • Dynamic binning could gain some sensitivity and
    computation power
  • Low order sensor
  • But also high order, shown by O. Guyon

16
What elsespectroscopy
  • Slit viewer image (put all light into the slit)
  • Phase retrieval on the PSF of spectral lines
  • Does this problem even compare to a diffraction
    grating sensor?

17
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