Using Data Imputation for Signal Separation in High Contrast Imaging
- URL: http://arxiv.org/abs/2001.00563v3
- Date: Tue, 31 Mar 2020 17:37:02 GMT
- Title: Using Data Imputation for Signal Separation in High Contrast Imaging
- Authors: Bin Ren, Laurent Pueyo, Christine Chen, \'Elodie Choquet, John H.
Debes, Gaspard Duch\^ene, Fran\c{c}ois M\'enard, Marshall D. Perrin
- Abstract summary: circumstellar signals are unavoidably altered by over-fitting and/or self-subtraction.
We present a forward modeling--free solution with data imputation using sequential non-negative matrix factorization (DI-sNMF)
We mathematically prove it to have negligible alteration to circumstellar signals when the imputation region is relatively small.
- Score: 6.024602799136753
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: To characterize circumstellar systems in high contrast imaging, the
fundamental step is to construct a best point spread function (PSF) template
for the non-circumstellar signals (i.e., star light and speckles) and separate
it from the observation. With existing PSF construction methods, the
circumstellar signals (e.g., planets, circumstellar disks) are unavoidably
altered by over-fitting and/or self-subtraction, making forward modeling a
necessity to recover these signals. We present a forward modeling--free
solution to these problems with data imputation using sequential non-negative
matrix factorization (DI-sNMF). DI-sNMF first converts this signal separation
problem to a "missing data" problem in statistics by flagging the regions which
host circumstellar signals as missing data, then attributes PSF signals to
these regions. We mathematically prove it to have negligible alteration to
circumstellar signals when the imputation region is relatively small, which
thus enables precise measurement for these circumstellar objects. We apply it
to simulated point source and circumstellar disk observations to demonstrate
its proper recovery of them. We apply it to Gemini Planet Imager (GPI) K1-band
observations of the debris disk surrounding HR 4796A, finding a tentative trend
that the dust is more forward scattering as the wavelength increases. We expect
DI-sNMF to be applicable to other general scenarios where the separation of
signals is needed.
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