More data than you want, less data than you need: machine learning approaches to starlight subtraction with MagAO-X
High-contrast imaging data analysis depends on removing residual starlight from the host star to reveal planets and disks. Most observers do this with principal components analysis (i.e. KLIP) using modes computed from the science images themselves. These modes may not be orthogonal to planet and di...
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Zusammenfassung: | High-contrast imaging data analysis depends on removing residual starlight
from the host star to reveal planets and disks. Most observers do this with
principal components analysis (i.e. KLIP) using modes computed from the science
images themselves. These modes may not be orthogonal to planet and disk
signals, leading to over-subtraction. The wavefront sensor data recorded during
the observation provide an independent signal with which to predict the
instrument point-spread function (PSF). MagAO-X is an extreme adaptive optics
(ExAO) system for the 6.5-meter Magellan Clay telescope and a technology
pathfinder for ExAO with GMagAO-X on the upcoming Giant Magellan Telescope.
MagAO-X is designed to save all sensor information, including kHz-speed
wavefront measurements. Our software and compressed data formats were designed
to record the millions of training samples required for machine learning with
high throughput. The large volume of image and sensor data lets us learn a PSF
model incorporating all the information available. This will eventually allow
us to probe smaller star-planet separations at greater sensitivities, which
will be needed for rocky planet imaging. |
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DOI: | 10.48550/arxiv.2407.13008 |