2022
DOI: 10.48550/arxiv.2205.01866
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Correlated Read Noise Reduction in Infrared Arrays Using Deep Learning

Guillaume Payeur,
Étienne Artigau,
Laurence Perreault-Levasseur
et al.

Abstract: We present a new procedure rooted in deep learning to construct science images from data cubes collected by astronomical instruments using HxRG detectors in low-flux regimes. It improves on the drawbacks of the conventional algorithms to construct 2D images from multiple readouts by using the readout scheme of the detectors to reduce the impact of correlated readout noise. We train a convolutional recurrent neural network on simulated astrophysical scenes added to laboratory darks to estimate the flux on each … Show more

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