ArXiv TLDR

A New PSF Deconvolution Algorithm: Simultaneous Spatial Resolution Enhancement and Point Source Removal for Morphological Analysis of AGN Host Galaxies

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2605.13735

Ren Kawase, Takatoshi Shibuya, Kazunori Matsuda

astro-ph.GAastro-ph.COastro-ph.IM

TLDR

A new PSF deconvolution algorithm simultaneously enhances host galaxy resolution and removes bright AGN point sources for morphological analysis.

Key contributions

  • Proposes a new PSF deconvolution algorithm for AGN host galaxy images.
  • Decomposes observed images into extended host ($I_{\rm sm}$) and point-source AGN ($I_{\rm sp}$) components.
  • Employs smooth, sparse, and a novel point-source balance constraint for accurate reconstruction.
  • Achieves Hubble Space Telescope-comparable resolution and effective AGN removal in tests.

Why it matters

This algorithm enables detailed morphological studies of distant AGN host galaxies by significantly improving image quality. It is crucial for analyzing wide-field survey data from upcoming telescopes like Rubin, Euclid, and Roman.

Original Abstract

We propose a new point-spread function (PSF) deconvolution algorithm for images of galaxies hosting an active galactic nucleus (AGN), designed to simultaneously enhance the spatial resolution of the host galaxy and remove the bright central point source. In this algorithm, an intrinsic image is reconstructed by decomposing an observed image into two components: an image $I_{\rm sm}$ of an extended component (i.e., a host galaxy) and an image $I_{\rm sp}$ of a point-source component (i.e., an AGN). During image reconstruction, three constraints are imposed: (1) a smooth constraint on the image $I_{\rm sm}$, which spatially smooths the host-galaxy structures; (2) a sparse constraint on the image $I_{\rm sp}$, which localizes the point source to a small number of pixels; and (3) a new constraint, the point-source balance constraint, based on the pixel-wise product $I_{\rm sm} \times I_{\rm sp}$, which removes the point source from the host galaxy without over- or under-subtraction. As a test, we apply this algorithm to images of artificial and $z \sim 0-1$ real AGNs observed with Hyper Suprime-Cam on the Subaru Telescope. We find that the spatial resolution of the host-galaxy images is improved to a level comparable to that of images from the Hubble Space Telescope and that the bright central point sources are removed. This algorithm is expected to enable statistical morphological studies of distant AGN host galaxies when applied to wide-field survey data from the Vera C. Rubin Observatory, the Euclid Space Telescope, and the Roman Space Telescope.

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