AUTO-MULTITHRESH: A General Purpose Automasking Algorithm
Amanda A. Kepley, Takahiro Tsutsumi, Crystal L. Brogan, Remy, Indebetouw, Ilsang Yoon, Brian Mason, Jennifer Donovan Meyer

TL;DR
AUTO-MULTITHRESH is an automated masking algorithm integrated into CLEAN, designed to efficiently produce masks for interferometric images, enabling scalable and accurate imaging for large datasets like those from ALMA.
Contribution
It introduces a general-purpose automated masking algorithm that operates within CLEAN, validated on diverse ALMA images, and adaptable to other interferometers.
Findings
Successfully masks a wide range of emission types
Operates with minimal parameter tuning
Integrated into ALMA imaging pipeline
Abstract
Producing images from interferometer data requires accurate modeling of the sources in the field of view, which is typically done using the CLEAN algorithm. Given the large number of degrees of freedom in interferometeric images, one constrains the possible model solutions for CLEAN by masking regions that contain emission. Traditionally this process has largely been done by hand. This approach is not possible with today's large data volumes which require automated imaging pipelines. This paper describes an automated masking algorithm that operates within CLEAN called AUTO-MULTITHRESH. This algorithm was developed and validated using a set of ~1000 ALMA images chosen to span a range of intrinsic morphology and data characteristics. It takes a top-down approach to producing masks: it uses the residual images to identify significant peaks and then expands the mask to include emission…
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