Quantifying Radio Source Morphology
Lachlan J. Barnes, Andrew M. Hopkins, Lawrence Rudnick, Heinz Andernach, Michael Cowley, Nikhel Gupta, Ray P. Norris, Stanislav S. Shabala, Tayyaba Zafar

TL;DR
This paper introduces a set of algorithmic metrics to quantitatively analyze radio galaxy morphology, enabling automatic classification and robust analysis of large radio survey datasets.
Contribution
It develops intuitive, robust metrics inspired by FR morphology differences, applicable to large datasets for automatic radio source classification.
Findings
Metrics are robust to resolution changes.
Metrics effectively distinguish structural components.
Probabilistic combinations recover FR classifications.
Abstract
The advent of next-generation telescope facilities brings with it an unprecedented amount of data, and the demand for effective tools to process and classify this information has become increasingly important. This work proposes a novel approach to quantify the radio galaxy morphology, through the development of a series of algorithmic metrics that can quantitatively describe the structure of radio source, and can be applied to radio images in an automatic way. These metrics are intuitive in nature and are inspired by the intrinsic structural differences observed between the existing Fanaroff-Riley (FR) morphology types. The metrics are defined in categories of asymmetry, blurriness, concentration, disorder, and elongation (/single-lobe metrics), as well as the asymmetry and angle between lobes (source metrics). We apply these metrics to a sample of sources from the…
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