{"ID":2850233,"CreatedAt":"2026-06-01T04:54:23.091178241Z","UpdatedAt":"2026-06-01T04:54:23.091178241Z","DeletedAt":null,"paper_url":"https://arxiv.org/abs/2510.22190","arxiv_id":"2510.22190","title":"RGC: a radio AGN classifier based on deep learning. I. A semi-supervised multiclass model for VLA images","abstract":"Bent radio active galactic nuclei (RAGNs) -- wide-angle tails (WATs) and narrow-angle tails (NATs) -- trace dense environments in galaxy groups and clusters, yet no multiclass classifier simultaneously separates them from straight Fanaroff--Riley types (sFRI, sFRII) using visually inspected labels and unlabelled data. We release FIRST-2060, a four-class labelled dataset of 2060 RAGNs (sFRI, sFRII, WAT, NAT) constructed from three publicly available catalogues through multi-tier visual inspection, together with the semi-supervised RGC 1.0 model that leverages 20,000 unlabelled sources. We benchmark RGC against five supervised baselines. FIRST-2060 is provided in two preprocessing variants: $\\mathbf{R}_{L1}$, which retains spurious sources, and $\\mathbf{R}_{L2}$, from which they are removed. The RGC model integrates the self-supervised framework BYOL (Bootstrap Your Own Latent) with an $E(2)$-equivariant steerable CNN (E2CNN) encoder, pre-trained on the unlabelled data and fine-tuned on the labelled sets. All six models are evaluated with 5-fold cross-validation, Grad-CAM attention analysis, and controlled class-imbalance experiments. ConvNeXT ($M_1$) and RGC ($M_2$) form a top tier at macro-$F_1$ $0.80\\pm0.02$ and $0.79\\pm0.02$ respectively, a difference within one standard deviation. $M_2$ is the only model whose Grad-CAM contours consistently trace the morphological structure of RAGNs -- lobes, jets, and bends -- rather than defaulting to compact blobs or diffuse patterns. The four-class scheme introduced here enables WAT/NAT-resolved catalogues that can serve as environment probes and progenitor classifications for diffuse cluster radio emission. The complementary strengths of $M_1$ and $M_2$ -- in cross-type and within-type discrimination respectively -- suggest that an ensemble approach may offer a practical framework for survey-scale morphological catalogues.","short_abstract":"Bent radio active galactic nuclei (RAGNs) -- wide-angle tails (WATs) and narrow-angle tails (NATs) -- trace dense environments in galaxy groups and clusters, yet no multiclass classifier simultaneously separates them from straight Fanaroff--Riley types (sFRI, sFRII) using visually inspected labels and unlabelled data....","url_abs":"https://arxiv.org/abs/2510.22190","url_pdf":"https://arxiv.org/pdf/2510.22190v2","authors":"[\"M. S. Hossain\",\"M. S. H. Shahal\",\"K. M. B. Asad\",\"P. Saikia\",\"A. Khan\",\"F. Akter\",\"A. Ali\",\"M. A. Amin\",\"D. P. Guha\",\"M. O. B. Jihad\",\"A. Momen\",\"S. Sen\",\"A. K. M. M. Rahman\"]","published":"2025-10-25T06:55:29Z","proceeding":"astro-ph.IM","tasks":"[\"astro-ph.IM\",\"astro-ph.CO\",\"cs.LG\"]","methods":"[\"Convolutional Neural Network\"]","has_code":false}
