Title: Convolution-based adaptive ResUNet3 + with attention-based ensemble convolution networks for COVID-19 segmentation and classification
Authors: S. Salini; B. SelvaPriya
Addresses: Department of Computer Science and Engineering, Agaram Main Rd., Selaiyur, Chennai, Tamil Nadu 600073, India ' Department of Computer Science and Engineering, Agaram Main Rd., Selaiyur, Chennai, Tamil Nadu 600073, India
Abstract: In 2018, residual U-shaped network (Res-UNet) and dense U-shaped network (Dense-UNet) were born based on the U-Net architecture. Inspired by dense and residual connections, respectively, Res-UNet and Dense-UNet substitute a kind of dense or residual connection for each U-Net sub-module. The community of artificial intelligence has produced a variety of deep learning models with the intention of recognising COVID-19 based on the visual features of chest X-rays. It is unfortunate that this is the case since constructing really deployable clinical models often requires segmentation as a crucial precursor step. Other applications in radiology typically need segmentation. It might be difficult to differentiate COVID-19 from other pulmonary disorders due to the fact that many lung diseases have similar visual characteristics with COVID-19. Using a segmentation module and an ensemble classifier, we have constructed our deep learning pipeline with the intention of assisting in the clarification of the diagnosis of individuals who are suspected of having COVID-19. Following the completion of an exhaustive comparison investigation, we are able to show that our most advantageous model is capable of effectively achieving an accuracy of 91% and a sensitivity of 92%.
Keywords: COVID-19 classification; visualisation check; dataset description.
DOI: 10.1504/IJIIDS.2026.150435
International Journal of Intelligent Information and Database Systems, 2026 Vol.18 No.1, pp.30 - 47
Received: 05 Mar 2024
Accepted: 04 Oct 2024
Published online: 13 Dec 2025 *