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LEARN++: Recurrent Dual-Domain Reconstruction Network for Compressed Sensing CT

Yi Zhang, Hu Chen, Wenjun Xia, Yang Chen, Baodong Liu, Yan Liu, Huaiqiang Sun, Jiliu Zhou

2022IEEE Transactions on Radiation and Plasma Medical Sciences55 citationsDOI

Abstract

Compressed sensing (CS) computed tomography (CT) has been proven to be important for several clinical applications, such as sparse-view CT, digital tomosynthesis, and interior tomography. Traditional CS focuses on the design of handcrafted prior regularizers, which are usually image-dependent and time-consuming. Inspired by recently proposed deep learning-based CT reconstruction models, we extend the state-of-the-art LEARN model to a dual-domain version, dubbed LEARN++. Different from existing iteration unrolling methods, which only involve projection data in the data consistency layer, the proposed LEARN++ model integrates two parallel and interactive subnetworks to perform image restoration and sinogram inpainting operations on both the image and projection domains simultaneously, which can fully explore the latent relations between projection data and reconstructed images. The experimental results demonstrate that the proposed LEARN++ model achieves competitive qualitative and quantitative results compared to several state-of-the-art methods in terms of both artifact reduction and detail preservation.

Topics & Concepts

InpaintingComputer scienceArtificial intelligenceProjection (relational algebra)TomosynthesisIterative reconstructionComputer visionDomain (mathematical analysis)Compressed sensingImage (mathematics)Consistency (knowledge bases)Deep learningArtifact (error)Property (philosophy)Pattern recognition (psychology)AlgorithmMathematicsCancerBreast cancerMedicinePhilosophyMammographyMathematical analysisInternal medicineEpistemologyMedical Imaging Techniques and ApplicationsAdvanced MRI Techniques and ApplicationsAdvanced X-ray and CT Imaging