Litcius/Paper detail

Subspace Model-Assisted Deep Learning for Improved Image Reconstruction

Yue Guan, Yudu Li, Ruihao Liu, Ziyu Meng, Yao Li, Leslie Ying, Yiping P. Du, Zhi‐Pei Liang

2023IEEE Transactions on Medical Imaging10 citationsDOI

Abstract

Image reconstruction from limited and/or sparse data is known to be an ill-posed problem and a priori information/constraints have played an important role in solving the problem. Early constrained image reconstruction methods utilize image priors based on general image properties such as sparsity, low-rank structures, spatial support bound, etc. Recent deep learning-based reconstruction methods promise to produce even higher quality reconstructions by utilizing more specific image priors learned from training data. However, learning high-dimensional image priors requires huge amounts of training data that are currently not available in medical imaging applications. As a result, deep learning-based reconstructions often suffer from two known practical issues: a) sensitivity to data perturbations (e.g., changes in data sampling scheme), and b) limited generalization capability (e.g., biased reconstruction of lesions). This paper proposes a new method to address these issues. The proposed method synergistically integrates model-based and data-driven learning in three key components. The first component uses the linear vector space framework to capture global dependence of image features; the second exploits a deep network to learn the mapping from a linear vector space to a nonlinear manifold; the third is an unrolling-based deep network that captures local residual features with the aid of a sparsity model. The proposed method has been evaluated with magnetic resonance imaging data, demonstrating improved reconstruction in the presence of data perturbation and/or novel image features. The method may enhance the practical utility of deep learning-based image reconstruction.

Topics & Concepts

Artificial intelligencePrior probabilityIterative reconstructionComputer scienceDeep learningSubspace topologyInpaintingImage restorationPattern recognition (psychology)A priori and a posterioriComputer visionImage (mathematics)Image processingBayesian probabilityPhilosophyEpistemologyMedical Imaging Techniques and ApplicationsRadiomics and Machine Learning in Medical ImagingAdvanced X-ray and CT Imaging