Author:
Song Liyao,Wang Quan,Liu Ting,Li Haiwei,Fan Jiancun,Yang Jian,Hu Bingliang
Abstract
AbstractSpatial resolution is a key factor of quantitatively evaluating the quality of magnetic resonance imagery (MRI). Super-resolution (SR) approaches can improve its spatial resolution by reconstructing high-resolution (HR) images from low-resolution (LR) ones to meet clinical and scientific requirements. To increase the quality of brain MRI, we study a robust residual-learning SR network (RRLSRN) to generate a sharp HR brain image from an LR input. Due to the Charbonnier loss can handle outliers well, and Gradient Difference Loss (GDL) can sharpen an image, we combined the Charbonnier loss and GDL to improve the robustness of the model and enhance the texture information of SR results. Two MRI datasets of adult brain, Kirby 21 and NAMIC, were used to train and verify the effectiveness of our model. To further verify the generalizability and robustness of the proposed model, we collected eight clinical fetal brain MRI 2D data for evaluation. The experimental results have shown that the proposed deep residual-learning network achieved superior performance and high efficiency over other compared methods.
Funder
Research Foundation of Key laboratory of Biomedical Spectroscopy of Xi'an
Autonomous Deployment Project of Xi’an Institute of Optics and Precision Mechanics of Chinese Academy of Sciences
Natural Science Foundation of China
Natural Science Foundation of Shaanxi Province
the Open Research Fund of National Earth Observation Data Center
Publisher
Springer Science and Business Media LLC
Cited by
9 articles.
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