Zhong Xinyi, Liang Ningning, Cai Ailong, Yu Xiaohuan, Li Lei, Yan Bin
Henan Key Laboratory of Imaging and Intelligent Processing, PLA Strategy Support Force Information Engineering University, Zhengzhou, Henan, China.
J Xray Sci Technol. 2023;31(2):319-336. doi: 10.3233/XST-221299.
Computed tomography (CT) plays an important role in the field of non-destructive testing. However, conventional CT images often have blurred edge and unclear texture, which is not conducive to the follow-up medical diagnosis and industrial testing work.
This study aims to generate high-resolution CT images using a new CT super-resolution reconstruction method combining with the sparsity regularization and deep learning prior.
The new method reconstructs CT images through a reconstruction model incorporating image gradient L0-norm minimization and deep image priors using a plug-and-play super-resolution framework. The deep learning priors are learned from a deep residual network and then plugged into the proposed new framework, and alternating direction method of multipliers is utilized to optimize the iterative solution of the model.
The simulation data analysis results show that the new method improves the signal-to-noise ratio (PSNR) by 7% and the modulation transfer function (MTF) curves show that the value of MTF50 increases by 0.02 factors compared with the result of deep plug-and-play super-resolution. Additionally, the real CT image data analysis results show that the new method improves the PSNR by 5.1% and MTF50 by 0.11 factors.
Both simulation and real data experiments prove that the proposed new CT super-resolution method using deep learning priors can reconstruct CT images with lower noise and better detail recovery. This method is flexible, effective and extensive for low-resolution CT image super-resolution.
计算机断层扫描(CT)在无损检测领域发挥着重要作用。然而,传统CT图像往往边缘模糊、纹理不清,不利于后续的医学诊断和工业检测工作。
本研究旨在结合稀疏正则化和深度学习先验知识,采用一种新的CT超分辨率重建方法生成高分辨率CT图像。
该新方法通过一个重建模型来重建CT图像,该模型使用即插即用超分辨率框架,结合图像梯度L0范数最小化和深度图像先验知识。深度学习先验知识从深度残差网络中学习,然后插入到所提出的新框架中,并利用交替方向乘子法优化模型的迭代解。
模拟数据分析结果表明,与深度即插即用超分辨率结果相比,新方法的信噪比(PSNR)提高了7%,调制传递函数(MTF)曲线显示MTF50的值增加了0.02倍。此外,真实CT图像数据分析结果表明,新方法的PSNR提高了5.1%,MTF50提高了0.11倍。
模拟和真实数据实验均证明,所提出的利用深度学习先验知识的新CT超分辨率方法能够重建出噪声更低、细节恢复更好的CT图像。该方法对于低分辨率CT图像超分辨率具有灵活性、有效性和广泛性。