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谱学习在高分辨率层析重建中的应用。

Spectrum learning for super-resolution tomographic reconstruction.

机构信息

The School of Biomedical Engineering, Shenzhen Campus of Sun Yat-sen University, Guangdong, People's Republic of China.

The Key Laboratory of Optoelectronic Technology and Systems, ICT Research Center, Ministry of Education, Chongqing University, Chongqing, People's Republic of China.

出版信息

Phys Med Biol. 2024 Apr 2;69(8). doi: 10.1088/1361-6560/ad2a94.

Abstract

. Computed Tomography (CT) has been widely used in industrial high-resolution non-destructive testing. However, it is difficult to obtain high-resolution images for large-scale objects due to their physical limitations. The objective is to develop an improved super-resolution technique that preserves small structures and details while efficiently capturing high-frequency information.. The study proposes a new deep learning based method called spectrum learning (SPEAR) network for CT images super-resolution. This approach leverages both global information in the image domain and high-frequency information in the frequency domain. The SPEAR network is designed to reconstruct high-resolution images from low-resolution inputs by considering not only the main body of the images but also the small structures and other details. The symmetric property of the spectrum is exploited to reduce weight parameters in the frequency domain. Additionally, a spectrum loss is introduced to enforce the preservation of both high-frequency components and global information.. The network is trained using pairs of low-resolution and high-resolution CT images, and it is fine-tuned using additional low-dose and normal-dose CT image pairs. The experimental results demonstrate that the proposed SPEAR network outperforms state-of-the-art networks in terms of image reconstruction quality. The approach successfully preserves high-frequency information and small structures, leading to better results compared to existing methods. The network's ability to generate high-resolution images from low-resolution inputs, even in cases of low-dose CT images, showcases its effectiveness in maintaining image quality.. The proposed SPEAR network's ability to simultaneously capture global information and high-frequency details addresses the limitations of existing methods, resulting in more accurate and informative image reconstructions. This advancement can have substantial implications for various industries and medical diagnoses relying on accurate imaging.

摘要

. 计算机断层扫描(CT)已广泛应用于工业高分辨率无损检测。然而,由于物理限制,对于大型物体很难获得高分辨率图像。目标是开发一种改进的超分辨率技术,在有效捕获高频信息的同时,保留小结构和细节。.. 本研究提出了一种新的基于深度学习的方法,称为谱学习(SPEAR)网络,用于 CT 图像超分辨率。该方法利用图像域中的全局信息和频域中的高频信息。SPEAR 网络旨在通过考虑图像的主体以及小结构和其他细节,从低分辨率输入重建高分辨率图像。利用谱的对称性质来减少频域中的权重参数。此外,引入了谱损失以强制保留高频分量和全局信息。.. 该网络使用低分辨率和高分辨率 CT 图像对进行训练,并使用额外的低剂量和正常剂量 CT 图像对进行微调。实验结果表明,所提出的 SPEAR 网络在图像重建质量方面优于最先进的网络。该方法成功地保留了高频信息和小结构,与现有方法相比,结果更好。该网络从低分辨率输入生成高分辨率图像的能力,即使在低剂量 CT 图像的情况下,也展示了其在保持图像质量方面的有效性。.. 所提出的 SPEAR 网络同时捕捉全局信息和高频细节的能力解决了现有方法的局限性,导致更准确和信息丰富的图像重建。这一进展可以对依赖准确成像的各种行业和医学诊断产生重大影响。

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