基于PSNR和SSIM指标的脑MRI超分辨率神经网络模型比较方法

V. Gridin, A. Kiselev, V. Solodovnikov
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引用次数: 0

摘要

许多疾病的诊断在很大程度上要归功于MRI(磁共振成像)。这项技术可以研究病人的内部器官:大脑、脊柱、骨骼、关节、血管等。由于各种因素,MRI图像的分辨率受到限制:扫描过程中患者的运动,内部器官的持续运动。核磁共振成像图像的质量越高,扫描时间就越长。为了更准确的诊断,可以提高所得图像的分辨率。这是通过使用SISR(单图像超分辨率)算法实现的,该算法允许您从单个输入图像中获得具有更高分辨率的图像。本文提出了图像超分辨率算法的思想,给出了问题的各种形式和解决方法。描述了SISR算法的优点。此任务在医学MRI图像领域的相关性被解释。给出并描述了比较图像质量PSNR和SSIM的指标。给出了一个测试数据集。描述了数据准备阶段:从一组数据集中选择图像的原理,将数据转换成所需的格式,压缩图像以获得所选神经网络模型的输入数据。在同等准备的输入数据上测量了mDCSRN和FAWDN两种神经网络模型的PSNR和SSIM指标。比较结果以图像的形式呈现,整个样本的平均数据存储在表格中。
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Super-Resolution Neural Network Models Comparison Metod for Brain MRI Images Based on PSNR and SSIM Metrics
The diagnosis of many diseases is largely possible thanks to MRI(Magnetic Resonance Imaging). This technology allows to study internal organs of the patient: the brain, spine, bones, joints, vessels and etc. The resolution of the MRI image is limited due to various factors: movement of the patient during the scan, the continuous movement of internal organs. The higher the quality of the MRI image, the longer it takes to scan. For more accurate diagnostics it is possible to increase resolution of the yielded images. This is achieved by using SISR(Single Image Super Resolution) algorithms, which allow you to obtain images with increased resolution from a single input image. In this paper the idea of the image super-resolution algorithms is presented, various forms of the problem and solutions to it are provided. The advantages of the SISR algorithms are described. The relevance of this task in the field of medical MRI images is explained. Metrics for comparing image quality PSNR and SSIM are given and described. A dataset for testing is presented. The stage of data preparation is described: the principle of selecting images from a set of datasets, converting data into the required format, compressing images to obtain input data for selected neural network models. The PSNR, SSIM metrics of two neural network models mDCSRN and FAWDN are measured on equally prepared input data. The comparison results are presented in the form of images and averaged data for the entire sample is stored in the table.
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来源期刊
Radioelektronika, Nanosistemy, Informacionnye Tehnologii
Radioelektronika, Nanosistemy, Informacionnye Tehnologii Materials Science-Materials Science (miscellaneous)
CiteScore
0.60
自引率
0.00%
发文量
38
期刊介绍: Journal “Radioelectronics. Nanosystems. Information Technologies” (abbr RENSIT) publishes original articles, reviews and brief reports, not previously published, on topical problems in radioelectronics (including biomedical) and fundamentals of information, nano- and biotechnologies and adjacent areas of physics and mathematics. The authors of the journal are academicians, corresponding members and foreign members of the Russian Academy of Natural Sciences (RANS) and their colleagues, as well as other russian and foreign authors on the proposal of the members of RANS, which can be obtained by the author before sending articles to the editor or after its arrival on the recommendation of a member of the editorial board or another member of the RANS, who gave the opinion on the article at the request of the editior. The editors will accept articles in both Russian and English languages. Articles are internally peer reviewed (double-blind peer review) by members of the Editorial Board. Some articles undergo external review, if necessary. Designed for researchers, graduate students, physics students of senior courses and teachers. It turns out 2 times a year (that includes 2 rooms)
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