基于非局部pca混合模型的医用x射线泊松降噪

Q3 Computer Science 中国图象图形学报 Pub Date : 2023-06-01 DOI:10.18178/joig.11.2.178-184
Daniel Kipele, K. Greyson
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引用次数: 0

摘要

医用x射线图像中泊松噪声的存在会导致图像质量的下降。准确诊断需要模糊的信息。在x射线图像采集过程中,弱光导致可用光子数量有限,从而导致通常称为x射线噪声的泊松噪声。目前,现有的x射线去噪方法尚未获得令人满意的全去噪效果,以去除医学x射线图像中的噪声。当图像模型符合算法所使用的假设时,现有的技术往往表现出良好的性能,但通常情况下,去噪算法不能完全去噪。可以通过增加x射线剂量值(超过医学上允许的最大剂量)来改善x射线图像质量,但这一过程可能对患者的健康是致命的,因为较高的x射线能量可能会由于较高剂量值的影响而杀死细胞。本研究将泊松主成分分析(Poisson Principal Component Analysis, PCA)与非局部均值去噪算法相结合,建立了一种混合模型来降低图像中的噪声。这种x射线噪声去除和对比度增强的混合模型提高了x射线图像的质量,因此可以用于医学诊断。用标准数据对混合模型的性能进行了观察,并与标准泊松算法进行了比较。
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Poisson Noise Reduction with Nonlocal-PCA Hybrid Model in Medical X-ray Images
The presence of Poisson noise in medical X-ray images leads to degradation of the image quality. The obscured information is required for accurate diagnosis. During X-ray image acquisition process, weak light results into limited number of available photons, which leads into the Poisson noise commonly known as X-ray noise. Currently, the available X-ray noise removal methods have not yet obtained satisfying total denoising results to remove noise from the medical X-ray images. The available techniques tend to show good performance when the image model corresponds to the algorithm’s assumptions used but in general, the denoising algorithms fail to do complete denoise. X-ray image quality could be improved by increasing the X-ray dose value (beyond the maximum medically permissible dose) but the process could be lethal to patients’ health since higher X-ray energy may kill cells due to the effects of higher dose values. In this study, the hybrid model that combines the Poisson Principal Component Analysis (Poisson PCA) with the nonlocal (NL) means denoising algorithm is developed to reduce noise in images. This hybrid model for X-ray noise removal and the contrast enhancement improves the quality of X-ray images and can, thus, be used for medical diagnosis. The performance of the proposed hybrid model was observed by using the standard data and was compared with the standard Poisson algorithms.
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来源期刊
中国图象图形学报
中国图象图形学报 Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
1.20
自引率
0.00%
发文量
6776
期刊介绍: Journal of Image and Graphics (ISSN 1006-8961, CN 11-3758/TB, CODEN ZTTXFZ) is an authoritative academic journal supervised by the Chinese Academy of Sciences and co-sponsored by the Institute of Space and Astronautical Information Innovation of the Chinese Academy of Sciences (ISIAS), the Chinese Society of Image and Graphics (CSIG), and the Beijing Institute of Applied Physics and Computational Mathematics (BIAPM). The journal integrates high-tech theories, technical methods and industrialisation of applied research results in computer image graphics, and mainly publishes innovative and high-level scientific research papers on basic and applied research in image graphics science and its closely related fields. The form of papers includes reviews, technical reports, project progress, academic news, new technology reviews, new product introduction and industrialisation research. The content covers a wide range of fields such as image analysis and recognition, image understanding and computer vision, computer graphics, virtual reality and augmented reality, system simulation, animation, etc., and theme columns are opened according to the research hotspots and cutting-edge topics. Journal of Image and Graphics reaches a wide range of readers, including scientific and technical personnel, enterprise supervisors, and postgraduates and college students of colleges and universities engaged in the fields of national defence, military, aviation, aerospace, communications, electronics, automotive, agriculture, meteorology, environmental protection, remote sensing, mapping, oil field, construction, transportation, finance, telecommunications, education, medical care, film and television, and art. Journal of Image and Graphics is included in many important domestic and international scientific literature database systems, including EBSCO database in the United States, JST database in Japan, Scopus database in the Netherlands, China Science and Technology Thesis Statistics and Analysis (Annual Research Report), China Science Citation Database (CSCD), China Academic Journal Network Publishing Database (CAJD), and China Academic Journal Network Publishing Database (CAJD). China Science Citation Database (CSCD), China Academic Journals Network Publishing Database (CAJD), China Academic Journal Abstracts, Chinese Science Abstracts (Series A), China Electronic Science Abstracts, Chinese Core Journals Abstracts, Chinese Academic Journals on CD-ROM, and China Academic Journals Comprehensive Evaluation Database.
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