基于离散小波变换的医学图像多模态融合分析

Aynur Jabiyeva Aynur Jabiyeva
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引用次数: 0

摘要

医学图像融合是对一种或多种成像模式的不同部位进行注册和融合,以提高图像的价值,减少不确定性和顾虑,提高医学图像对临床意见或医疗评价的适用性。困难。多模态医学图像融合算法和设备在提高医学图像临床决策支持的准确性方面取得了显著的效果。主要目的是利用离散小波变换技术提高对医学图像的理解。DWT主要使用涉及平均像素的混合规则。将离散小波变换应用于医学图像融合中。核聚变功率是根据PSNR, MSE和总进展力矩计算的。结果表明,该融合方案在小波变换成像(MRI)和正电子产生层析成像(PET)上是成功的。MRI(磁共振成像)和PET(正电子发射断层扫描)的其他变体用于医学诊断。关键词:医学图像多模态融合,融合规则,磁征,PET。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MULTIMODAL FUSION ANALYSIS OF MEDICAL IMAGES BY DISCRETE WAVELET TRANSFORMATION
Medical image fusion is the development of registry and fusion of different pots of one or more imaging modalities in order to improve image value and reduce uncertainty and concern, to improve the applicability of the medical image for clinical opinion or the evaluation of medical care. difficulties. Multimodal medical image fusion algorithms and devices have achieved a remarkable result in improving the veracity of clinical decision support in medical images. The main objective is to improve the understanding of medical images using Discrete Wavelet Transform technology. DWT mainly uses blending rules involving the average pixel. Discrete wavelet transform has been implemented using fusion technology for medical image fusion. Fusion Power is calculated based on PSNR, MSE, and Total Progression Moment. The result demonstrates the success of the fusion scheme on wavelet transform imaging (MRI) and positron production tomography (PET). Other variants of MRI (magnetic resonance imaging) and PET (positron emission tomography) performed for medical diagnosis. Keywords: Multimodal fusion of medical images, fusion rules, magnetic signs,PET.
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