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A novel medical image fusion with lαβ color transformation

机译:具有Lαβ色彩变换的新型医学图像融合

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For clinical application, the medical images play a vital role. The various multimodal medical images like MRI(magnetic resonance imaging), CT(computed tomography), PET(positron emission tomography), SPECT(single photon emission computed tomography) etc., represent various functional information of the body. The purpose of the proposed work is to acquire more information of the various clinical multi modal images in single image with good visual perception and more quality (called process of fusion). This paper proposes a novel image fusion with new color transformation. Non Subsampled Contourlet Transform (NSCT) is used in this work. At first, one of the RGB color images is transformed into lαβ color model. Later NSCT is applied on source images to obtain low & high frequency coefficients. Here, low frequency coefficients are processed using phase congruency model and high frequency coefficients are processed using Sum modified laplacian (SML) based directive contrast model. At last, the proposed method is compared with existing method [14]. The effectiveness of proposed method is is applied for assessing using various performance measures like normalized mutual information and structural similarities metrics.
机译:对于临床应用,医学图像起着至关重要的作用。像MRI(磁共振成像),CT(计算断层扫描),PET(正电子发射断层扫描),SPECT(单光子发射电压计算断层扫描)等的各种多模式医学图像代表了身体的各种功能信息。拟议工作的目的是在单个图像中获取更多临床多模态图像的信息,具有良好的视觉感知和更高的质量(称为融合过程)。本文提出了一种新型颜色转换的新型图像融合。在这项工作中使用未分配的Contourlet变换(NSCT)。首先,将一个RGB彩色图像转换为Lαβ颜色模型。后面的NSCT应用于源图像以获得低和高频系数。这里,使用相加模型处理低频系数,并且使用基于和基于SUM修改的拉普拉斯(SML)的指令对比度模型处理高频系数。最后,将所提出的方法与现有方法进行比较[14]。所提出的方法的有效性适用于使用各种性能测量来评估,如标准化的相互信息和结构相似度指标。

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