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Fusion of Medical Image Using STSVD

机译:使用STSVD融合医学图像

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摘要

The process of uniting medical images which are taken from different types of images to make them as one image is a Medical Image Fusion. This is performed to increase the image information content and also to reduce the randomness and redundancy which is used for clinical applicability. In this paper a new method called Shearlet Transform (ST) is applied on image by using the Singular Value Decomposition (SVD) to improve the information content of the images. Here two different images Positron Emission Tomography (PET) and Magnetic Resonance Imaging (MRI) are taken for fusing. Initially the ST is applied on the two input images, then for low frequency coefficients the SVD method is applied for fusing purpose and for high frequency coefficients different method is applied. Then fuse the low and high frequency coefficients. Then the Inverse Shearlet Transform (IST) is applied to rebuild the fused image. To carry out the experiments three benchmark images are used and are compared with the progressive techniques. The results show that the proposed method exceeds many progressive techniques.
机译:单位从不同类型图像中获取的医学图像的过程,使其成为一个图像是医学图像融合。这是为了增加图像信息内容,并还可以减少用于临床适用性的随机性和冗余。在本文中,通过使用奇异值分解(SVD)来改善图像的信息内容,在图像上施加一种名为Shearlet变换(ST)的新方法。这里考虑两个不同的图像正电子发射断层扫描(PET)和磁共振成像(MRI)被熔断。最初将ST应用于两个输入图像,然后对于低频系数,SVD方法被应用于融合目的,并且对于高频系数应用不同的方法。然后保险熔断低频系数和高频系数。然后应用逆剪切变换(IST)来重建融合图像。为了执行实验,使用三个基准图像并与渐进技术进行比较。结果表明,该方法超出了许多渐进技术。

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