Multi Modal Medical Image Fusion using Convolution Neural Network

Maneesha P, Tripty Singh, Ravi C. Nayar, Shiv Kumar
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引用次数: 9

Abstract

Medical image fusion have very important rolefor disease diagnosis and medical image analysis.An application to get complementary information from multiple images of different modalities. It is extensively used to combineinfor-mation from multiple images into single image with good accuracy. In our paper multimodal medical image fusion based on convolutional nueral network(CNN) is proposed. In this method a CNN model is created which will contain the pixel activity information of the input images. Image is decomposed into highly matching and low matching and separatefusion method is applied to both type of images. Beside this main important factor is to reduce noise because noise will affect the pixel intensities.so we will implement a new method to reduce noise in this manner. This method is to combine affected pixels of different images we are going to fuse. Different affected images will undergo an test for checking whether it is having noise or not. Then effected image will undergo a filtering algorithmtogetnoiselessimageforprovidingmoreclarity.
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基于卷积神经网络的多模态医学图像融合
医学图像融合在疾病诊断和医学图像分析中具有十分重要的作用。从不同模态的多个图像中获取互补信息的应用程序。它被广泛用于将多幅图像的信息组合成一幅图像,并且精度很高。本文提出了一种基于卷积神经网络(CNN)的多模态医学图像融合方法。该方法创建一个CNN模型,该模型将包含输入图像的像素活动信息。将图像分解为高匹配图像和低匹配图像,并对这两类图像分别应用分离融合方法。除此之外,主要的重要因素是降低噪声,因为噪声会影响像素强度。因此,我们将采用这种方法实现一种新的降噪方法。这种方法是将我们要融合的不同图像的受影响像素组合在一起。不同的受影响的图像将进行测试,以检查是否有噪声。然后,受影响的图像将与无噪声图像一起进行滤波算法,以提供更高的清晰度。
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