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MRI image segmentation via neural network fusion

机译:神经网络融合MRI图像分割

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We employ an artificial neural network to fuse a triplet of "multi-spectral" brain images from a magnetic resonance imaging systme into a segmented image. The pixel values for the same pixel location from each of T1, T2 and PD images of the same slice of a given brain scan are input to a neural network for training. The three output components each take high for low values to form codewords for different graphyscale classes. Eighty pixel locations from each class are sampled as triplets (T1,T2,PD) and used for backpropagation training. Then the network maps each novel triplet into an output codeword that represnets one of the 6 class grayscales and that grayscale is put into that pixel location in the output image. Othe rresearchers have mapped triplets of representative values, e.g., of medians over small blocks, but this has the effect of oversmoothing and blurring the segmented regions. Our method appears to be more practical.
机译:我们采用人工神经网络从磁共振成像系统中熔化一个“多光谱”脑图像的三重态度,进入分段图像。来自给定脑扫描的相同切片的T1,T2和PD图像中的每一个的相同像素位置的像素值被输入到神经网络以进行训练。三个输出组件每个都能为低值取高,以形成不同的石墨座类的码字。每个类的八十个像素位置被采样为三联网(T1,T2,PD)并用于背部训练。然后,网络将每个新颖三元组映射到输出码字中,该输出码字使6类灰度级中的一个,并且将灰度放入输出图像中的该像素位置。 OTHE RRESearchers已经映射了代表价值的三胞胎,例如小块中的中位数,但这具有过度的效果和模糊分段地区的效果。我们的方法似乎更加实用。

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