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A Fusion Algorithm: Fully Convolutional Networks and Student'S-$T$Mixture Model for Brain Magnetic Resonance Imaging Segmentation

机译:融合算法:全卷积网络和学生S- $ T $ 混合模型用于脑磁共振成像分割

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Deep convolutional neural networks (DCNN) are applied widely in image recognition and segmentation. In this paper, a novel algorithm (U-SMM) which incorporates the convolutional neural network U-net and modified Student's-$t$mixture model (MSMM) is provided. The proposed framework considers the spatial relationships in segmenting medical images with MSMM and then uses U-net to correct the mistake labels made by unsupervised method. Because a few error-segmented regions may be caused by MSMM, the U-net is then applied to learn the features of these regions. In our method, the purpose of U-net is to assist the MSMM in improving the accuracy of segmentation and acquiring rich details in image segmentation tasks. Finally, the proposed framework is evaluated on real MR images with several related supervised and unsupervised methods, and the experimental results confirm the effectiveness of our approach.
机译:深度卷积神经网络(DCNN)在图像识别和分割中得到了广泛的应用。本文提出了一种新颖的算法(U-SMM),该算法结合了卷积神经网络U-net和改进的Student's- $ t $ 提供了混合模型(MSMM)。提出的框架考虑了用MSMM分割医学图像时的空间关系,然后使用U-net校正无监督方法制作的错误标签。由于MSMM可能会导致一些错误分段区域,因此应用U-net来了解这些区域的特征。在我们的方法中,U-net的目的是协助MSMM提高分割的准确性并获取图像分割任务中的丰富细节。最后,通过几种相关的有监督和无监督的方法,在真实的MR图像上对提出的框架进行了评估,实验结果证实了该方法的有效性。

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