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A Densely Connected Network Based on U-Net for Medical Image Segmentation

机译:基于U-Net的医学图像分割的密集连接网络

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The U-Net has become the most popular structure in medical image segmentation in recent years. Although its performance for medical image segmentation is outstanding, a large number of experiments demonstrate that the classical U-Net network architecture seems to be insufficient when the size of segmentation targets changes and the imbalance happens between target and background in different forms of segmentation. To improve the U-Net network architecture, we develop a new architecture named densely connected U-Net (DenseUNet) network in this article. The proposed DenseUNet network adopts a dense block to improve the feature extraction capability and employs a multi-feature fuse block fusing feature maps of different levels to increase the accuracy of feature extraction. In addition, in view of the advantages of the cross entropy and the dice loss functions, a new loss function for the DenseUNet network is proposed to deal with the imbalance between target and background. Finally, we test the proposed DenseUNet network and compared it with the multi-resolutional U-Net (MultiResUNet) and the classic U-Net networks on three different datasets. The experimental results show that the DenseUNet network has significantly performances compared with the MultiResUNet and the classic U-Net networks.
机译:近年来,U-Net已成为医学图像细分中最受欢迎的结构。虽然其对医学图像分割的性能很高,但大量实验表明,当分割目标的大小发生变化时,经典U-Net网络架构似乎不足,并且在不同形式的分割之间的目标和背景之间发生不平衡。为了提高U-Net网络架构,我们在本文中开发了一个名为密集连接的U-Net(DENEDUNET)网络的新架构。所提出的DenedUnet网络采用密集块来改善特征提取能力,采用多个功能熔断器熔断功能图的不同级别,以提高特征提取的准确性。此外,鉴于交叉熵和骰子损耗功能的优点,提出了一种新的DENETUNET网络的损失功能,以处理目标和背景之间的不平衡。最后,我们测试提出的DenedUnet网络,并将其与多分辨率U-Net(MultiLueUnet)和三个不同数据集上的经典U-Net网络进行比较。实验结果表明,与多路线和经典U-Net网络相比,DeneteNet网络具有显着性能。

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