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CompareNet: Anatomical Segmentation Network with Deep Non-local Label Fusion

机译:比较:具有深度非本地标签融合的解剖分割网络

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Label propagation is a popular technique for anatomical segmentation. In this work, we propose a novel deep framework for label propagation based on non-local label fusion. Our framework, named CompareNet, incorporates subnets for both extracting discriminating features, and learning the similarity measure, which lead to accurate segmentation. We also introduce the voxel-wise classification as an unary potential to the label fusion function, for alleviating the search failure issue of the existing non-local fusion strategies. Moreover, CompareNet is end-to-end trainable, and all the parameters are learnt together for the optimal performance. By evaluating CompareNet on two public datasets IBSRv2 and MICCAI 2012 for brain segmentation, we show it outperforms state-of-the-art methods in accuracy, while being robust to pathologies.
机译:标签传播是解剖分割的流行技术。在这项工作中,我们提出了一种基于非本地标签融合的标签传播的新颖框架。我们的框架命名比较,包括提取识别特征的子网,并学习相似度测量,这导致了准确的分割。我们还将Voxel-Wise分类引入标签融合功能的一定潜力,以减轻现有非本地融合策略的搜索失败问题。此外,比较是端到端的培训,所有参数都在一起学习,以实现最佳性能。通过在两个公共数据集IBSRv2和Miccai 2012上评估比较进行大脑分割,我们表明它以准确性更优先于最先进的方法,同时对病理鲁棒。

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