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A Two-Stage Special Feature Deep Fusion Network with Spatial Attention for Hippocampus Segmentation

机译:两阶段特殊功能深融网络,具有海马分割的空间关注

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This paper proposes a method for automatically segmenting the hippocampus by a two-stage special feature deep fusion network based on spatial attention. The method extracts specific features of different resolutions to supplement the image detail information which are important for semantic segmentation and are partially lost in the downsampling process. At the same time, the spatial attention mechanism is used to solve the imbalance between the hippocampus and the background. The verification results on the NITRC dataset show that the method has achieved higher quality hippocampal segmentation results than U-Net++.
机译:本文提出了一种基于空间关注的两阶段特色专题深融网络自动分割海马的方法。 该方法提取不同分辨率的特定特征,以补充对语义分割很重要的图像细节信息,并且在下采样过程中部分地丢失。 同时,空间注意机制用于解决海马与背景之间的不平衡。 NITRC数据集的验证结果表明,该方法已经实现了比U-Net ++更高的海马分段结果。

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