SegNetr: Rethinking the local-global interactions and skip connections in U-shaped networks

Junlong Cheng, Chengrui Gao, Fengjie Wang, Min Zhu
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引用次数: 1

Abstract

Recently, U-shaped networks have dominated the field of medical image segmentation due to their simple and easily tuned structure. However, existing U-shaped segmentation networks: 1) mostly focus on designing complex self-attention modules to compensate for the lack of long-term dependence based on convolution operation, which increases the overall number of parameters and computational complexity of the network; 2) simply fuse the features of encoder and decoder, ignoring the connection between their spatial locations. In this paper, we rethink the above problem and build a lightweight medical image segmentation network, called SegNetr. Specifically, we introduce a novel SegNetr block that can perform local-global interactions dynamically at any stage and with only linear complexity. At the same time, we design a general information retention skip connection (IRSC) to preserve the spatial location information of encoder features and achieve accurate fusion with the decoder features. We validate the effectiveness of SegNetr on four mainstream medical image segmentation datasets, with 59\% and 76\% fewer parameters and GFLOPs than vanilla U-Net, while achieving segmentation performance comparable to state-of-the-art methods. Notably, the components proposed in this paper can be applied to other U-shaped networks to improve their segmentation performance.
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SegNetr:重新思考u型网络中的局部-全局交互和跳过连接
近年来,u型网络以其结构简单、易于调整等优点在医学图像分割领域占据主导地位。然而,现有的u型分割网络:1)多侧重于设计复杂的自关注模块,以弥补基于卷积运算的长期依赖性不足,这增加了网络的整体参数数量和计算复杂度;2)简单地融合编码器和解码器的特征,忽略它们空间位置之间的联系。在本文中,我们重新思考上述问题,并构建了一个轻量级的医学图像分割网络,称为SegNetr。具体来说,我们引入了一个新的SegNetr块,它可以在任何阶段动态地执行局部全局交互,并且只有线性复杂性。同时,设计了通用信息保留跳线连接(IRSC),保留了编码器特征的空间位置信息,实现了与解码器特征的精确融合。我们在四种主流医学图像分割数据集上验证了SegNetr的有效性,与普通U-Net相比,其参数和GFLOPs分别减少了59%和76%,同时实现了与最先进方法相当的分割性能。值得注意的是,本文提出的组件可以应用于其他u型网络,以提高其分割性能。
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