SelfReg-UNet: Self-Regularized UNet for Medical Image Segmentation.

Wenhui Zhu, Xiwen Chen, Peijie Qiu, Mohammad Farazi, Aristeidis Sotiras, Abolfazl Razi, Yalin Wang
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Abstract

Since its introduction, UNet has been leading a variety of medical image segmentation tasks. Although numerous follow-up studies have also been dedicated to improving the performance of standard UNet, few have conducted in-depth analyses of the underlying interest pattern of UNet in medical image segmentation. In this paper, we explore the patterns learned in a UNet and observe two important factors that potentially affect its performance: (i) irrelative feature learned caused by asymmetric supervision; (ii) feature redundancy in the feature map. To this end, we propose to balance the supervision between encoder and decoder and reduce the redundant information in the UNet. Specifically, we use the feature map that contains the most semantic information (i.e., the last layer of the decoder) to provide additional supervision to other blocks to provide additional supervision and reduce feature redundancy by leveraging feature distillation. The proposed method can be easily integrated into existing UNet architecture in a plug-and-play fashion with negligible computational cost. The experimental results suggest that the proposed method consistently improves the performance of standard UNets on four medical image segmentation datasets. The code is available at https://github.com/ChongQingNoSubway/SelfReg-UNet.

selfregg -UNet:用于医学图像分割的自正则化UNet。
自推出以来,UNet一直引领着各种医学图像分割任务。尽管许多后续研究也致力于提高标准UNet的性能,但很少有深入分析UNet在医学图像分割中的潜在兴趣模式。在本文中,我们探讨了在UNet中学习的模式,并观察了可能影响其性能的两个重要因素:(i)不对称监督导致的学习不相关特征;(ii)特征映射中的特征冗余。为此,我们提出平衡编码器和解码器之间的监督,减少UNet中的冗余信息。具体来说,我们使用包含最多语义信息的特征映射(即解码器的最后一层)来为其他块提供额外的监督,从而通过利用特征蒸馏来提供额外的监督并减少特征冗余。所提出的方法可以很容易地以即插即用的方式集成到现有的UNet体系结构中,计算成本可以忽略不计。实验结果表明,该方法在四种医学图像分割数据集上均能提高标准UNets的性能。代码可在https://github.com/ChongQingNoSubway/SelfReg-UNet上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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