Correlation-Aware Mutual Learning for Semi-supervised Medical Image Segmentation

Shengbo Gao, Zijia Zhang, Jiechao Ma, Zilong Li, Shu Zhang
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引用次数: 5

Abstract

Semi-supervised learning has become increasingly popular in medical image segmentation due to its ability to leverage large amounts of unlabeled data to extract additional information. However, most existing semi-supervised segmentation methods only focus on extracting information from unlabeled data, disregarding the potential of labeled data to further improve the performance of the model. In this paper, we propose a novel Correlation Aware Mutual Learning (CAML) framework that leverages labeled data to guide the extraction of information from unlabeled data. Our approach is based on a mutual learning strategy that incorporates two modules: the Cross-sample Mutual Attention Module (CMA) and the Omni-Correlation Consistency Module (OCC). The CMA module establishes dense cross-sample correlations among a group of samples, enabling the transfer of label prior knowledge to unlabeled data. The OCC module constructs omni-correlations between the unlabeled and labeled datasets and regularizes dual models by constraining the omni-correlation matrix of each sub-model to be consistent. Experiments on the Atrial Segmentation Challenge dataset demonstrate that our proposed approach outperforms state-of-the-art methods, highlighting the effectiveness of our framework in medical image segmentation tasks. The codes, pre-trained weights, and data are publicly available.
基于关联感知的半监督医学图像分割相互学习
半监督学习在医学图像分割中越来越受欢迎,因为它能够利用大量未标记的数据来提取额外的信息。然而,大多数现有的半监督分割方法只关注于从未标记的数据中提取信息,而忽略了标记数据进一步提高模型性能的潜力。在本文中,我们提出了一种新的关联感知互学习(CAML)框架,该框架利用标记数据来指导从未标记数据中提取信息。我们的方法基于相互学习策略,该策略包含两个模块:跨样本相互关注模块(CMA)和全相关一致性模块(OCC)。CMA模块在一组样本之间建立密集的跨样本相关性,使标签先验知识能够转移到未标记的数据。OCC模块在未标记和标记数据集之间构建全相关关系,并通过约束各子模型的全相关矩阵一致来正则化对偶模型。心房分割挑战数据集的实验表明,我们提出的方法优于最先进的方法,突出了我们的框架在医学图像分割任务中的有效性。代码、预训练的权重和数据都是公开的。
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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