Mutual learning with reliable pseudo label for semi-supervised medical image segmentation

人工智能 分割 计算机科学 模式识别(心理学) 子网 图像(数学) 正规化(语言学) 监督学习 注释 一致性(知识库) 可靠性(半导体) 相似性(几何) 班级(哲学) 机器学习 人工神经网络 量子力学 物理 功率(物理) 计算机安全
作者
Jiawei Su,Zhiming Luo,Sheng Lian,Dazhen Lin,Shaozi Li
出处
期刊:Medical Image Analysis [Elsevier]
卷期号:94: 103111-103111 被引量:89
标识
DOI:10.1016/j.media.2024.103111
摘要

Semi-supervised learning has garnered significant interest as a method to alleviate the burden of data annotation. Recently, semi-supervised medical image segmentation has garnered significant interest that can alleviate the burden of densely annotated data. Substantial advancements have been achieved by integrating consistency-regularization and pseudo-labeling techniques. The quality of the pseudo-labels is crucial in this regard. Unreliable pseudo-labeling can result in the introduction of noise, leading the model to converge to suboptimal solutions. To address this issue, we propose learning from reliable pseudo-labels. In this paper, we tackle two critical questions in learning from reliable pseudo-labels: which pseudo-labels are reliable and how reliable are they? Specifically, we conduct a comparative analysis of two subnetworks to address both challenges. Initially, we compare the prediction confidence of the two subnetworks. A higher confidence score indicates a more reliable pseudo-label. Subsequently, we utilize intra-class similarity to assess the reliability of the pseudo-labels to address the second challenge. The greater the intra-class similarity of the predicted classes, the more reliable the pseudo-label. The subnetwork selectively incorporates knowledge imparted by the other subnetwork model, contingent on the reliability of the pseudo labels. By reducing the introduction of noise from unreliable pseudo-labels, we are able to improve the performance of segmentation. To demonstrate the superiority of our approach, we conducted an extensive set of experiments on three datasets: Left Atrium, Pancreas-CT and Brats-2019. The experimental results demonstrate that our approach achieves state-of-the-art performance. Code is available at: https://github.com/Jiawei0o0/mutual-learning-with-reliable-pseudo-labels.
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