班级平衡均值教师的无源域自适应眼底图像分割

Longxiang Tang, Kai Li, Chunming He, Yulun Zhang, Xiu Li
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引用次数: 3

摘要

本文研究了无源域自适应眼底图像分割,目的是利用无标记图像将预先训练好的眼底分割模型适应目标域。这是一项具有挑战性的任务,因为仅使用未标记的数据来调整模型是非常危险的。大多数现有方法主要通过设计技术来解决这个任务,从模型的预测中仔细生成伪标签,并使用伪标签来训练模型。虽然这些方法往往获得积极的适应效果,但它们存在两个主要问题。首先,它们往往相当不稳定——突然出现的不正确的伪标签可能会对模型造成灾难性的影响。其次,他们没有考虑眼底图像严重的类不平衡,其中前景(例如杯)区域通常非常小。本文旨在通过提出班级平衡平均教师(CBMT)模型来解决这两个问题。CBMT通过提出弱-强增广平均教师学习方案来解决不稳定问题,其中只有教师模型从弱增广图像生成伪标签来训练以强增广图像作为输入的学生模型。教师被更新为瞬时训练的学生的移动平均,这可能是嘈杂的。这可以防止教师模型突然受到不正确的伪标签的影响。针对类不平衡问题,CBMT提出了一种基于全局统计的损失校准方法来突出前景类。实验表明,CBMT很好地解决了这两个问题,并且在多个基准测试中优于现有方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Source-Free Domain Adaptive Fundus Image Segmentation with Class-Balanced Mean Teacher
This paper studies source-free domain adaptive fundus image segmentation which aims to adapt a pretrained fundus segmentation model to a target domain using unlabeled images. This is a challenging task because it is highly risky to adapt a model only using unlabeled data. Most existing methods tackle this task mainly by designing techniques to carefully generate pseudo labels from the model's predictions and use the pseudo labels to train the model. While often obtaining positive adaption effects, these methods suffer from two major issues. First, they tend to be fairly unstable - incorrect pseudo labels abruptly emerged may cause a catastrophic impact on the model. Second, they fail to consider the severe class imbalance of fundus images where the foreground (e.g., cup) region is usually very small. This paper aims to address these two issues by proposing the Class-Balanced Mean Teacher (CBMT) model. CBMT addresses the unstable issue by proposing a weak-strong augmented mean teacher learning scheme where only the teacher model generates pseudo labels from weakly augmented images to train a student model that takes strongly augmented images as input. The teacher is updated as the moving average of the instantly trained student, which could be noisy. This prevents the teacher model from being abruptly impacted by incorrect pseudo-labels. For the class imbalance issue, CBMT proposes a novel loss calibration approach to highlight foreground classes according to global statistics. Experiments show that CBMT well addresses these two issues and outperforms existing methods on multiple benchmarks.
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