论文标题
半监督语义分割的无偏见
Unbiased Subclass Regularization for Semi-Supervised Semantic Segmentation
论文作者
论文摘要
半监督的语义分割从少量标记的图像和大量未标记的图像中学习,这在最近深层神经网络的最新发展中见证了令人印象深刻的进步。但是,在探索未标记的图像时,它通常会遭受严重的类偏见问题,这主要是由于标记图像中明显的像素类失衡。本文提出了一个无偏的子类正则化网络(USRN),该网络通过从平衡的亚类分布中学习阶级的分段来减轻类不平衡问题。我们通过将每个原始类的像素聚类为相似尺寸的多个子类,从而构建平衡的子类分布,从而提供了级别平衡的伪监督以正规化类偏置的分段。此外,我们设计了一种基于熵的栅极机制,以协调原始类和聚类的子类之间的学习,从而通过抑制不信任的亚班级预测有效地促进了子类正则化。对多个公共基准测试的广泛实验表明,与最先进的情况相比,USRN取得了出色的性能。
Semi-supervised semantic segmentation learns from small amounts of labelled images and large amounts of unlabelled images, which has witnessed impressive progress with the recent advance of deep neural networks. However, it often suffers from severe class-bias problem while exploring the unlabelled images, largely due to the clear pixel-wise class imbalance in the labelled images. This paper presents an unbiased subclass regularization network (USRN) that alleviates the class imbalance issue by learning class-unbiased segmentation from balanced subclass distributions. We build the balanced subclass distributions by clustering pixels of each original class into multiple subclasses of similar sizes, which provide class-balanced pseudo supervision to regularize the class-biased segmentation. In addition, we design an entropy-based gate mechanism to coordinate learning between the original classes and the clustered subclasses which facilitates subclass regularization effectively by suppressing unconfident subclass predictions. Extensive experiments over multiple public benchmarks show that USRN achieves superior performance as compared with the state-of-the-art.