混合双头部满足盒先验:一种鲁棒的半监督分割框架

Chenshu Chen, Tangyou Liu, Wenming Tan, Shiliang Pu
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引用次数: 0

摘要

由于对大规模数据集进行密集标注的成本较高,人们提出了广泛的半监督语义分割方法。然而,现有方法的准确性、稳定性和灵活性还远远不能令人满意。在本文中,我们提出了一个有效且灵活的半监督语义分割框架,该框架使用一组小的完全标记图像和一组带有边界框标签的弱标记图像。在我们的框架中,我们设计了位置先验和类先验来引导标注网络准确地预测弱标记图像的伪掩码,这些伪掩码用于训练分割网络。我们还提出了一种混合双头训练方法,以减少标签噪声的干扰,同时使训练过程更加稳定。在PASCAL VOC 2012上的实验表明,我们的方法达到了最先进的性能,即使在很少的完全标记的图像上也能获得有竞争力的结果。此外,使用COCO数据集中额外的弱标记图像可以进一步提高性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mixed-dual-head Meets Box Priors: A Robust Framework for Semi-supervised Segmentation
As it is costly to densely annotate large scale datasets for supervised semantic segmentation, extensive semi-supervised methods have been proposed. However, the accuracy, stability and flexibility of existing methods are still far from satisfactory. In this paper, we propose an effective and flexible framework for semi-supervised semantic segmentation using a small set of fully labeled images and a set of weakly labeled images with bounding box labels. In our framework, position and class priors are designed to guide the annotation network to predict accurate pseudo masks for weakly labeled images, which are used to train the segmentation network. We also propose a mixed-dual-head training method to reduce the interference of label noise while enabling the training process more stable. Experiments on PASCAL VOC 2012 show that our method achieves state-of-the-art performance and can achieve competitive results even with very few fully labeled images. Furthermore, the performance can be further boosted with extra weakly labeled images from COCO dataset.
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