基于多层次对比单元的主动域自适应语义分割

Hao Zhang, Ruimao Zhang, Zhanglin Peng, Junle Wang, Yanqing Jing
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引用次数: 0

摘要

为了进一步降低半监督域自适应(SSDA)标注的成本,一种更有效的方法是使用主动学习(AL)对选定的子集进行特定属性标注。然而,领域自适应任务总是在两个相互作用的方面解决:领域转移和增强识别,这要求所选数据在模型下具有不确定性,在特征空间上具有多样性。与分类任务中的主动学习相反,在分割任务中选择包含上述属性的像素通常具有挑战性,导致像素选择策略的设计非常复杂。为了解决这一问题,我们提出了一种新的基于多级对比单元(ADA-MCU)的语义图像分割主动域自适应方案。引入一种简单的像素选择策略,然后构建多层次对比单元,以优化模型的领域适应和主动监督学习。实际上,mcu通过使用标记和未标记的像素,从图像内、跨图像和跨域级别构建。在每个层次上,我们定义了从中心到中心和像素到像素的对比损失,目的是共同对齐类别中心并减少决策边界附近的异常值。此外,我们还引入了一个类别相关矩阵来隐式描述类别之间的关系,用于调整mcu的损失权重。在标准基准测试上的大量实验结果表明,所提出的方法与最先进的SSDA方法相比具有竞争力的性能,标记像素减少了50%,并且在使用相同水平的标注成本时显著优于最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Active Domain Adaptation with Multi-level Contrastive Units for Semantic Segmentation
To further reduce the cost of semi-supervised domain adaptation (SSDA) labeling, a more effective way is to use active learning (AL) to annotate a selected subset with specific properties. However, domain adaptation tasks are always addressed in two interactive aspects: domain transfer and the enhancement of discrimination, which requires the selected data to be both uncertain under the model and diverse in feature space. Contrary to active learning in classification tasks, it is usually challenging to select pixels that contain both the above properties in segmentation tasks, leading to the complex design of pixel selection strategy. To address such an issue, we propose a novel Active Domain Adaptation scheme with Multi-level Contrastive Units (ADA-MCU) for semantic image segmentation. A simple pixel selection strategy followed with the construction of multi-level contrastive units is introduced to optimize the model for both domain adaptation and active supervised learning. In practice, MCUs are constructed from intra-image, cross-image, and cross-domain levels by using both labeled and unlabeled pixels. At each level, we define contrastive losses from center-to-center and pixel-to-pixel manners, with the aim of jointly aligning the category centers and reducing outliers near the decision boundaries. In addition, we also introduce a categories correlation matrix to implicitly describe the relationship between categories, which are used to adjust the weights of the losses for MCUs. Extensive experimental results on standard benchmarks show that the proposed method achieves competitive performance against state-of-the-art SSDA methods with 50% fewer labeled pixels and significantly outperforms state-of-the-art with a large margin by using the same level of annotation cost.
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