IDPL: Intra-subdomain adaptation adversarial learning segmentation method based on Dynamic Pseudo Labels

Xuewei Li, Weilun Zhang, Jie Gao, Xuzhou Fu, Jian Yu
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引用次数: 1

Abstract

Unsupervised domain adaptation(UDA) has been applied to image semantic segmentation to solve the problem of domain offset. However, in some difficult categories with poor recognition accuracy, the segmentation effects are still not ideal. To this end, in this paper, Intra-subdomain adaptation adversarial learning segmentation method based on Dynamic Pseudo Labels(IDPL) is proposed. The whole process consists of 3 steps: Firstly, the instance-level pseudo label dynamic generation module is proposed, which fuses the class matching information in global classes and local instances, thus adaptively generating the optimal threshold for each class, obtaining high-quality pseudo labels. Secondly, the subdomain classifier module based on instance confidence is constructed, which can dynamically divide the target domain into easy and difficult subdomains according to the relative proportion of easy and difficult instances. Finally, the subdomain adversarial learning module based on self-attention is proposed. It uses multi-head self-attention to confront the easy and difficult subdomains at the class level with the help of generated high-quality pseudo labels, so as to focus on mining the features of difficult categories in the high-entropy region of target domain images, which promotes class-level conditional distribution alignment between the subdomains, improving the segmentation performance of difficult categories. For the difficult categories, the experimental results show that the performance of IDPL is significantly improved compared with other latest mainstream methods.
基于动态伪标签的子域内自适应对抗学习分割方法
将无监督域自适应技术应用于图像语义分割中,解决了域偏移问题。然而,在一些识别精度较差的难分类中,分割效果仍然不理想。为此,本文提出了一种基于动态伪标签(IDPL)的子域内自适应对抗学习分割方法。首先,提出了实例级伪标签动态生成模块,融合全局类和局部实例中的类匹配信息,自适应生成每个类的最优阈值,获得高质量的伪标签;其次,构建基于实例置信度的子域分类器模块,根据易、难实例的相对比例,将目标域动态划分为易、难子域;最后,提出了基于自注意的子域对抗学习模块。该方法利用多头自关注,借助生成的高质量伪标签,在类水平上面对易、难子域,从而在目标域图像的高熵区域集中挖掘难分类的特征,促进了子域之间的类水平条件分布对齐,提高了难分类的分割性能。对于困难类别,实验结果表明,与其他最新主流方法相比,IDPL的性能有了显著提高。
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