Source-free Domain Adaptation (SFDA) aims to adapt a pre-trained source model to the unlabeled target domain without accessing the well-labeled source data, which is a much more practical setting due to the data privacy, security, and transmission issues. To make up for the absence of source data, most existing methods introduced feature prototype based pseudo-labeling strategies to realize self-training model adaptation. However, feature prototypes are obtained by instance-level predictions based feature clustering, which is category-biased and tends to result in noisy labels since the visual domain gaps between source and target are usually different between categories. In addition, we found that a monocentric feature prototype may be ineffective to represent each category and introduce negative transfer, especially for those hard-transfer data. To address these issues, we propose a general class-Balanced Multicentric Dynamic prototype (BMD) strategy for the SFDA task. Specifically, for each target category, we first introduce a global inter-class balanced sampling strategy to aggregate potential representative target samples. Then, we design an intra-class multicentric clustering strategy to achieve more robust and representative prototypes generation. In contrast to existing strategies that update the pseudo label at a fixed training period, we further introduce a dynamic pseudo labeling strategy to incorporate network update information during model adaptation. Extensive experiments show that the proposed model-agnostic BMD strategy significantly improves representative SFDA methods to yield new state-of-the-art results. The code is available at https://github.com/ispc-lab/BMD.
翻译:无源域适应(SFDA)旨在将一个经过事先培训的源模型调整到未贴标签的目标域,而无需查阅标签良好的源数据,因为数据隐私、安全和传输问题,这是一个更实际得多的环境。为了弥补源数据缺乏的情况,大多数现有方法都采用了基于源数据原型的假标签战略,以实现自我培训模式的适应。然而,基于实例一级的预测的特性组群获得了特征原型,这种原型具有类别性,并往往导致在源和目标之间的视觉域间差异通常因类别而不同而产生吵闹的标签。此外,我们发现单中心特性原型可能无效,无法代表每个类别,并引入负转移,特别是那些硬转移数据。为解决这些问题,我们建议为SFDA任务推出一个基于类级的多中心动态原型(BD)战略。具体地说,我们首先为集成潜在有代表性的目标样板的标本引入全球级间平衡的取样战略。然后,我们设计一个内部多中心类组合组合战略,以达到更稳健和有代表性的原型/代号生成。在SFDA中,我们引入了一种动态的模型化战略。对比现有战略,我们引入了SFDA 将引入了一个动态的模型升级的模型升级的模型升级到SDMDMD。